The equations of the intrinsic viscosity, the specific viscosity, and the multi-concentration regression models.
\r\n\tFurther development of geophysical methods in the direction of constructing more and more adequate models of media and phenomena necessarily leads to more and more complex problems of mathematical geophysics, for which not only inverse, but also direct problems become significantly incorrect. In this regard, it is necessary to develop a new concept of regularization for simultaneously solving a system of heterogeneous operator equations.
\r\n\r\n\tCurrently, the study of processes associated not only with geophysics and astrophysics but also with biology and medicine requires even more complication of interpretation models from non-linear and heterogeneous to hierarchical. This book will be devoted to the creation of new mathematical theories for solving ill-posed problems for complicated models.
",isbn:null,printIsbn:"979-953-307-X-X",pdfIsbn:null,doi:null,price:0,priceEur:0,priceUsd:0,slug:null,numberOfPages:0,isOpenForSubmission:!1,hash:"d93195bb64405dd9e917801649f991b3",bookSignature:"Prof. Olga Alexandrovna Hachay",publishedDate:null,coverURL:"https://cdn.intechopen.com/books/images_new/8253.jpg",keywords:"Ill-Posed, Inverse Problems, Geophysics, Seismic, Electromagnetic, Thermal, Magnetic, Medicine, \r\nMathematical, Algorithms, Hierarchical, Nonlinear, Historical Description, Regularization",numberOfDownloads:null,numberOfWosCitations:0,numberOfCrossrefCitations:0,numberOfDimensionsCitations:0,numberOfTotalCitations:0,isAvailableForWebshopOrdering:!0,dateEndFirstStepPublish:"October 7th 2019",dateEndSecondStepPublish:"March 27th 2020",dateEndThirdStepPublish:"May 26th 2020",dateEndFourthStepPublish:"August 14th 2020",dateEndFifthStepPublish:"October 13th 2020",remainingDaysToSecondStep:"10 months",secondStepPassed:!0,currentStepOfPublishingProcess:5,editedByType:null,kuFlag:!1,biosketch:null,coeditorOneBiosketch:null,coeditorTwoBiosketch:null,coeditorThreeBiosketch:null,coeditorFourBiosketch:null,coeditorFiveBiosketch:null,editors:[{id:"150801",title:"Prof.",name:"Olga",middleName:"Alexandrovna",surname:"Hachay",slug:"olga-hachay",fullName:"Olga Hachay",profilePictureURL:"https://mts.intechopen.com/storage/users/150801/images/system/150801.jpg",biography:"Dr. Olga A. Hachay graduated with a degree in Astrophysics from Ural State University in 1969. She obtained her PhD from the Pushkov Institute of Terrestrial Magnetism, Ionosphere and Radiowave Propagation of the Russian Academy of Sciences (IZMIRAN) in 1979 with her thesis “The inverse problem for electromagnetic research of one-dimensional medium.”\nSince 1969, she has been a scientific member of the Institute of Geophysics Ural Branch of Russian Academy of Sciences (UB RAS), Ekaterinburg, Russia. From 1995 to 2004, she served as chief of the group of seismic and electromagnetic research. Her research interests include developing new methods for searching the structure and the state of the Earth’s upper crust, as well as elaborating a new theory of interpretation of electromagnetic and seismic fields. From 2002, she has been the main scientific researcher of the Institute of geophysics UB RAS. Since 2008, she has been a lead scientific researcher for UB RAS in the laboratory of borehole geophysics. Dr. Hachay is a member of various organizations and societies, including the American Mathematical Society, Mathematical Association of America, International Association of Geomechanics, and the European Geosciences Union, among others. \nDr. Hachay is fluent in Russian, English and German language",institutionString:"Ural Branch of the Russian Academy of Sciences",position:null,outsideEditionCount:0,totalCites:0,totalAuthoredChapters:"4",totalChapterViews:"0",totalEditedBooks:"0",institution:{name:"Ural Branch of the Russian Academy of Sciences",institutionURL:null,country:{name:"Russia"}}}],coeditorOne:null,coeditorTwo:null,coeditorThree:null,coeditorFour:null,coeditorFive:null,topics:[{id:"15",title:"Mathematics",slug:"mathematics"}],chapters:null,productType:{id:"1",title:"Edited Volume",chapterContentType:"chapter",authoredCaption:"Edited by"},personalPublishingAssistant:{id:"247865",firstName:"Jasna",lastName:"Bozic",middleName:null,title:"Ms.",imageUrl:"https://mts.intechopen.com/storage/users/247865/images/7225_n.jpg",email:"jasna.b@intechopen.com",biography:"As an Author Service Manager, my responsibilities include monitoring and facilitating all publishing activities for authors and editors. From chapter submission and review to approval and revision, copyediting and design, until final publication, I work closely with authors and editors to ensure a simple and easy publishing process. I maintain constant and effective communication with authors, editors and reviewers, which allows for a level of personal support that enables contributors to fully commit and concentrate on the chapters they are writing, editing, or reviewing. I assist authors in the preparation of their full chapter submissions and track important deadlines and ensure they are met. I help to coordinate internal processes such as linguistic review, and monitor the technical aspects of the process. As an ASM I am also involved in the acquisition of editors. Whether that be identifying an exceptional author and proposing an editorship collaboration, or contacting researchers who would like the opportunity to work with IntechOpen, I establish and help manage author and editor acquisition and contact."}},relatedBooks:[{type:"book",id:"1591",title:"Infrared Spectroscopy",subtitle:"Materials Science, Engineering and Technology",isOpenForSubmission:!1,hash:"99b4b7b71a8caeb693ed762b40b017f4",slug:"infrared-spectroscopy-materials-science-engineering-and-technology",bookSignature:"Theophile Theophanides",coverURL:"https://cdn.intechopen.com/books/images_new/1591.jpg",editedByType:"Edited by",editors:[{id:"37194",title:"Dr.",name:"Theophanides",surname:"Theophile",slug:"theophanides-theophile",fullName:"Theophanides Theophile"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"3092",title:"Anopheles mosquitoes",subtitle:"New insights into malaria vectors",isOpenForSubmission:!1,hash:"c9e622485316d5e296288bf24d2b0d64",slug:"anopheles-mosquitoes-new-insights-into-malaria-vectors",bookSignature:"Sylvie Manguin",coverURL:"https://cdn.intechopen.com/books/images_new/3092.jpg",editedByType:"Edited by",editors:[{id:"50017",title:"Prof.",name:"Sylvie",surname:"Manguin",slug:"sylvie-manguin",fullName:"Sylvie Manguin"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"3161",title:"Frontiers in Guided Wave Optics and Optoelectronics",subtitle:null,isOpenForSubmission:!1,hash:"deb44e9c99f82bbce1083abea743146c",slug:"frontiers-in-guided-wave-optics-and-optoelectronics",bookSignature:"Bishnu Pal",coverURL:"https://cdn.intechopen.com/books/images_new/3161.jpg",editedByType:"Edited by",editors:[{id:"4782",title:"Prof.",name:"Bishnu",surname:"Pal",slug:"bishnu-pal",fullName:"Bishnu Pal"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"72",title:"Ionic Liquids",subtitle:"Theory, Properties, New Approaches",isOpenForSubmission:!1,hash:"d94ffa3cfa10505e3b1d676d46fcd3f5",slug:"ionic-liquids-theory-properties-new-approaches",bookSignature:"Alexander Kokorin",coverURL:"https://cdn.intechopen.com/books/images_new/72.jpg",editedByType:"Edited by",editors:[{id:"19816",title:"Prof.",name:"Alexander",surname:"Kokorin",slug:"alexander-kokorin",fullName:"Alexander Kokorin"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"1373",title:"Ionic Liquids",subtitle:"Applications and Perspectives",isOpenForSubmission:!1,hash:"5e9ae5ae9167cde4b344e499a792c41c",slug:"ionic-liquids-applications-and-perspectives",bookSignature:"Alexander Kokorin",coverURL:"https://cdn.intechopen.com/books/images_new/1373.jpg",editedByType:"Edited by",editors:[{id:"19816",title:"Prof.",name:"Alexander",surname:"Kokorin",slug:"alexander-kokorin",fullName:"Alexander Kokorin"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"57",title:"Physics and Applications of Graphene",subtitle:"Experiments",isOpenForSubmission:!1,hash:"0e6622a71cf4f02f45bfdd5691e1189a",slug:"physics-and-applications-of-graphene-experiments",bookSignature:"Sergey Mikhailov",coverURL:"https://cdn.intechopen.com/books/images_new/57.jpg",editedByType:"Edited by",editors:[{id:"16042",title:"Dr.",name:"Sergey",surname:"Mikhailov",slug:"sergey-mikhailov",fullName:"Sergey Mikhailov"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"371",title:"Abiotic Stress in Plants",subtitle:"Mechanisms and Adaptations",isOpenForSubmission:!1,hash:"588466f487e307619849d72389178a74",slug:"abiotic-stress-in-plants-mechanisms-and-adaptations",bookSignature:"Arun Shanker and B. Venkateswarlu",coverURL:"https://cdn.intechopen.com/books/images_new/371.jpg",editedByType:"Edited by",editors:[{id:"58592",title:"Dr.",name:"Arun",surname:"Shanker",slug:"arun-shanker",fullName:"Arun Shanker"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"878",title:"Phytochemicals",subtitle:"A Global Perspective of Their Role in Nutrition and Health",isOpenForSubmission:!1,hash:"ec77671f63975ef2d16192897deb6835",slug:"phytochemicals-a-global-perspective-of-their-role-in-nutrition-and-health",bookSignature:"Venketeshwer Rao",coverURL:"https://cdn.intechopen.com/books/images_new/878.jpg",editedByType:"Edited by",editors:[{id:"82663",title:"Dr.",name:"Venketeshwer",surname:"Rao",slug:"venketeshwer-rao",fullName:"Venketeshwer Rao"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"4816",title:"Face Recognition",subtitle:null,isOpenForSubmission:!1,hash:"146063b5359146b7718ea86bad47c8eb",slug:"face_recognition",bookSignature:"Kresimir Delac and Mislav Grgic",coverURL:"https://cdn.intechopen.com/books/images_new/4816.jpg",editedByType:"Edited by",editors:[{id:"528",title:"Dr.",name:"Kresimir",surname:"Delac",slug:"kresimir-delac",fullName:"Kresimir Delac"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"3621",title:"Silver Nanoparticles",subtitle:null,isOpenForSubmission:!1,hash:null,slug:"silver-nanoparticles",bookSignature:"David Pozo Perez",coverURL:"https://cdn.intechopen.com/books/images_new/3621.jpg",editedByType:"Edited by",editors:[{id:"6667",title:"Dr.",name:"David",surname:"Pozo",slug:"david-pozo",fullName:"David Pozo"}],productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}}]},chapter:{item:{type:"chapter",id:"70158",title:"The Viscosity Behaviour of PEGylated Locust Bean Gum/Rosin Ester Polymeric Nanoparticles",doi:"10.5772/intechopen.90248",slug:"the-viscosity-behaviour-of-pegylated-locust-bean-gum-rosin-ester-polymeric-nanoparticles",body:'\nColloidal nanoparticles (CNPs) have attracted attention in industrial applications (food, pharmaceuticals, cosmetics, ink, rubber, and water treatment) due to their biological, mechanical, and thermal properties and stability in solution. Their superior properties depend on the high surface area, small size, and uniform morphologies [1, 2, 3]. CNPs are prepared to use different methods such as sol–gel [4], photochemical [5], electrochemical [6], laser ablation [7], ionizing irradiations [8], and ultrasonic irradiation [9].
\nThe ultrasonic irradiation synthesis of different morphologies of nanomaterials consisted of metal/metal oxides, and polymeric materials have received considerable attention in the nanotechnology applications. The ultrasonic irradiation (20 kHz to 10 MHz) method has been employed in the preparation of the high purity, the uniform shape, and the nanosized distribution of nanomaterials. This method causes the formation of the acoustic cavitations which consist of the bubbles [10]. The growth and collapse of bubbles are related to the transfer of energy at high pressures and temperatures due to the highly reactive free radicals such as hydrogen radicals (H•) and hydroxyl radicals (OH•). Bubbles generate three zones, such as a hot spot (5000°C, 500 atm), a gas–liquid interface (300°C, 50 atm), and a bulk solution (25°C, 1 atm) [11].
\nIn recent research, different structures of nanoparticles such as TiO2 [12], ZnO [13], starch [14], alumina/carbon core-shell [15], lipid-polymer hybrid [16], and biopolymeric [17, 18] nanoparticles have been synthesized with the ultrasonic irradiation method. Generally, biopolymeric nanoparticles have used in the field of foods encapsulation and drug delivery studies due to the biodegradability, biocompatibility, and low toxicity properties. Alginate [19], chitosan [20], carboxymethyl cellulose/gelatin [21], Senegal gum [22], guar gum [23], xanthan gum [24], Senna tora gum [25], and locust bean gum (LBG) [26] are natural biopolymers employed in industrial processes [24]. Locust bean gum is a neutral polysaccharide and has a mannose backbone with single side chain galactose units [25, 26, 27].
\nWhen the studies in the current literature are examined, it has been found that there are very few studies on LGB based on nanoparticles [28, 29, 30]. It was found that no studies were performed on the locust nanostructures containing rosin gum and derivatives. In this work, the ultrasonic irradiation method was used for the preparation of novel PEGylated locust bean gum (PEG-LBG)/rosin glycerol ester (RE) polymeric nanoparticles (PNPs) at room temperature. The present research work was aimed at the colloidal stability, the viscosity behaviour, and miscibility of binary polymer blends of PEG and LBG PNPs due to the intrinsic viscosity. The intrinsic viscosity of the polymer is a significant molecular characteristic, depending on the size of the polymer chain, molecular weight, and radius of rotation of the polymer in dilute solution. The voluminosity (VE), shape factor (υ), the intrinsic viscosity [η], and Krigbaum and Wall miscibility parameter (Δb) of polymeric nanoparticles were calculated from different models such as Huggins, Kraemer, Tanglertpaibul-Rao, and Higiro [17]. The values of intrinsic viscosities were used to determine the rheological behaviour of the PEG-LBG/RE PNPs at different conditions (pH, sonication time, and salt). The homogeneous distributions of PEG with LGB had an influence on the blends ratio of PEG/LBG (1:1, 1:2), sonication time (10–70 min.), temperature (25–35°C), and salts (NaOH, KOH, CTAB). With the addition of NaOH salt, PEG-LBG/RE PNPs based on ionotropic gelation technique were made into a more homogeneous solution. The PEG-LBG/RE PNPs were characterized to examine surface morphologies using a Fourier-transform infrared spectroscopy (FTIR) and scanning transmission electron microscopy (STEM). The aim of this study was to provide an investigation of rosin ester-based nanoparticle distributions in LGB and understand the role of polymer–particle interactions with respect to nanoparticle concentration as well to use the candidate nanocarrier for biomedical applications.
\nLocust bean gum from Ceratonia siliqua seeds (M.W. of approx. 310 kDa) was purchased from Sigma Aldrich. Polyethylene glycol (PEG 400) was obtained from Fluka (Switzerland). Ethyl acetate (anhydrous, 99.8%) was purchased from Sigma Aldrich. Dimethyl sulfoxide (DMSO), potassium hydroxide (KOH), sodium hydroxide (NaOH), and cetyltrimethylammonium bromide (CTAB) were purchased from Merck. Rosin glycerol ester was purchased from Pina Kimya (CAS: 8050-26-8, EC: 232–479-9, Turkey). All other reagents and chemicals were of analytical grade.
\nPEG-LBG/RE PNPs were synthesized using the ultrasonic irradiation method (Ultrasonics Vibra-Cell, probe type, amplitude %30, a frequency of 20 kHz) with different ratios of blends (PEG-LBG: 1:1, 1:2). In the procedure, two phases were prepared such as the dispersion phase and the continuous phase.
\nThe continuous phase: 125 mg LBG was dissolved in 50 ml of distilled water (60°C for 20 min) and then added to 125 mg of PEG400 polymer solution at room temperature.
\nThe dispersion phase: 0.01 g RE was dissolved in 0.5 ml DMSO and then 7 ml ethyl acetate was added to the solution.
\n7.5 ml of continuous phase and the dispersed phase was sonicated at room temperature. 42.5 ml of continuous phase was then added slowly to the blends, and the sonication procedure was continued for 30 minutes. The final solution was evaporated at room temperature for 14 hours until ethyl acetate completely evaporated in the solution. Polymer blends were also performed for different composition ratios (PEG-LBG) such as 1:1 and 1:2.
\nThe dynamics viscosities of LBG, PEG-LBG, and PEG-LBG/RE were determined by a programmable AND viscometer (SV-10, Sine-wave Vibro Viscometer, A \n
The changes in viscosity values of LBG, PEG-LBG, and PEG-LBG/RE PNPs were investigated in a dilute solution (50 mL) at different ratios of polymer blends (PEG-LBG: 1:1 and 1:2), temperatures (25 and 35°C), and sonication times (10–70 min) in the presence of NaOH, KOH, and CTAB salts. The specific viscosities (\n
\n | \n | Formula | \nRef: | \n
---|---|---|---|
Specific viscosity | \n\n\n | \n(1) | \n[31] | \n
Intrinsic viscosity | \n\n\n | \n(2) | \n[31] | \n
Multi-concentration regression models: | \n|||
Huggins | \n\n\n | \n(3) | \n[32] | \n
Kraemer | \n\n\n | \n(4) | \n[33] | \n
Tanglertpaibul-Rao | \n\n\n | \n(5) | \n[34] | \n
Higiro | \n\n\n | \n(6) | \n[28] | \n
The equations of the intrinsic viscosity, the specific viscosity, and the multi-concentration regression models.
In this study, the voluminosity (VE), shape factor (υ), and Krigbaum and Wall parameter (Δb) were calculated using the following Eqs. 7–10, respectively. The polymer blends are miscible if \n
The intrinsic viscosity of [η] of PEG, LBG, PEG-LBG (1:1), and PEG-LBG/RE 1:1 nanoparticles was calculated using the multi-concentration regression models (Huggins, Kraemer, Tanglertpaibul-Rao, and Higiro models) at room temperatures. The correlation coefficient (R2), the intrinsic viscosity, and parameters of Huggins, Kraemer, Tanglertpaibul-Rao, and Higiro models were given comparatively in Table 2 (Figures 1–4). In this study, we focused on the effect of nanoparticles on the morphology of immiscible polymer blends. We found that PEG-LBG/RE PNPs (1:2) were immiscible due to the mixing ratio of PEG-LBG (Table 3).
\n\n | \n | Huggins | \nKraemer | \nTanglertpaibul-Rao | \nHigiro | \n||||||
---|---|---|---|---|---|---|---|---|---|---|---|
\n | pH | \n[η] (ml/g) | \nk1 × 10−3 | \nR2 | \n[η] (ml/g) | \nk2 | \nR2 | \n[η] (ml/g) | \nR2 | \n[η] (ml/g) | \nR2 | \n
A | \n\n | 4.70 | \n0.213 | \n0.99 | \n6.73 | \n1.129 | \n0.89 | \n9.11 | \n0.96 | \n10.87 | \n0.98 | \n
B | \n\n | 5.18 | \n0.193 | \n0.99 | \n56.75 | \n−0.075 | \n0.87 | \n41.32 | \n0.98 | \n12.68 | \n0.99 | \n
C | \n\n | 2.25 | \n0.445 | \n0.96 | \n71.95 | \n−0.067 | \n0.86 | \n41.57 | \n1.00 | \n12.65 | \n0.99 | \n
D | \n\n | 0.67 | \n1.493 | \n0.99 | \n55.78 | \n−0.073 | \n0.87 | \n43.94 | \n1.00 | \n10.97 | \n0.99 | \n
The intrinsic viscosity (ml/g) values of PEG-LBG blends and PEG-LBG/RE nanoparticles at room temperature for different concentrations.
Samples: (A) PEG, (B) LBG, (C) PEG-LBG/ (1:1), (D) PEG-LBG/RE (1:2), and (E) PEG-LBG/RE (1:1).
\n | VE (ml/g) | \n\n\n | \n\n | Δb (mL/g)2 | \nMiscibility | \n|
---|---|---|---|---|---|---|
PEG-LBG (1:1) | \n38 | \n\n\n | \nspherical | \n1.59 | \nMiscible | \n|
PEG-LBG/RE PNPs (1:2) | \n42 | \n\n\n | \n\n | −0.64 | \nİmmiscible | \n|
PEG-LBG/RE PNPs (1:1) | \n35 | \n2.5 \n | \nspherical | \n1.56 | \nMiscible | \n
Voluminosity and shape factor of LBG, PEG-LBG, and PEG-LBG/RE PNPs.
The Huggins plots of PEG, LBG, PEG-LBG (1:1), and PEG-LBG/RE PNPs.
The Kraemer plots of PEG, LBG, PEG-LBG (1:1), and PEG-LBG/RE PNPs.
The Tanglertpaibul-Rao’s plots of PEG, LBG, PEG-LBG (1:1), and PEG-LBG/RE PNPs.
The Higiro plots of PEG, LBG, PEG-LBG (1:1), and PEG-LBG/RE PNPs.
The Huggins, Kraemer, Tanglertpaibul-Rao, and Higiro plots of the intrinsic viscosities were calculated at different blend ratios, and the results showed the critical role on relation between the intrinsic viscosities and the blend ratios. The Tanglertpaibul-Rao model and Huggins model (R2 = 0.96–1.00) were the best models to understand the intrinsic viscosity of PEG, LBG, PEG-LBG, and PEG-LBG/RE PNPs. Behrouzian et al. [32] reported that the Tanglertpaibul and Rao model was the best model for the intrinsic viscosity determination of cress seed gum solutions. Razavi et al. [37] reported that the best model was Tanglertpaibul and Rao model for wild sage seed gum. In this study, the intrinsic viscosity of PEG-LBG/RE PNPs in the presence of different salts (NaOH, KOH, and CTAB) was investigated (Csalt, 0.1 M; Vsalt, 2 mL; Vsolution; 50 mL) at 25°C. The effect of NaOH, KOH, and CTAB salts on the values of intrinsic viscosity of PEG-LBG/RE PNPs (1:1) was presented in Figure 5.
\nPlots of the intrinsic viscosity versus C of PEG-LBG/RE PNPs in the presence of salts (KOH, NaOH, and CTAB).
The pH values of the solutions (LBG, PEG-LBG, and PEG-LBG/RE PNPs) at initial pH in KOH, NaOH, and CTAB salt additions were determined: pHinitial, 5.7; pHinitial, 5.55; and pHinitial, 5.32, respectively. In the presence of salt, the values of the intrinsic viscosity for the mixture were observed to change in two different salts such as KOH (pHfinal: 5.93) and NaOH (pHfinal: 5.72). The [η] values for PEG-LBG/RE PNPs (1:1) did not exhibit distinctive changes in the presence of CTAB (pHfinal: 3.87). Jiang et al. [38] reported that the interactions between blends were dependent on the ionic strength at low salt concentration which was related to the increase of salt concentration. Consequently the addition of NaOH and KOH showed the electrostatic repulsion between charges along the backbone of the polymer blends.
\nThe intrinsic viscosity decreased when the temperature increased, and the relation of the experimental results of PEG-LBG/RE PNPs with the temperature was shown in Figure 6.
\nPlots of [η] of PEG-LBG/RE PNPs at different temperatures (25 and 35°C).
However, when PEG-LBG/RE PNPs were sonicated, the intrinsic viscosity decreased for 30 minutes but remained constant after a period of time. These results had proven that the sonication time changed the value of viscosity and was effective on the blends (30% amp., 25°C) (Figure 7). The viscosity of Cu-ethylene glycol (EG) nanofluids was proven to decrease with the sonication time [39]. In this study, we found a similar situation, and demonstrated that sonication time changes the viscosity, which has a role on the formation of nanoparticles.
\nPlots of [η] of PEG-LBG/RE PNPs at different sonication times (30% amp., 25°C).
In this study, we investigated the relationship between the intrinsic viscosity and the surface morphology, particle size, and shape. The shape factor was calculated using the approach given as follows: (a) n < 2.5 indicates spherical shape, and (b) n > 2.5 indicates ellipsoidal particles [40].
\nIn this study, we predicted the size and shape factor of PEG-LBG (1:1), PEG-LBG/RE PNPs (1:1), and PEG-LBG/RE PNPs (1:2) using the values of the intrinsic viscosity, associated with the shape factor, which were used to determine the change in the structure configuration. We calculated the shape and the Krigbaum and Wall (Δb) parameters of PEG-LBG/RE PNPs (1:1) using the intrinsic viscosity to determine the changes in the blends. We found that PEG-LBG/RE PNPs (1:1) had a spherical-like configuration, and the amounts of PEG had a role on the miscibility due to the interactions between the functional groups in the blends.
\nThe FTIR spectra of pure LBG, pure RE, and PEG-LBG/RE PNPs were shown in Figure 8.
\nThe FTIR spectrum of pure LBG, pure RE, and PEG-LBG/RE PNPs.
The FTIR spectrum of pure LBG showed a broad absorption peak at 3250 cm−1 (stretching of -OH group), 2952 cm−1 (stretching of –CH), 1748 cm−1 (stretching of C=O), and 1000–1100 cm−1 (stretching of C-O-H). Upadhyay et al. [41] and Chakravorty et al. [42] found the FTIR spectrum data similar. The FTIR spectrum of pure RE showed a peak at 3330 cm−1 (stretching of -OH group), 1730 cm−1 (stretching of C=O), and 1120 cm−1 (stretching of C-O-H). As we have seen from the FTIR results, we have demonstrated that the apparent OH peak of LBG disappeared and that the rosin glycerol ester is coated with surrounding PEGylated LBG.
\nAccording to the STEM image of PEG-LBG/RE PNPs (160.000x and 300.000x), we can see that the interior structure of the polymeric nanoparticle is LBG with the size lower than 50 nm. We are able to tell that these particles are small agglomerates of it (Figure 9).
\nSTEM image of PEG-LBG/RE PNPs (160.000x and 300.000x).
We prepared the novel PEG-LBG/RE PNPs with an average particle size of 100 nm using the ultrasonic irradiation. We dispersed the amphiphilic RE coated with PEG-LBG blends in nanosize and spherical structure. We focused on the miscibility of the blends, and shapes of the polymeric nanoparticles were calculated using the values of the intrinsic viscosity in different conditions. We estimate that PEG-LBG/RE PNPs can be used to increase the therapeutic efficacy and biocompatibility of the nanodrug in pharmaceutical and biomedical studies.
\nThe authors acknowledge the STEM and FTIR analysis support from Arel POTKAM (Istanbul, Turkey), Zeynep Akça, Demet SEZGİN MANSUROGLU, and Deniz ISMIK.
\nPotassium (K) is the 7th most abundant element in the Earth’s crust. Recent increases in consumption of K fertilizers is leading to fast depletion of K reserves [1]. Potassium is a macro-nutrient that plays instrumental roles in the nutrition, physiology, growth and development of crop plants. It is essential for many cellular and tissue processes, including the regulation of stomatal aperture, photosynthesis, respiration, utilization of nitrogen (N) and protein synthesis, and transport of minerals and metabolites [2, 3]. Potassium contributes to osmotic pressure or turgor regulation, required in plants for cell expansion [2, 4] and osmotic adjustment to salinity. Potassium plays a role in the activation of over 60 enzymes, the balance of the microbial population in soil and is crucial for root growth and development [5, 6]. The major role of K in osmotic regulation and cell expansion implies K is instrumental in the growth and establishment of crop plants. Potassium also plays key roles in the physiology, nutrition and health of animals and humans, including the control of non-communicable diseases such as hypertension and other cardiovascular diseases [7, 8]. Humans and animals derive their nutritional K supply largely from crop plants, making K nutrition of crop plants critical to food security and human health, especially in reducing the global burden of non-communicable diseases [7, 8].
The K nutrition of crop plants derives from the dynamic balance between the labile and non-labile K, which are respectively responsible for the immediate or short- and long-term supply of K, in the soil or growth media [5, 6]. Labile K comprises the exchangeable and soil solution K while the non-labile K is made up of non-exchangeable and mineral K. Potassium limitation is a major problem of most soils and, even in fertile soils, root zone K supplies can be depleted rapidly early in the growing season or in few years of cultivation to create conditions of scarcity [5, 9]. The instrumental role of K in several cellular and tissue level processes, including efficient use of other macro-nutrients such as N, makes K deprivation critical to the growth and development of crop plants and food security.
Apart from carbon (C) and oxygen (O), the efficiency of plant uptake of water and most nutrients depends on the root system architecture (RSA, the arrangement and magnitude of roots in the soil) and physiology. Crop plants have evolved the ability to modify their RSA in response to resource scarcity [10], such as nutrients in the soil [9, 11]. This plasticity of RSA in response to the dynamics of soil resource supply has been exploited by plant breeders to enhance root traits to ultimately improve crop yield in variable environments [12, 13]. With nutrients, such as K, an understanding of the RSA-based response is particularly important for breeding and adapting crop plants to both natural and managed systems with low external input and highly unstable balance between depletion and supply over time and space. This is because the configuration of plant roots in the soil considerably influences the spatiotemporal distribution and exploration for resources in each soil layer or volume, and the effectiveness of plant acquisition of soil resources in response to concentration gradients [14, 15]. For example, it is known that RSA characterized by steep growth angles are vital for the uptake of nitrate and water which tend to be mobile in soils [16, 17] while shallow growth angles are more valuable for the uptake of P and K which tend to become immobile when fixed [18, 19].
Plant roots can respond metabolically [20], physiologically [21], and morphologically [9, 22] to nutrient deficiencies. As a result, crop plants would be expected to engage in the modification of their RSA to cope with or respond to conditions of low or deficient available K. However, the plasticity of RSA is highly random and not deterministic as it can give different results depending on the interaction of a given root phenotype with the prevailing environmental conditions, plant fitness and/or underlying crop management practices [10, 13]. For example, local availability of K elicits local root growth and branching to K rich patches, although these adaptations may be moderate compared to root responses to local N or P [23, 24]. Under K limiting conditions, root elongation and the count of lateral roots are inhibited [9, 25, 26], but the magnitude of suppression varies among crop genotypes and root types [9, 27]. In Arabidopsis, for example, it has been reported that some accessions respond to low K supply by investing in the elongation of main roots to the detriment of lateral roots while the reverse is true for other accessions [9]. As a result, there is a need for cumulative evidence from several studies under different environmental conditions and with different crop plants to understand the most probable response of RSA of crop plants to K starvation.
While the magnitude of the morphological modifications of root traits remains to be quantified, studies involving root morphological responses to K starvation are not only a few compared to those involving N and P [28], but also patchy or sketchy and riddled with conflicting results. A pooled synthesis of the evidence from individual studies is required to show the most probable modifications and permit reasonable and reliable generalizations on the effect of K starvation on RSA of crop plants. Though a narrative review on the effect of K nutrition on root growth and development [28] exists, it has some of the limitations of narrative reviews that are addressed by meta-analysis [29, 30]. A key limitation is that the narrative review by [28] did not quantify the modifications in given root traits as a result of K starvation. The present study, therefore, used meta-analysis to (i) provide a pooled synthesis of the effect of K on RSA; (ii) quantify the reduction or otherwise in given RSA traits as a result of K starvation and (iii) assess how the effect of K on RSA traits is moderated by factors such as crop species and type of soil.
We searched journal articles and grey literature that reported root trait responses to K application using Scopus (Elsevier B.V), Google Scholar and Google (Google Inc., Mountain View, CA, USA). Title searches included combinations of the terms: potassium OR K+ OR KO2, “potassium superoxide” OR “potassium fertiliz*” OR potash AND “root growth” OR “root system architecture” OR “root morphology” OR “root hair” OR root*. In Google, we searched for ‘effect of potassium on plant roots’ and considered the first 200 hits. One investigator performed the search and two additional investigators explored the search results to decide on included studies. The two investigators had to agree based on predefined study inclusion criteria. The two investigators also had to agree on the extracted data from the included studies. Any discrepancies on an included study or data extracted from studies were resolved by the third investigator.
The predefined study inclusion criteria were: (i) the study had to report at least one root trait measured under both low or no K treatment (experimental treatment) and high or replete K treatment (control); (ii) the root traits should be reported on the same scale for both the experimental and the control treatments; (iii) the environmental conditions for the experimental and control groups, including plant species, and soil properties of each experiment were the same, and experiments were performed at the same temporal and spatial scales in the control and treatment groups; (iv) an included study must report means (X) for the measured trait(s) and the reported X, sample size (n) and a measure of dispersion (standard error [SE], standard deviation [SD], or 95% confidence interval [CI]) should be present as numerical or graphical data, or it should be possible to estimate from the reported data. In studies where SEs were provided, SDs were computed as the product of the SE and the square-root of n. However, where SD or SE was not available, SD was reassigned as one-tenth of the X and the effect of this assumption on the results assessed via sensitivity analyses [29, 30]. To avoid multiple counting, the reported data must originate from primary research, and should not have been already included in another paper. Whenever it was available, we also collected data on three non-root traits, namely total biomass, shoot biomass and yield.
Complex data structures or non-independent observations were reported in some of the included studies. In such cases, a study reported root trait data from a plant using the same scale but at a series of distinct time-points. Thus, the same plant provided data for different time-points. Similarly, some studies also included several experimental treatment groups (increasing rate of K fertilization) and a single control group. For each of these complex data structures, the X, SD and n were respectively combined into single metrics because treating the data for the different time-points or subgroups as though they were independent would lead to incorrect estimates of the variance for the summary effect [31]. The n across subgroups or time-points was summed to get a combined n (i.e.: n1 = n11 + n12) and the combined mean was computed as the weighted mean, by sample size, across groups (Eq. (1)). Subsequently, the combined standard deviation was computed as shown in Eq. 2 [31].
Where
Most independent studies included multiple measures and therefore yielded multiple effect sizes. For example, a study could report on root traits such as biomass, length, diameter and branching density which were obtained on the same plants, each of which provided an estimate of the effect of K fertilizer application. Here, the data obtained from the included studies were subjected to two types of meta-analyses: a meta-analysis of aggregated outcomes of all these traits measured from same plants per study and a meta-analysis of the individual or disaggregated outcomes. We were mindful of the fact that often, a meta-analysis of aggregated outcomes is the recommended option due to the tendency of studies reporting more outcomes to be weighted heavier and biasing the summary estimate [32]. However, this option could lead to publication bias and also provides limited control over the data within the context of the heterogeneity in the original studies. For example, heterogeneity due to subgroups within studies or variable categorizations is difficult to deal with in meta-analysis of aggregated outcomes. We, therefore, decided to employ the two approaches, albeit for different purposes, in this study. Accordingly, we firstly performed a meta-analysis including the multiple effect sizes from the same sample in individual studies in the meta-analysis and utilized this disaggregated dataset for moderator or subgroup analyses. Subsequently, we used the Borenstein, Hedges, Higgins, and Rothstein approach (BHHR; [31]) to aggregate dependent effect sizes (i.e. multiple root traits obtained from the same sample) to obtain one effect size per an independent study in each analysis. The BHHR method is the univariate method which is least biased and most precise in large simulation studies [32]. The aggregations were done using the MAd package [33] implemented in the R Project for Statistical Computing [34] and which averages all within-study effect sizes and variances, considering the correlations among the within-study outcome measures consistent with the BHHR procedures. Due to the non-availability of between-measure correlations within each of the studies, we assumed the default correlation for between within-study effect sizes of r = 0.5. Here, we conducted a meta-analysis for all the extracted traits. Subsequently, we conducted three independent meta-analyses, one each for root biomass, root length, and the number of roots. These root traits were the commonly measured root traits in the included studies.
We quantified the effects of K supply on root traits by calculating the response ratio (R), which is the ratio of the means of the experimental and control groups. The R was our preferred metric of effect size because we were interested in comparing the magnitudes of two means from the experimental and control treatments and we could back-transform it (i.e., R = elnR) for ease in interpretation [30]. Given that ratios are said to generally have poor statistical properties; the R was subsequently log-transformed by Eq. 3 to obtain more desirable properties [35, 36].
where
where n1 and n2 are the sample size of the experimental group and the control group, respectively, and SD1 and SD2 are the SDs of the experimental group and the control group, respectively [36]. A random-effects model of the meta-analysis was used to determine the grand mean and explore the continuous factors that may explain the response of root traits to K fertilizer application. The restricted maximum likelihood method (REML) was used to estimate the between-study variance. The mean effect size was considered significantly different from zero if its confidence interval did not include zero [35]. We estimated a summary effect and heterogeneity of the summary effect and when heterogeneity between studies was evident, a moderator analysis was performed via meta-regression to attempt an explanation of the heterogeneity.
Several explanatory variables (moderators), including soil factors, plant factors, and fertilizer and management practices, may affect the magnitude of the response of root traits to K fertilization. Study characteristics such as crop species (several), the agronomic purpose of crops (cereals, vegetables, fruits, industrial crops, etc.), texture of soil used for the experiment (several), growth media used (several), type of K used in fertilization (e.g.; muriate of potash, sulphate of potash, etc.), location of the experiment (field or greenhouse), among others, were collected from the primary studies. These moderators were extracted from primary studies when available; otherwise, it was marked as ‘not provided’. The influence of any of these moderators on the effect size was assessed through analyses of heterogeneity [37] and was performed only when there were at least two studies for a given moderator. To examine whether root traits differed among treatments, variation was estimated by a Q statistic, a measure that partitions total heterogeneity (QT) into variance explained by the model (QM or QB) and residual error not explained by the model (QE or QW; i.e. QT = QM + QE) [30, 35, 38]. QB and QW were tested against a X2-distribution (significance level p < 0.05) [35, 38]. Two moderators were significantly different if their 95% CI did not overlap [39]. A statistically significant QB suggests that there are differences among cumulative effect sizes for the categorical subgroups, while a significant QE implies that there are differences among effect sizes not explained by the model [30, 38]. There was no statistical justification for the further subdivision of the data if QB was not significant [40]. Also, we computed I2 index as a complement to the Q estimates. The I2 can be interpreted as the percentage of the total variability in a set of effect sizes because of differences between-study or between-comparisons (true heterogeneity) [30, 37].
To test the publication bias, funnel plots were presented as scatter plots of the log ratio of means against their standard errors, in which case studies should be distributed symmetrically around the mean of the log ratio of means, in the absence of publication bias. If there was any evidence of publication bias, the ‘trim and fill’ method was used to assess the potential impact of bias on the overall effect size and the effect size re-calculated from the resultant model from the trim and fill [30, 41]. Due to reported limitations of the funnel plot approach, we further calculated the Rosenberg’s fail-safe number (Nfs) for evidence of publication bias. The results were considered robust despite the possibility for publication bias if Nfs > 5 × n + 10, where n is the number of effect sizes [29, 30, 42]. A sensitivity analysis was conducted to compare the robustness of results for primary studies that reported SDs and those for which SDs were estimated as one-tenth of the mean.
OpenMEE, the open-source, cross-platform software for ecological and evolutionary meta-analysis [43] and Metafor [44], the package for meta-analysis in the R statistical software [34] were used for statistical analyses and in producing forest plots. Some forest plots were produced in Microsoft® Excel 2016 using the results obtained with OpenMEE software.
The included studies span 50 years, with the earliest published in 1969 and the latest in 2019. The recent years contributed the most number of studies and outcomes to the analysis (Figure 1a). The analyses included 37 studies (Appendix 1), consisting of 29 controlled-environment and 8 field-based experiments conducted in 16 and 7 countries, respectively (Figure 1b). There were 794 outcomes, consisting of 556 and 238 outcomes from the greenhouse- and field-based studies, respectively, and these were measured on 23 crop plants. Majority of the studies were conducted on cereals, mainly on maize and rice (Figure 1c). Included studies measured 23 root traits, with root biomass, length and numbers being the commonly measured root traits (Figure 1d).
Overview of included studies used in the comparison of shoot biomass, yield and root system traits from crop plants grown on media or soils amended with K and those grown on non-amended soils or growth media. For each panel, the location of the bubble on the chart indicates the number of effect sizes or outcomes and the size of the bubble indicates the number of studies which yielded respective outcomes or effect sizes.
Root system traits and shoot biomass response to the growth media amended with K was compared with the non-K-amended media (Figure 2). The overall effect size based on the disaggregated outcomes of k = 794, was −0.266 ± 0.020 (95% CI of −0.31 to −0.23; I2 = 98.91%; p < 0.001; Figure 2a-e), suggesting that the deficiency of K leads to approximately 23.3 ± 4.0% reduction in the size of root system traits compared to that on growth media with added K. The effect of K on root traits alone was comparable to the overall effect size and that of the shoot or yield-related traits. The effect size of root system traits alone was −0.263 ± 0.022 and that of shoot or yield-related traits was −0.283 ± 0.050, suggesting that the deficiency of K leads to approximately 23.1 ± 4.0% reduction in the size of root system traits and 24.7 ± 10.3% in the size of shoot biomass or yield compared to that on soil or growth media with added K. Based on the I2 (98.9%), there was a large inconsistency of effect sizes across the included studies, warranting the need for further examination of this variability.
Effect of K deficiency on shoot biomass, yield and root system traits of crop plants. Figures (a) to (e) are the analyses of disaggregated data and presents the overall effect size and effect size as a function of various moderators. The effect of K deficit on extracted traits as moderated by (a) crop categories; (b) type of K fertilizer supplied to the replete K growth media; (c) location of the experiment; (d) type of trait that was measured and (e) growth media or soil texture on which plants were grown. (f) Effect of K deficiency on all extracted traits based on aggregated data, where dependent effect sizes were combined to obtain one effect size per study. The log ratio of means (dotted vertical line) = 0 indicates no effect; log ratio of means >0 indicates the larger size of the traits from crops grown on replete K media over those grown on deficient K media; log ratio of means <0 indicates the larger size of the traits from crops grown on K-deficient growth media over those grown on replete K media. Effect size is considered statistically significant if its 95% CI does not overlap zero.
There was a significant reduction in root traits on no or low K soils or growth media for all categories of crops, except those categorized as trees, fruits and herbs (Figure 2a). Meta-regression analysis suggested that the differences among cumulative effect sizes for the various categories of crops were significant (QB = 46.8; I2 = 98.8%; df = 8; p < 0.001). Thus, the predictive model (crop type) probably explains some of the variances in the effect size and the effect of K application on root traits of some of the species of crop plants significantly differs from that of cereals, the nominated reference subgroup. The error sum of squares (QE) was insignificant (QE = 817.2; df = 785; p = 0.207), suggesting that the variation was accounted for by the crop species. But for potassium oxide (K2O), potassium nitrate (KNO3) or the combination of potassium nitrate and potassium dihydrogen phosphate (KNO3 + KH2PO4), regardless of the type of K fertilizer applied, there was a significant increase in root system traits (Figure 2b) due to K application. Many studies did not provide the type of K fertilizer used but the effect size obtained for these studies was similar to the overall effect (Figure 2b). The Meta-regression indicated that the differences among cumulative effect sizes for the various types of K fertilizer were significant (QB = 21.2; I2 = 98.8%; df = 7; p = 0.0034) but only the estimates of the intercept (SoP; −0.280 ± 0.037, CI: −0.352 to −0.208, p < 0.001) and KNO3 in combination with MOP (−0.966 ± 0.281, CI: −1.516 to −0.416, p < 0.001) were significantly different from zero.
Moreover, whether experiments were conducted under controlled conditions or field conditions, the lack of K in the soil or the growth media led to a significant reduction in the size of root system traits, yield, shoot and total biomass (Figure 2c). Although both were significantly different from zero, the meta-regression showed that there was a significant difference among cumulative effect sizes between greenhouse/lab- and field-based experiments (QB = 9.41; I2 = 98.9%; df = 1; p = 0.0022). The estimates were − 0.307 ± 0.024 (CI: −0.354 to −0.26, p < 0.001) and 0.133 ± 0.043 (CI: 0.048 to 0.218, p = 0.002) for the greenhouse (the intercept) and field experiments, respectively, suggesting that there were larger reductions in root system traits due to K deficiency in greenhouse experiments (26.4 ± 4.8%) than there were under field experiments (16 ± 4%). Even so, about 99% of the observed variance comes from differences between studies which can be explained by other study-level covariates. About 50% of the traits extracted from the included studies were not significantly affected by K application. These included length of root hairs, density, length and branching of lateral roots, diameter and volume of roots, the ratio of length and surface area of roots (Figure 2d). The meta-regression showed that the differences among cumulative effect sizes for the different traits were not significantly different (QB = 26.5; I2 = 98.9%; df = 24; p = 0.278).
There were about 9 main plant growth media used in the experiments from the included studies. These included soil of various textures, peat and several non-soil growth media including perlite, vermiculite, paper roll, agar, hydroponics (water) and aeroponics (misty air). On the majority of these soil textures or growth media, there was a significant effect of K application on measured root system traits. The results suggested that there were larger reductions due to K deficiency on clay loam, loam and silt loam than on sandy clay, silty clay and clay (Figure 2e). The differences among cumulative effect sizes for the various soil textures of growth media were significant (QB = 60.5; I2 = 98.8%; df = 16; p < 0.001). Thus, soil texture or growth medium probably explains some of the variances in the effect size and the effect of K application on root traits might differ depending on soil texture or growth media. The residual sum of squares (QE) was insignificant (QE = 806.3; df = 777 2; p = 0.226), suggesting that the variation was accounted for by the soil texture or growth media. After within-study dependencies among outcomes have been addressed by aggregating outcomes within individual studies, the overall effect size based on the k = 37 was: lnR = −0.294 (95% CI of −0.434 to −0.153; p < 0.001; Figure 2f), indicating that the deficiency of K in soils or growth media could lead to approximately 25.5 ± 15.0% reduction in the size of root system traits compared to that on high K soils or growth media amended with K. The I2 = 98.68% of the aggregated data still indicated that there is a large degree of between-study heterogeneity.
The overall effect size for root biomass for the disaggregated data of k = 106 was −0.389 (95% CI of −0.553 to −0.226; I2 = 99.5%; p < 0.001; Figure 3). Back-transforming the lnR suggested that K deprivation in a growth media leads to approximately 32.2 ± 17.7% drop in root biomass. When the data was analyzed based on crop species, significantly large root biomass due to K application was found for root and tuber crops (lnR = −0.394; 95% CI = −0.640 to −0.148; p = 0.002), cereals (lnR = −0.573; 95% CI = −0.857 to −0.289; p < 0.001) and fruits (lnR = −0.615; 95% CI = −0.858 to −0.372; p < 0.001) (Figure 3a). However, the cumulative effect sizes of the different categories of crops were not significantly different (QB = 8.77; I2 = 99.4%; df = 7; p = 0.269). The analysis based on the type of K fertilizer indicated that the effect size for all K types except that of MoP was significantly different from zero (Figure 3b). According to the meta-regression, the cumulative effect sizes of the different types of K fertilizers were significantly different (QB = 23; I2 = 99.4%; df = 5; p < 0.001). Moreover, when growth media was used as a moderator, the effect sizes for root biomass did not significantly differ from zero for aeroponics and paper growth media but it was significantly different from zero for hydroponics, perlite and soil growth media (Figure 3c). Even so, there was no significant difference among cumulative effect sizes for the various growth media (QB = 3.56; I2 = 99.43%; df = 5; p = 0.614). After within-study dependencies among outcomes have been addressed by aggregating outcomes within individual studies, the overall effect size based on the k = 24 was −0.477 (95% CI of −0.799 to −0.154; p = 0.004; Figure 3d), indicating that the deficiency of K in soils or growth media could lead to approximately 38 ± 38.0% reduction in root biomass compared to that on high K soils or growth media amended with K.
Effect of K deficiency on root biomass of crop plants. Figures (a) to (c) are the analyses of disaggregated data and presents the overall effect size and effect sizes a function of various moderators. The effect of K deficit on root biomass as moderated by (a) crop categories; (b) type of K fertilizer supplied to the replete K growth media; (c) growth media on which plants were grown. (d) Effect of K deficiency on root biomass based on aggregated data, where dependent effect sizes were combined to obtain one effect size per study. The log ratio of means (dotted vertical line) = 0 indicates no effect; log ratio of means >0 indicates larger root biomass of crops grown on replete K media over those grown on deficient K media; log ratio of means <0 indicates larger root biomass of crops grown on K-deficient growth media over those grown on replete K media. Effect size is considered statistically significant if its 95% CI does not overlap zero.
Under low K conditions, there is about 20.42 ± 10.3% reduction in root length compared to non-K-limited conditions (lnR = −0.228, CI = -0.325 to −0.131, I2 = 98.6, p < 0.001). Using crop categories as moderators, the effect size of all groups was different from zero except that of legumes and herbs (Figure 4a) and there were significant differences in the estimates (QB = 36; I2 = 98.2%; df = 8; p < 0.001). The largest reduction in root length due to K deficiency was recorded by tobacco, here classified as an industrial crop and the least reduction in root length was recorded by tree crops (Figure 4a). Based on the type of K fertilizer, the effect size from SoP and K2O were insignificant. Among the effect sizes which differed from zero, there were larger gains in root length if the source of K was a combination of KNO3 and MoP compared with that of MoP alone (Figure 4b). The results of the meta-regression based on type of K fertilizer indicated that the estimates differed significantly (QB = 33.2; I2 = 98.2%; df = 5; p < 0.001). Thus, the relationship between root length and the effect of type of K fertilizer is stronger than would be expected by chance. Although the I2 was very large, the QR suggested that with the type of K fertilizer in the model, the between-studies variance was largely explained (QE = 122.7; df = 125; p < 0.001). Having used growth media as a moderator, all effect sizes were significantly different from zero, except for that for germination paper (Figure 4c). There were significant differences among cumulative effect sizes for the various growth media (QB = 22.1; I2 = 98.3%; df = 5; p < 0.001), with perlite recording the biggest reduction in root length due to K starvation. The overall effect size based on the aggregated outcomes of k = 23 was −0.263 (95% CI of −0.433 to −0.094; p = 0.002; Figure 4d), indicating that the deficiency of K in soils or growth media could lead to approximately 23.2 ± 18.6% reduction in root length compared to that on high K soils or growth media amended with K.
Effect of K deficiency on root length of crop plants. Figures (a) to (c) are the analyses of disaggregated data and presents the overall effect size and effect sizes a function of various moderators. The effect of K deficit on root length as moderated by (a) crop categories; (b) type of K fertilizer supplied to the replete K growth media; (c) growth media on which plants were grown. (d) Effect of K deficiency on root length based on aggregated data, where dependent effect sizes were combined to obtain one effect size per study. The log ratio of means (dotted vertical line) = 0 indicates no effect; log ratio of means >0 indicates the longer length of crops grown on replete K media over those grown on deficient K media; log ratio of means <0 indicates longer root length of crops grown on K-deficient growth media. Effect size is considered statistically significant if its 95% CI does not overlap zero.
The first meta-analysis for root count involving the disaggregated dataset showed that under K deficiency conditions, there is about 29.2 ± 9.4% reduction in root numbers compared to non-K-limited conditions (lnR = −0.345, CI = −0.434 to −0.256, I2 = 92.5, p < 0.001). Using crop categories as moderators, the effect size of all groups was different from zero except that of trees (Figure 5a) but there were no significant differences in the cumulative effect sizes of these species of crop plants (QB = 11.8; I2 = 89.44%; df = 8; p = 0.158). Based on the type of K fertilizer, the effect size from SoP was insignificant (Figure 5b). There were differences in the cumulative effect size (QB = 13.3; I2 = 90.13%; df = 2; p = 0.0013). Thus, the relationship between the number of roots and the effect of type of K fertilizer is stronger than would be expected by chance. All effect sizes were significantly different from zero, for all growth media in which the number of roots was counted (Figure 5c) but these cumulative effect sizes for the different media were not significantly different (QB = 8.36; I2 = 90.31%; df = 5; p = 0.137).
Effect of K deficiency on the root count of crop plants. Figures (a) to (c) are the analyses of disaggregated data and presents the overall effect size and effect sizes a function of various moderators. The effect of K deficit on root count as moderated by (a) crop categories; (b) type of K fertilizer supplied to the replete K growth media; (c) growth media on which plants were grown. (d) Effect of K deficiency on root count based on aggregated data, where dependent effect sizes were combined to obtain one effect size per study. The log ratio of means (dotted vertical line) = 0 indicates no effect; log ratio of means >0 indicates more roots from crops grown on replete K growth media over those grown on deficient K media; log ratio of means <0 indicates more root length of crops grown on K-deficient growth media. Effect size is considered statistically significant if its 95% CI does not overlap zero.
Here, we provide four sensitivity analyses of the data with available and estimated dispersions around the means. This includes the sensitivity analysis for the overall dataset involving all root traits (k = 794; number of studies = 37), the data for root biomass (k = 106; number of studies = 24), root length (k = 131; number of studies =23) and root count (k = 63; number of studies = 12). For each of these analyses, we provide a sensitivity of results between the outcomes or studies that originally provided standard deviations (SDs), outcomes or studies that provided standard error of the mean (SEM) which had to be converted to SDs and those without any dispersion for which the SD was estimated as one-tenth of the mean.
For the entire dataset, similar to the overall effect size (lnR = −0.266; 95% CI = −0.305 to −0.227; p < 0.001), the effect sizes for studies with measures of dispersion reported as SD (lnR = −0.248; 95% CI = −0.42 to −0.077; p = 0.005), or SEM (lnR = −0.198; 95% CI = −0.23 to −0.167; p = 0.057) or estimated as 10% of the mean (lnR = −0.35; 95% CI = −0.429 to −0.271; p < 0.001) were all negative and significant (Figure 6a). This suggests that root system size reduces by approximately 22 ± 18.6%, 18 ± 3.2%, and 30 ± 8.2% due to K deficiency if, respectively, the study originally reports dispersion around mean as SD, SEM or dispersions are estimated as 10% of the mean. Meta-regression suggested that the cumulative effect sizes for the different measures of dispersion were significantly different (QB = 13.5; I2 = 98.89%; df = 2; p = 0.0012).
Sensitivity analyses of measures of dispersion for (a) data for all traits extracted from the included studies; (b) data for root biomass; (c) data for root length and (d) data for root count. The sensitivity analysis was conducted between primary studies that originally reported standard deviations, primary studies that originally reported standard error of the mean which had to be converted to standard deviations for the meta-analysis and primary studies which did not report any measure of dispersion and for which SDs were estimated as 10% of the mean. Effect size is considered statistically significant if its 95% CI does not overlap zero.
For the root biomass data, all the three effect sizes, were negative and significantly different from zero (Figure 6b) and the meta-regression indicated that differences between their cumulative effect sizes were insignificant (QB = 5.6; I2 = 99.45%; df = 2; p = 0.0609). The sensitivity analysis for the root length data indicated that the three effect sizes for the different types of dispersion were all negative as was the overall effect size for the trait (Figure 6c). All effect sizes were significantly different from zero except for outcomes for which SDs were reported in the original study (lnR = −0.63; 95% CI = −1.322 to 0.062; p = 0.074). The meta-regression for the root length data indicated that differences between the cumulative effect sizes were significant (QB = 7.51; I2 = 98.47%; df = 2; p = 0.0234). Similar to the overall effect size for the root count data (lnR = −0.345; 95% CI = −0.434 to −0.256; p < 0.001), the effect sizes for studies with measures of dispersion reported as SD (lnR = −0.412; 95% CI = −0.557 to −0.267; p < 0.001), as SEM (lnR = −0.305; 95% CI = −0.413 to - 0.197; p < 0.001) and estimated as 10% of the mean (lnR = −0.519; 95% CI = −0.673 to −0.364; p < 0.001) were all negative and significant (Figure 6d). This suggests that root count reduces by approximately 34 ± 15.6%, 26 ± 11.4%, and 41 ± 16.7% due to K deficiency, respectively, if the study originally reported dispersion around mean as SD, SEM or SD was estimated as 10% of the mean. The meta-regression, however, suggested that the cumulative effect sizes for the different measures of dispersion around the means of root count were not significantly different (QB = 2.61; I2 = 91.57%; df = 2; p = 0.271).
For each of the analyses conducted here, Rosenberg’s fail-safe numbers were computed for the disaggregated datasets and funnel plots produced for the aggregated datasets. For the overall data involving all extracted traits, the fail-safe number for the disaggregated data was 2,232,020, which is approximately 193% greater than the threshold of 39,700 (5 × n + 10) needed to consider the mean effect size robust. For the aggregated data of the overall dataset, the original funnel plot obtained was essentially asymmetrical, indicating the tendency for smaller sample sizes to be associated with stronger negative effects. Consequently, trim and fill analysis estimated that there were 13 (SE = 4) studies missing to the left side of the grand mean (Figure 7a). Although correcting for these with trim and fill method changed the magnitude of the effect size, it did not affect the significance and direction (lnR = −0.4498; 95% CI = −0.5773 to-0.3224; I2 = 98%; p < 0.0001). This suggested that when the effect size is corrected for by trim and fill, there is about 36.2 ± 13.6% reduction in the size of various traits in crop plants grown under K deficient conditions compared to those grown under replete K conditions.
Funnel plots of average effect sizes (log ratio of means) for: (a) data for all traits extracted from the included studies; (b) data for root biomass; (c) data for root length and (d) data for root count. Effect sizes estimated missing on the left side of the grand mean and were corrected for with trim and fill method.
The Rosenberg’s fail-safe number for the disaggregated data of root biomass (32081) was approximately 143.3% greater than the threshold of 5300 (5 × 106 + 10) needed to consider the mean effect size robust. Similar to that of the general data, the original funnel plot for the analysis of root biomass was asymmetrical. The subsequent trim and fill analysis estimated 8 (SE = 3) missing studies on the left side of the mean (Figure 7b) and altered the magnitude of the effect size for root biomass, but not the significance and direction (lnR = −0.7088; 95% CI = −0.9902 to −0.4273; I2 = 99%; p < 0.0001). Back-transforming the new effect size showed that there is about 50.8 ± 32.5% reduction in the root biomass of crop plants grown under K deficient conditions compared those grown under replete K conditions.
The Rosenberg’s fail-safe number for the disaggregated data of root length (67875) was an over 10-fold increase of the threshold of 6550 (5 × 131 + 10) needed to consider the mean effect size robust. The funnel plot for the analysis of root length was equally asymmetrical and required correction by trim and fill, which estimated that 6 (SE = 3) studies were missing on the left side of the mean (Figure 7c). Back-transforming the trim and fill-corrected effect size (lnR = −0.3764; 95% CI = −0.5339 to −0.2189; I2 = 98.2%; p < 0.0001) showed that there is about 31.4 ± 17% reduction in the root length of crop plants grown under K deficient conditions compared those grown under replete K conditions.
The Rosenberg’s fail-safe number for the disaggregated data of root count (14840) was an approximately, 5-fold increase of the threshold of 3150 (5 × 63 + 10) needed to consider the mean effect size robust. Funnel plots produced for the analysis of root count indicated a weak tendency for smaller sample sizes to be associated with stronger negative effects (Figure 7d). According to the trim and fill analysis, there was only 1 (SE = 2) study missing on the left side of the mean and correcting for the effect size (lnR = −0.3404; 95% CI = −0.4807 to −0.2002; I2 = 90.5%; p < 0.0001) suggested that there is an approximately, 29 ± 15% reduction in the root count of crop plants grown on K deficient growth media compared to those grown on replete K growth media.
Due to its crucial role in osmotic regulation and root expansion, potassium (K) starvation in soil or growth media during the early stages of plant growth can result in plant death or impaired establishment with adverse impacts on subsequent growth, performance and harvest index [45]. Potassium is indispensable in several cellular and tissue level processes that are critical to high harvest index and food and human health security. Potassium depletion can be rapid even in very fertile soils, resulting in conditions of starvation to crop plants [5]. However, morphological responses of plant roots to K starvation has not received as much attention as N and P [28]. In the current study, a meta-analysis of 37 included studies from 1969 to 2019 in 23 countries (Appendix 1; Figure 1) was done to quantify the net effect of K starvation (low or deficient K) on modifications of the root system architecture (RSA) of crop plants. Most of the included studies were done on cereals (mainly maize and rice) and root biomass, root length and number of roots were the commonest measured root traits. The use of inclusion/exclusion criteria, as a requirement of systematic review and meta-analysis, meant that some studies (and for that matter crops or root traits) were not covered in the current study if they did not meet the inclusion criteria.
Overall, results based on the aggregated data indicates a large effect size of K starvation, with substantial reduction (25.5 ± 15.0%) in the size of root system traits compared to K replete conditions. However, there were substantial heterogeneities between the included studies, which could be partly explained by the moderators identified in this study and others unaccounted for. The results of the disaggregated data also show significant reductions in root system traits under conditions of K starvation compared to K replete conditions. This magnitude of reduction in root system traits was comparable to that of shoot biomass and yield. A significant, net reduction in root system traits was observed for all categories of crop plants in the current study except those categorized as trees, fruits and herbs. The pooled evidence suggests that, compared to the type of K fertilizer used, the type of crop and soil or growth media considerably mediated the scale of reduction in root system traits due to K starvation. Indeed, the crop genotype or species has been shown to mediate, if not confound, root system responses to conditions of K starvation. For example, it has been reported that even different accessions of Arabidopsis (Arabidopsis thaliana) responded differently to conditions of K starvation, in which one accession promoted main root elongation and diminished the elongation of lateral roots while the reverse was the case for the other accessions [9]. These differences were shown to be genetically controlled. A related study [46] found no effect of K starvation on the elongation of main roots but substantial reduction in lateral roots, while [25, 26] reported impaired elongation of main roots.
Type of soil (texture) also moderates the effect size of K starvation on root system traits. Larger reductions in root system traits, due to K starvation, were observed in clay loam, loam and silt loam compared to sandy clay, silty clay and clay (Figure 2e). This could be due to differences in K-specific binding sites in clay minerals and organic matter [5]. In soils with properties considerably influenced by clay, K can have a protective or competitive advantage for storage in the exchangeable or non-exchangeable but bioavailable form in clay minerals due to its low hydration energy compared to other antagonistic ions or competitive cations. This permits slow and progressive release of K in response to the concentration gradient, a situation more useful to the K nutrition of some crops. Besides, the K-bearing minerals of the sand and silt fractions (e.g. mica or alkali feldspars) can make large contributions to recharging the labile K pool. In contrast, soils with properties considerably influenced by organic matter would have much of its K in solution due to poor specific binding sites of organic matter for K [5, 45]. This could result in rapid depletion or loss of K from solution with attendant reductions in root system traits, especially in young roots.
The results also suggest that reductions in root system traits could be more drastic under greenhouse/lab conditions than under field conditions. Perhaps, field conditions present the typical dynamic balance between the labile and non-labile K pools, and depending on the soil and field conditions, can moderate the effect of K starvation due to potential recharge from non-labile sources [5]. This is in contrast to greenhouse/lab experiments where conditions are homogenized and potentially stable. The large variation in effect sizes from the included studies seems consistent with the heterogeneous results on morphological root system adaptation or responses to K starvation [9, 28] and this might be explained by crop and/or soil type. This inconsistency in the plasticity of root system architecture to K starvation, together with the variations observed across the included studies, suggests a need for extensive studies involving different crop plants and environmental conditions, complemented by elucidation of the metabolic activities that affect K uptake. It would also be critical to explore plant K content, due to its influence on plant water relations and metabolic processes and often serving as a regulator of various physiological processes.
Results from both the aggregated and disaggregated data indicated a large, negative impact of K starvation on root biomass, root length, and the number of roots. Indeed, K is among the essential general regulatory factors of root growth. Contrary to previous results, recent findings show both systemic and localized root growth responses to K supply or deprivation in Arabidopsis though further studies are required to strengthen the evidence [28]. While roots have low preferential branching to K patches in a heterogeneous soil, local root growth is known to be promoted by the close presence of K in the root zone [24, 47]. The general effect of K deprivation is inhibition of root elongation and reduction in the count of first-order lateral roots though this might vary by genotype or species [9, 26]. The role of K in osmotic regulation and maintenance of turgor pressure is critical for cell expansion in the elongation zone of roots [48] while K fluxes influence apical growth of root hairs [49, 50]. Also, the partitioning of assimilates or biomass between root and shoots is mediated by K through phloem transport [51]. Unlike other nutrients, K deprivation generally stimulates decreased (rather than increased) allocation of biomass to the root system, resulting in lower root biomass [52, 53]. This could be due to retarded phloem transport arising from a low supply of K [45, 51, 54]. Retardation of root growth would in turn limit further exploration and effective acquisition of K from the rhizosphere to redress the effect of K starvation. Hence, the effect of K starvation can be more drastic at early stages of plant growth, but this can persist to affect overall crop performance subsequently and harvest index. These physiological or metabolic roles of K in root system growth and development can account for the observed large reductions in root biomass, root length, and the number of roots in the current study as roots actively engage in functional and morphological modifications to cope with or respond to K starvation. The current study aimed at quantifying the effect size of K starvation on root system traits of crop plants using meta-analysis. A detailed treatment of the physiological basis of root system responses to K starvation can be found in the extensive narrative review by [28].
The type of soil (or growth media), crop and K fertilizer used were analyzed as moderators. Generally, the sign of the effect of K starvation on root system traits was independent of the type of K fertilizer used. It has been reported that different types of K fertilizers gave similar results, unlike the dosage, in a study with the rice variety IR 64 grown on Entisols [55]. However, unlike other types of K fertilizers in the disaggregated data, there was no significant difference between the effect size for root biomass of K-replete and K-starved plants when MoP was used. The largest reductions were observed in studies that used SoP or KNO3 or KPO4. For root length, there was no significant difference between the effect size for K-replete and K-starved plants in studies that used SoP and K2O. Studies that used MoP alone or KNO3 + MoP showed significantly larger reductions in the K-starved group compared to the K-replete group. Because there were only two studies that combined KNO3 and MoP and the confidence interval is wide, the cumulative effect on root length should be treated with caution due to weak statistical power. Similarly, the overall effect size of K starvation on the number of roots was not significantly different from the K-replete group when SoP was used but MoP and others were significantly different. These might suggest differences in sensitivities of different root system traits or crop plants to different types of K fertilizer. Perhaps, SoP or KNO3 or KPO4 substantially increased root biomass while MoP substantially increased root length or the number of roots. This could also be due to net interactive effect between soil, fertilizer and soil water regime. MoP is widely used but has a high potential for leaching. As a result, it could be more effective on soils with high K-specific binding sites and/or moderate rainfall or watering regime [45]. Besides, root system traits responses to K fertilizer could be different depending on whether the crop plant is chlorophobic or not. Compared to monocots, dicots are relatively poorer at extensive root growth for foraging under low K conditions [45]. Further studies would be required to substantiate this to inform breeding and, perhaps, fertilizer management practices to selectively enhance a target root system trait over others for specific purposes.
With crop type, the effect size of K starvation was significantly different from that of the K-replete group and the difference was largest for root and tuber crops, cereals and fruits. Cereals generally require sufficient K supply during the early or vegetative stage but little to no K during the regenerative stage [45]. The K supply at the early stages is critical for the development of extensive root system that supports not only anchorage and crop establishment, but also foraging for soil resources, including K under low supply conditions, and phloem-xylem cycling during the regenerative stage. Analysis of previous experimental results showed that relative post-anthesis K uptake of maize, millet, rice, sorghum and wheat was significantly lower than N and P, but not different among the tropical cereals [56]. In roots and tubers, K is essential for the quantity and quality of roots or tuber yield [57]. The unique role of K in the synthesis and translocation of sugars and starches, as well as increasing sink capacity is much more pronounced in roots and tubers. Potassium enhances primary cambial activity to help storage root initiation. It also promotes enlargement of storage root and tubers. As a result, roots and tubers are heavy K feeders and, because they take up larger quantities of K than any other macronutrient, they can remove substantial amounts of K from the soil via harvesting. Cassava, for example, can take up about 146–167 kg K ha-1 to produce root yield of 25 kg ha-1, with about 87.8 kg K ha-1 removed with the harvest [58]. In sweet potato, about 185 kg K ha-1 might be required to produce 22 t ha-1 tubers; and the roots can account for about 66% of total K removal from soil [59]. It is, therefore, not surprising that the cumulative effect of K starvation was negative and large for roots and tubers. K-starved legumes and herbs did not show any significant cumulative reductions in root length compared to the other categories of crop plants. Perhaps, this could be because the roots of legumes require K principally for root nodule formation. As observed for the number of roots in herbs, some herbaceous plants might increase the number of roots or root hairs in response to K deprivation [45].
In the disaggregated data, significant and large reductions in root biomass were observed under K starvation in studies that used soil and perlite as growth media, while germination paper and aeroponics did not produce cumulative effect significantly different from the K-replete condition (though these had much wider CIs). Similarly, the cumulative effect of K starvation on root length was not significantly different from the K-replete group in studies that used germination paper as growth medium but significant reductions were observed for all other growth media, with perlite showing the largest reductions. However, though significant reductions were observed in the number of roots of plants under K starvation for all growth media used, the cumulative effect sizes for the different growth media were not significantly different. These suggest differential mediation or moderation of root system traits responses to K starvation. Light textured or well-drained soils might facilitate K loss from the root zone via leaching depending on the intensity of rainfall or irrigation. Conversely, clay soils might fix K and reduce its availability to the roots [45]. Perlite, on the other hand, facilitates drainage which can contribute to leaching of K depending on irrigation or rainfall intensity. In both situations, conditions of scarcity would be created which can have marked effects even if the scarcity is short-lived. Germination paper might not be a good medium for studying the effect of K starvation on root system traits. Adu et al. [60] noted that when germination papers are used in screening root traits, significant paper effects on the root system data were recorded, possibly due to inadequate water absorption or some inherent minerals in the different papers.
The Rosenberg fail-safe numbers generated from the analyses suggest that the results are more likely to be robust to publication bias. Thus, a relatively large number of unpublished data would be required to change statistically significant effects observed in the current meta-analysis [30]. Even so, the visual observation of the funnel plots indicates possible under-estimation of the original effect sizes, as the ‘trim and fill’ suggested relatively bigger effect sizes. The sensitivity analyses of measures of dispersion indicated that the effect size from studies that originally reported SDs is comparable to the effect size from the overall data. However, while the conversion of SEM to SD seems to have underestimated the effect size, the estimation of SD as one-tenth of the mean may have significantly overestimated the effect size. This borders on quality of reporting practices in publications, where certain critical information such as standard deviation must be enforced in published papers, especially when continuous data are used. The analysis of heterogeneity also showed that the percentage of the total variability in a set of effect sizes, due to true heterogeneity between-study or comparisons rather than sampling error, was high. While this may point to large differences in experimental approaches, environmental variables and variations between studies, it is also possible that certain critical moderators were unaccounted for in the current study. Availability and uptake of K by plants is often complicated by many interacting components, including soil, plant, climate, and management factors. Critical moderators such as available and non-exchangeable K, cation exchange capacity (CEC), temperature and moisture content of the soil, plant population, placement of K fertilizer, tillage practices, among others were largely unreported in the included studies and may be implicated in the large heterogeneities or I2 values observed.
Potassium plays critical roles in the growth and development of plant roots, which respond morphologically to K starvation. As agronomic use of K increases and becomes even more crucial for food security and sustainable agriculture in a changing climate, it is imperative to understand the extent of modifications in root system architecture in response to K starvation to inform efforts at improving crops and agronomic practices for efficient use of K. This meta-analysis sought to provide a pooled evidence on and quantify the effect of K starvation on modifications in RSA. Generally, the cumulative effect size of K starvation on pooled root system traits was significantly different from that of K-replete plants, resulting in about 25.5 ± 15.0% reduction in pooled root system traits. Similarly, K starvation can lead to a significant cumulative reduction of about 38 ± 38.0% in root biomass and 23.2 ± 18.6% in root length. The reductions were largest for the categories roots and tubers, cereals and fruits. Soils modified by organic matter showed large reductions compared to those modified by clay. Soil and perlite, as growth media, showed the largest reductions in root biomass and root length while germination paper might not be a suitable medium for assessing the response of these parameters to K starvation. Generally, the type of K fertilizer used in such studies is unimportant. The effect of K starvation on RSA might be invisible but the cascading effect on the quantity and quality of shoot biomass, harvest index, and food security could be palpable and costly. Hence, efforts at estimating optimal K management, in terms of timing, frequency, rate, and building K reserves in soils should be intensified vis-à-vis improvement in understanding of responses of root system traits in different crop genotypes and species, types of soil, and environmental conditions. In all this, special consideration should be given to responses of targeted root system traits to K starvation in matching crops to soil environments and adapting agronomic management practices.
The authors declare no conflict of interest.
Amin MR, Karim MA, Khaliq QA, Islam MR, Aktar S. Effect of nitrogen and potassium on the root growth, nutrient content and yield of mungbean (Vigna radiata L. Wilczek) under waterlogged condition. The Agriculturists. 2015;13(1):67–78.
Andersen L, Nielsen NE. Influx of potassium (86Rb) by roots of intact tomato plants. Journal of plant nutrition. 1999 Sep 1;22(9):1457–67.
Bahrami-Rad S, Hajiboland R. Effect of potassium application in drought-stressed tobacco (Nicotiana rustica L.) plants: Comparison of root with foliar application. Annals of Agricultural Sciences. 2017 Dec 1;62(2):121–30.
Berti M, Wilckens R, Fischer S, Hevia F. Effect of harvest season, nitrogen, phosphorus and potassium on root yield, echinacoside and alkylamides in Echinacea angustifolia L. in Chile. InInternational Conference on Medicinal and Aromatic Plants. Possibilities and Limitations of Medicinal and Aromatic Plant 5,762,001 Jul 8 (pp. 303–310).
Kumar N, Tofinga M. The effect of residual Potassium (K) and poultry manure (PM) on the root distribution of two cultivars of taro grown on Tokotoko soil series in Fiji. Research Journal of Agronomy. 2007;1(1):5–11.
Carmeis Filho AC, Crusciol CA, Nascente AS, Mauad M, Garcia RA. Influence of potassium levels on root growth and nutrient uptake of upland rice cultivars. Revista Caatinga. 2017 Mar;30(1):32–44.
Chen G, Feng H, Hu Q, Qu H, Chen A, Yu L, Xu G. Improving rice tolerance to potassium deficiency by enhancing Os HAK 16p: WOX 11-controlled root development. Plant biotechnology journal. 2015 Aug;13(6):833–48.
Coale FJ, Grove JH. Effect of soil potassium availability on soybean root and shoot growth under unrestrained rooting conditions. Journal of plant nutrition. 1986 Dec 1;9(12):1565–84.
Du Q, Zhao XH, Jiang CJ, Wang XG. Effect of potassium deficiency on root growth and nutrient uptake in Maize (Zea mays L.). Agricultural Sciences. 2017;8(11):1263–77.
Jia YB, Yang XE, Feng Y, Jilani G. Differential response of root morphology to potassium deficient stress among rice genotypes varying in potassium efficiency. Journal of Zhejiang University Science B. 2008 May 1;9(5):427.
Klinsawang S, Sumranwanich T, Wannaro A, Saengwilai P. Effects of root hair length on potassium acquisition in rice (Oryza sativa L.). Appl. Ecol. Environ. Res. 2018 Jan 1;16:1609–20.
Kumar S, Dhar S, Om H, Meena RL. Enhanced root traits and productivity of maize (Zea mays) and wheat (Triticum aestivum) in maize-wheat cropping system through integrated potassium management. Indian Journal of Agricultural Sciences. 2015 Feb 1;85(2):251–5.
Lu L, He CE, Jin Y, Zhang X, Wei J. Effects of the applications of phosphorus and potassium fertilizers at different growth stages on the root growth and bioactive compounds of’Salvia miltiorrhiza’Bunge. Australian Journal of Crop Science. 2013 Sep;7(10):1533.
Luo HY, He J, Lee SK. Interaction between potassium concentration and root-zone temperature on growth and photosynthesis of temperate lettuce grown in the tropics. Journal of plant nutrition. 2012 May 1;35(7):1004–21.
Ma Q, Scanlan C, Bell R, Brennan R. The dynamics of potassium uptake and use, leaf gas exchange and root growth throughout plant phenological development and its effects on seed yield in wheat (Triticum aestivum) on a low-K sandy soil. Plant and Soil. 2013 Dec 1;373(1–2):373–84.
Mullins GL, Reeves DW, Burmester CH, Bryant HH. In-row subsoiling and potassium placement effects on root growth and potassium content of cotton. Agronomy Journal. 1994 Jan;86(1):136–9.
Omondi JO, Lazarovitch N, Rachmilevitch S, Kukew T, Yermiyahu U, Yasuor H. Potassium and storage root development: focusing on photosynthesis, metabolites and soluble carbohydrates in cassava. Physiologia Plantarum. 2020 Jun;169(2):169–78.
Park WJ. Exogenously applied RbCl revealed the role of potassium in the regulation of directional cell growth in the primary root of maize (Zea mays). Maydica. 2012 Dec 7;57(3):175–82.
Roushani GA, Narayanasamy G. Effects of potassium on temporal growth of root and shoot of wheat and its uptake in different soils. (2010): 25–32.
Rosolem CA, Rossetto CA, Fernandes DM, Ishimura I. Potassium fertilization, root morphology and potassium absorption by soybean. Journal of plant nutrition. 1993 Mar 1;16(3):479–92.
Saghaiesh SP, Souri MK. Root growth characteristics of Khatouni melon seedlings as affected by potassium nutrition. Acta Scientiarum Polonorum-Hortorum Cultus. 2018 Jan 1;17(5):191–8.
Sangakkara UR, Hartwig UA, Nösberger J. Response of root branching and shoot water potentials of french beans (Phaseolus vulgaris L.) to soil moisture and fertilizer potassium. Journal of Agronomy and Crop Science. 1996 Nov;177(3):165–73.
Sangakkara UR, Hartwig UA, Nösberger J. Root and shoot development of Phaseolus vulgaris L.(French beans) as affected by soil moisture and fertilizer potassium. Journal of Agronomy and Crop Science. 1996 Nov;177(3):145–51.
Saykhul A, Chatzistathis T, Chatzissavvidis C, Therios I, Menexes G. Root growth of cultivated and “wild” olive in response to potassium mineral nutrition. Journal of Plant Nutrition. 2016 Sep 18;39(11):1513–23.
Schnappinger Jr. MG, Bandel VA, Kresge CB. Effect of Phosphorus and Potassium on Alfalfa Root Anatomy 1. Agronomy Journal. 1969 Sep;61(5):805–8.
Somaweera KA, Suriyagoda LD, Sirisena DN, De Costa WA. Growth, root adaptations, phosphorus and potassium nutrition of rice when grown under the co-limitations of phosphorus, potassium and moisture. Journal of Plant Nutrition. 2017 Apr 3;40(6):795–812.
Song W, Liu S, Meng L, Xue R, Wang C, Liu G, Dong C, Wang S, Dong J, Zhang Y. Potassium deficiency inhibits lateral root development in tobacco seedlings by changing auxin distribution. Plant and soil. 2015 Nov 1;396(1–2):163–73.
Trehan SP, Sharma RC. Potassium uptake efficiency of young plants of three potato cultivars as related to root and shoot parameters. Communications in soil science and plant analysis. 2002 Jul 8;33(11–12):1813–23.
Triboulot MB, Pritchard J, Levy G. Effects of potassium deficiency on cell water relations and elongation of tap and lateral roots of maritime pine seedlings. New phytologist. 1997 Feb;135(2):183–90.
Ullah H, Datta A. Root system response of selected lowland Thai rice varieties as affected by cultivation method and potassium rate under alternate wetting and drying irrigation. Archives of Agronomy and Soil Science. 2018 Dec 6;64(14):2045–2059.
Walker DJ, Black CR, Miller AJ. The role of cytosolic potassium and pH in the growth of barley roots. Plant Physiology. 1998 Nov 1;118(3):957–64.
Wang L, Katzensteiner K, Schume H, Van Loo M, Godbold DL. Potassium fertilization affects the distribution of fine roots but does not change ectomycorrhizal community structure. Annals of Forest Science. 2016 Sep 1;73(3):691–702.
Wu Y, Hu Y, Xu G. Interactive effects of potassium and sodium on root growth and expression of K/Na transporter genes in rice. Plant Growth Regulation. 2009 Apr 1;57(3):271.
Zhang ZY, Qing-Lian WA, Zhao-Hu LI, Liu-Sheng DU, Xiao-Li TI. Effects of potassium deficiency on root growth of cotton seedlings and its physiological mechanisms. Acta Agronomica Sinica. 2009 Apr 1;35(4):718–23.
Zhao XH, Yu HQ, Jing WE, Wang XG, Qi DU, Jing WA, Qiao WA. Response of root morphology, physiology and endogenous hormones in maize (Zea mays L.) to potassium deficiency. Journal of Integrative Agriculture. 2016 Apr 1;15(4):785–94.
Zhao ZR, Li GR, Huang GQ. Promotive effect of potassium on adventitious root formation in some plants. Plant Science. 1991 Jan 1;79(1):47–50.
Zhao X, Yi B, Wang X, Jiang C, Cao M, Yu H, Wang X. Effect of low potassium stress on root morphological characteristics and potassium accumulation at seedling stage in maize [Zea mays L.]. Journal of Experimental Biology and Agricultural Sciences. 2014;2(6):546–52.
At IntechOpen, we not only specialize in the publication of Book Chapters as part of our Edited Volumes, but also the publication and dissemination of longer manuscripts, known as Long Form Monographs. Monographs allow Authors to focus on presenting a single subject or a specific aspect of that subject and publish their research in detail.
\n\nEven if you have an area of research that does not at first sight fit within a previously defined IntechOpen project, we can still offer support and help you in publishing your individual research. Publishing your IntechOpen book in the form of a Long Form Monograph is a viable alternative.
",metaTitle:"Publish a Whole Book",metaDescription:"At IntechOpen, we not only specialize in the publication of book chapters as part of our Edited Volumes, but also the publication and dissemination of long form manuscripts, known as monographs. Monographs allow authors to focus on presenting a single subject or a specific aspect of that subject and publish their research at length.\n\nPerhaps you have an area of research that does not fit within a previously defined IntechOpen project, but rather need help in publishing your individual research? Publishing your IntechOpen book in the form of a long form monograph is a great alternative.",metaKeywords:null,canonicalURL:"/page/publish-a-whole-book",contentRaw:'[{"type":"htmlEditorComponent","content":"MONOGRAPH - LONG FORM MANUSCRIPT
\\n\\nFORMATS
\\n\\nCOST
\\n\\n10,000 GBP Monograph - Long Form
\\n\\nThe final price includes project management, editorial and peer-review services, technical editing, language copyediting, cover design, book layout, book promotion and ISBN assignment.
\\n\\n*The price does not include Value-Added Tax (VAT). Residents of European Union countries need to add VAT based on the specific rate applied in their country of residence. Institutions and companies registered as VAT taxable entities in their own EU member state will not pay VAT by providing us with their VAT registration number. This is made possible by the EU reverse charge method.
\\n\\nOptional Services
\\n\\nIntechOpen has collaborated with Enago, through its sister brand, Ulatus, which is one of the world’s leading providers of book translation services. The services are designed to convey the essence of your work to readers from across the globe in a language they understand. Enago’s expert translators incorporate cultural nuances in translations to make the content relevant for local audiences while retaining the original meaning and style. Enago translators are equipped to handle all complex and multiple overlapping themes encompassed in a single book and their high degree of linguistic and subject expertise enables them to deliver a superior quality output.
\\n\\nIntechOpen Authors that wish to use this service will receive a 20% discount on all translation services. To find out more information or obtain a quote, please visit: https://www.enago.com/intech.
\\n\\nFUNDING
\\n\\nWe feel that financial barriers should never prevent researchers from publishing their work. Please consult our Open Access Funding page to explore funding opportunities and learn more about how you can finance your IntechOpen publication.
\\n\\nBENEFITS
\\n\\nPUBLISHING PROCESS STEPS
\\n\\nFor a complete overview of all publishing process steps and descriptions, go to How Open Access Publishing Works.
\\n\\nSEND YOUR PROPOSAL
\\n\\nIf you are interested in publishing your book with IntechOpen, please submit your book proposal by completing the Publishing Proposal Form.
\\n\\nNot sure if this is the right option for you? Please refer back to the main Publish with IntechOpen page or feel free to contact us directly at book.department@intechopen.com.
\\n"}]'},components:[{type:"htmlEditorComponent",content:'MONOGRAPH - LONG FORM MANUSCRIPT
\n\nFORMATS
\n\nCOST
\n\n10,000 GBP Monograph - Long Form
\n\nThe final price includes project management, editorial and peer-review services, technical editing, language copyediting, cover design, book layout, book promotion and ISBN assignment.
\n\n*The price does not include Value-Added Tax (VAT). Residents of European Union countries need to add VAT based on the specific rate applied in their country of residence. Institutions and companies registered as VAT taxable entities in their own EU member state will not pay VAT by providing us with their VAT registration number. This is made possible by the EU reverse charge method.
\n\nOptional Services
\n\nIntechOpen has collaborated with Enago, through its sister brand, Ulatus, which is one of the world’s leading providers of book translation services. The services are designed to convey the essence of your work to readers from across the globe in a language they understand. Enago’s expert translators incorporate cultural nuances in translations to make the content relevant for local audiences while retaining the original meaning and style. Enago translators are equipped to handle all complex and multiple overlapping themes encompassed in a single book and their high degree of linguistic and subject expertise enables them to deliver a superior quality output.
\n\nIntechOpen Authors that wish to use this service will receive a 20% discount on all translation services. To find out more information or obtain a quote, please visit: https://www.enago.com/intech.
\n\nFUNDING
\n\nWe feel that financial barriers should never prevent researchers from publishing their work. Please consult our Open Access Funding page to explore funding opportunities and learn more about how you can finance your IntechOpen publication.
\n\nBENEFITS
\n\nPUBLISHING PROCESS STEPS
\n\nFor a complete overview of all publishing process steps and descriptions, go to How Open Access Publishing Works.
\n\nSEND YOUR PROPOSAL
\n\nIf you are interested in publishing your book with IntechOpen, please submit your book proposal by completing the Publishing Proposal Form.
\n\nNot sure if this is the right option for you? Please refer back to the main Publish with IntechOpen page or feel free to contact us directly at book.department@intechopen.com.
\n'}]},successStories:{items:[]},authorsAndEditors:{filterParams:{sort:"featured,name"},profiles:[{id:"6700",title:"Dr.",name:"Abbass A.",middleName:null,surname:"Hashim",slug:"abbass-a.-hashim",fullName:"Abbass A. Hashim",position:null,profilePictureURL:"https://mts.intechopen.com/storage/users/6700/images/1864_n.jpg",biography:"Currently I am carrying out research in several areas of interest, mainly covering work on chemical and bio-sensors, semiconductor thin film device fabrication and characterisation.\nAt the moment I have very strong interest in radiation environmental pollution and bacteriology treatment. The teams of researchers are working very hard to bring novel results in this field. I am also a member of the team in charge for the supervision of Ph.D. students in the fields of development of silicon based planar waveguide sensor devices, study of inelastic electron tunnelling in planar tunnelling nanostructures for sensing applications and development of organotellurium(IV) compounds for semiconductor applications. I am a specialist in data analysis techniques and nanosurface structure. I have served as the editor for many books, been a member of the editorial board in science journals, have published many papers and hold many patents.",institutionString:null,institution:{name:"Sheffield Hallam University",country:{name:"United Kingdom"}}},{id:"54525",title:"Prof.",name:"Abdul Latif",middleName:null,surname:"Ahmad",slug:"abdul-latif-ahmad",fullName:"Abdul Latif Ahmad",position:null,profilePictureURL:"//cdnintech.com/web/frontend/www/assets/author.svg",biography:null,institutionString:null,institution:null},{id:"20567",title:"Prof.",name:"Ado",middleName:null,surname:"Jorio",slug:"ado-jorio",fullName:"Ado Jorio",position:null,profilePictureURL:"//cdnintech.com/web/frontend/www/assets/author.svg",biography:null,institutionString:null,institution:{name:"Universidade Federal de Minas Gerais",country:{name:"Brazil"}}},{id:"47940",title:"Dr.",name:"Alberto",middleName:null,surname:"Mantovani",slug:"alberto-mantovani",fullName:"Alberto Mantovani",position:null,profilePictureURL:"//cdnintech.com/web/frontend/www/assets/author.svg",biography:null,institutionString:null,institution:null},{id:"12392",title:"Mr.",name:"Alex",middleName:null,surname:"Lazinica",slug:"alex-lazinica",fullName:"Alex Lazinica",position:null,profilePictureURL:"https://mts.intechopen.com/storage/users/12392/images/7282_n.png",biography:"Alex Lazinica is the founder and CEO of IntechOpen. After obtaining a Master's degree in Mechanical Engineering, he continued his PhD studies in Robotics at the Vienna University of Technology. Here he worked as a robotic researcher with the university's Intelligent Manufacturing Systems Group as well as a guest researcher at various European universities, including the Swiss Federal Institute of Technology Lausanne (EPFL). During this time he published more than 20 scientific papers, gave presentations, served as a reviewer for major robotic journals and conferences and most importantly he co-founded and built the International Journal of Advanced Robotic Systems- world's first Open Access journal in the field of robotics. Starting this journal was a pivotal point in his career, since it was a pathway to founding IntechOpen - Open Access publisher focused on addressing academic researchers needs. Alex is a personification of IntechOpen key values being trusted, open and entrepreneurial. Today his focus is on defining the growth and development strategy for the company.",institutionString:null,institution:{name:"TU Wien",country:{name:"Austria"}}},{id:"19816",title:"Prof.",name:"Alexander",middleName:null,surname:"Kokorin",slug:"alexander-kokorin",fullName:"Alexander Kokorin",position:null,profilePictureURL:"https://mts.intechopen.com/storage/users/19816/images/1607_n.jpg",biography:"Alexander I. Kokorin: born: 1947, Moscow; DSc., PhD; Principal Research Fellow (Research Professor) of Department of Kinetics and Catalysis, N. Semenov Institute of Chemical Physics, Russian Academy of Sciences, Moscow.\r\nArea of research interests: physical chemistry of complex-organized molecular and nanosized systems, including polymer-metal complexes; the surface of doped oxide semiconductors. He is an expert in structural, absorptive, catalytic and photocatalytic properties, in structural organization and dynamic features of ionic liquids, in magnetic interactions between paramagnetic centers. The author or co-author of 3 books, over 200 articles and reviews in scientific journals and books. He is an actual member of the International EPR/ESR Society, European Society on Quantum Solar Energy Conversion, Moscow House of Scientists, of the Board of Moscow Physical Society.",institutionString:null,institution:{name:"Semenov Institute of Chemical Physics",country:{name:"Russia"}}},{id:"62389",title:"PhD.",name:"Ali Demir",middleName:null,surname:"Sezer",slug:"ali-demir-sezer",fullName:"Ali Demir Sezer",position:null,profilePictureURL:"https://mts.intechopen.com/storage/users/62389/images/3413_n.jpg",biography:"Dr. Ali Demir Sezer has a Ph.D. from Pharmaceutical Biotechnology at the Faculty of Pharmacy, University of Marmara (Turkey). He is the member of many Pharmaceutical Associations and acts as a reviewer of scientific journals and European projects under different research areas such as: drug delivery systems, nanotechnology and pharmaceutical biotechnology. Dr. Sezer is the author of many scientific publications in peer-reviewed journals and poster communications. Focus of his research activity is drug delivery, physico-chemical characterization and biological evaluation of biopolymers micro and nanoparticles as modified drug delivery system, and colloidal drug carriers (liposomes, nanoparticles etc.).",institutionString:null,institution:{name:"Marmara University",country:{name:"Turkey"}}},{id:"61051",title:"Prof.",name:"Andrea",middleName:null,surname:"Natale",slug:"andrea-natale",fullName:"Andrea Natale",position:null,profilePictureURL:"//cdnintech.com/web/frontend/www/assets/author.svg",biography:null,institutionString:null,institution:null},{id:"100762",title:"Prof.",name:"Andrea",middleName:null,surname:"Natale",slug:"andrea-natale",fullName:"Andrea Natale",position:null,profilePictureURL:"//cdnintech.com/web/frontend/www/assets/author.svg",biography:null,institutionString:null,institution:{name:"St David's Medical Center",country:{name:"United States of America"}}},{id:"107416",title:"Dr.",name:"Andrea",middleName:null,surname:"Natale",slug:"andrea-natale",fullName:"Andrea Natale",position:null,profilePictureURL:"//cdnintech.com/web/frontend/www/assets/author.svg",biography:null,institutionString:null,institution:{name:"Texas Cardiac Arrhythmia",country:{name:"United States of America"}}},{id:"64434",title:"Dr.",name:"Angkoon",middleName:null,surname:"Phinyomark",slug:"angkoon-phinyomark",fullName:"Angkoon Phinyomark",position:null,profilePictureURL:"https://mts.intechopen.com/storage/users/64434/images/2619_n.jpg",biography:"My name is Angkoon Phinyomark. I received a B.Eng. degree in Computer Engineering with First Class Honors in 2008 from Prince of Songkla University, Songkhla, Thailand, where I received a Ph.D. degree in Electrical Engineering. My research interests are primarily in the area of biomedical signal processing and classification notably EMG (electromyography signal), EOG (electrooculography signal), and EEG (electroencephalography signal), image analysis notably breast cancer analysis and optical coherence tomography, and rehabilitation engineering. I became a student member of IEEE in 2008. During October 2011-March 2012, I had worked at School of Computer Science and Electronic Engineering, University of Essex, Colchester, Essex, United Kingdom. In addition, during a B.Eng. I had been a visiting research student at Faculty of Computer Science, University of Murcia, Murcia, Spain for three months.\n\nI have published over 40 papers during 5 years in refereed journals, books, and conference proceedings in the areas of electro-physiological signals processing and classification, notably EMG and EOG signals, fractal analysis, wavelet analysis, texture analysis, feature extraction and machine learning algorithms, and assistive and rehabilitative devices. I have several computer programming language certificates, i.e. Sun Certified Programmer for the Java 2 Platform 1.4 (SCJP), Microsoft Certified Professional Developer, Web Developer (MCPD), Microsoft Certified Technology Specialist, .NET Framework 2.0 Web (MCTS). I am a Reviewer for several refereed journals and international conferences, such as IEEE Transactions on Biomedical Engineering, IEEE Transactions on Industrial Electronics, Optic Letters, Measurement Science Review, and also a member of the International Advisory Committee for 2012 IEEE Business Engineering and Industrial Applications and 2012 IEEE Symposium on Business, Engineering and Industrial Applications.",institutionString:null,institution:{name:"Joseph Fourier University",country:{name:"France"}}},{id:"55578",title:"Dr.",name:"Antonio",middleName:null,surname:"Jurado-Navas",slug:"antonio-jurado-navas",fullName:"Antonio Jurado-Navas",position:null,profilePictureURL:"https://mts.intechopen.com/storage/users/55578/images/4574_n.png",biography:"Antonio Jurado-Navas received the M.S. degree (2002) and the Ph.D. degree (2009) in Telecommunication Engineering, both from the University of Málaga (Spain). He first worked as a consultant at Vodafone-Spain. From 2004 to 2011, he was a Research Assistant with the Communications Engineering Department at the University of Málaga. In 2011, he became an Assistant Professor in the same department. From 2012 to 2015, he was with Ericsson Spain, where he was working on geo-location\ntools for third generation mobile networks. Since 2015, he is a Marie-Curie fellow at the Denmark Technical University. His current research interests include the areas of mobile communication systems and channel modeling in addition to atmospheric optical communications, adaptive optics and statistics",institutionString:null,institution:{name:"University of Malaga",country:{name:"Spain"}}}],filtersByRegion:[{group:"region",caption:"North America",value:1,count:5681},{group:"region",caption:"Middle and South America",value:2,count:5161},{group:"region",caption:"Africa",value:3,count:1683},{group:"region",caption:"Asia",value:4,count:10200},{group:"region",caption:"Australia and Oceania",value:5,count:886},{group:"region",caption:"Europe",value:6,count:15610}],offset:12,limit:12,total:117096},chapterEmbeded:{data:{}},editorApplication:{success:null,errors:{}},ofsBooks:{filterParams:{sort:"dateEndThirdStepPublish"},books:[{type:"book",id:"10231",title:"Proton Therapy",subtitle:null,isOpenForSubmission:!0,hash:"f4a9009287953c8d1d89f0fa9b7597b0",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10231.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10645",title:"TEST Luka EV",subtitle:null,isOpenForSubmission:!0,hash:"34c7613d332b05758ea87b460199db54",slug:null,bookSignature:"",coverURL:"//cdnintech.com/web/frontend/www/assets/cover.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10646",title:"Rozmari - Test Book - Luka 13102020",subtitle:null,isOpenForSubmission:!0,hash:"b96ff714b24bc695b8dceba914430b85",slug:null,bookSignature:"",coverURL:"//cdnintech.com/web/frontend/www/assets/cover.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10651",title:"Machine Learning",subtitle:null,isOpenForSubmission:!0,hash:"5806b4efae3bd91c3f56e64e0442df35",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10651.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10652",title:"Visual Object Tracking",subtitle:null,isOpenForSubmission:!0,hash:"96f3ee634a7ba49fa195e50475412af4",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10652.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10653",title:"Optimization Algorithms",subtitle:null,isOpenForSubmission:!0,hash:"753812dbb9a6f6b57645431063114f6c",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10653.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10655",title:"Motion Planning",subtitle:null,isOpenForSubmission:!0,hash:"809b5e290cf2dade9e7e0a5ae0ef3df0",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10655.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10657",title:"Service Robots",subtitle:null,isOpenForSubmission:!0,hash:"5f81b9eea6eb3f9af984031b7af35588",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10657.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10660",title:"Heritage",subtitle:null,isOpenForSubmission:!0,hash:"14096773aa1e3635ec6ceec6dd5b47a4",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10660.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10662",title:"Pedagogy",subtitle:null,isOpenForSubmission:!0,hash:"c858e1c6fb878d3b895acbacec624576",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10662.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10673",title:"The Psychology of Trust",subtitle:null,isOpenForSubmission:!0,hash:"1f6cac41fd145f718ac0866264499cc8",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10673.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10675",title:"Hydrostatics",subtitle:null,isOpenForSubmission:!0,hash:"c86c2fa9f835d4ad5e7efd8b01921866",slug:null,bookSignature:"",coverURL:"https://cdn.intechopen.com/books/images_new/10675.jpg",editedByType:null,editors:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}}],filtersByTopic:[{group:"topic",caption:"Agricultural and Biological Sciences",value:5,count:9},{group:"topic",caption:"Biochemistry, Genetics and Molecular Biology",value:6,count:18},{group:"topic",caption:"Business, Management and Economics",value:7,count:2},{group:"topic",caption:"Chemistry",value:8,count:7},{group:"topic",caption:"Computer and Information Science",value:9,count:10},{group:"topic",caption:"Earth and Planetary Sciences",value:10,count:5},{group:"topic",caption:"Engineering",value:11,count:14},{group:"topic",caption:"Environmental Sciences",value:12,count:2},{group:"topic",caption:"Immunology and Microbiology",value:13,count:5},{group:"topic",caption:"Materials Science",value:14,count:4},{group:"topic",caption:"Mathematics",value:15,count:1},{group:"topic",caption:"Medicine",value:16,count:60},{group:"topic",caption:"Nanotechnology and Nanomaterials",value:17,count:1},{group:"topic",caption:"Neuroscience",value:18,count:1},{group:"topic",caption:"Pharmacology, Toxicology and Pharmaceutical Science",value:19,count:6},{group:"topic",caption:"Physics",value:20,count:2},{group:"topic",caption:"Psychology",value:21,count:3},{group:"topic",caption:"Robotics",value:22,count:1},{group:"topic",caption:"Social Sciences",value:23,count:3},{group:"topic",caption:"Technology",value:24,count:1},{group:"topic",caption:"Veterinary Medicine and Science",value:25,count:2}],offset:12,limit:12,total:312},popularBooks:{featuredBooks:[{type:"book",id:"9208",title:"Welding",subtitle:"Modern Topics",isOpenForSubmission:!1,hash:"7d6be076ccf3a3f8bd2ca52d86d4506b",slug:"welding-modern-topics",bookSignature:"Sadek Crisóstomo Absi Alfaro, Wojciech Borek and Błażej Tomiczek",coverURL:"https://cdn.intechopen.com/books/images_new/9208.jpg",editors:[{id:"65292",title:"Prof.",name:"Sadek Crisostomo Absi",middleName:"C. Absi",surname:"Alfaro",slug:"sadek-crisostomo-absi-alfaro",fullName:"Sadek Crisostomo Absi Alfaro"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9139",title:"Topics in Primary Care Medicine",subtitle:null,isOpenForSubmission:!1,hash:"ea774a4d4c1179da92a782e0ae9cde92",slug:"topics-in-primary-care-medicine",bookSignature:"Thomas F. Heston",coverURL:"https://cdn.intechopen.com/books/images_new/9139.jpg",editors:[{id:"217926",title:"Dr.",name:"Thomas F.",middleName:null,surname:"Heston",slug:"thomas-f.-heston",fullName:"Thomas F. Heston"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"8697",title:"Virtual Reality and Its Application in Education",subtitle:null,isOpenForSubmission:!1,hash:"ee01b5e387ba0062c6b0d1e9227bda05",slug:"virtual-reality-and-its-application-in-education",bookSignature:"Dragan Cvetković",coverURL:"https://cdn.intechopen.com/books/images_new/8697.jpg",editors:[{id:"101330",title:"Dr.",name:"Dragan",middleName:"Mladen",surname:"Cvetković",slug:"dragan-cvetkovic",fullName:"Dragan Cvetković"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9785",title:"Endometriosis",subtitle:null,isOpenForSubmission:!1,hash:"f457ca61f29cf7e8bc191732c50bb0ce",slug:"endometriosis",bookSignature:"Courtney Marsh",coverURL:"https://cdn.intechopen.com/books/images_new/9785.jpg",editors:[{id:"255491",title:"Dr.",name:"Courtney",middleName:null,surname:"Marsh",slug:"courtney-marsh",fullName:"Courtney Marsh"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9343",title:"Trace Metals in the Environment",subtitle:"New Approaches and Recent Advances",isOpenForSubmission:!1,hash:"ae07e345bc2ce1ebbda9f70c5cd12141",slug:"trace-metals-in-the-environment-new-approaches-and-recent-advances",bookSignature:"Mario Alfonso Murillo-Tovar, Hugo Saldarriaga-Noreña and Agnieszka Saeid",coverURL:"https://cdn.intechopen.com/books/images_new/9343.jpg",editors:[{id:"255959",title:"Dr.",name:"Mario Alfonso",middleName:null,surname:"Murillo-Tovar",slug:"mario-alfonso-murillo-tovar",fullName:"Mario Alfonso Murillo-Tovar"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"7831",title:"Sustainability in Urban Planning and Design",subtitle:null,isOpenForSubmission:!1,hash:"c924420492c8c2c9751e178d025f4066",slug:"sustainability-in-urban-planning-and-design",bookSignature:"Amjad Almusaed, Asaad Almssad and Linh Truong - Hong",coverURL:"https://cdn.intechopen.com/books/images_new/7831.jpg",editors:[{id:"110471",title:"Dr.",name:"Amjad",middleName:"Zaki",surname:"Almusaed",slug:"amjad-almusaed",fullName:"Amjad Almusaed"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"8468",title:"Sheep Farming",subtitle:"An Approach to Feed, Growth and Sanity",isOpenForSubmission:!1,hash:"838f08594850bc04aa14ec873ed1b96f",slug:"sheep-farming-an-approach-to-feed-growth-and-sanity",bookSignature:"António Monteiro",coverURL:"https://cdn.intechopen.com/books/images_new/8468.jpg",editors:[{id:"190314",title:"Prof.",name:"António",middleName:"Cardoso",surname:"Monteiro",slug:"antonio-monteiro",fullName:"António Monteiro"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"8816",title:"Financial Crises",subtitle:"A Selection of Readings",isOpenForSubmission:!1,hash:"6f2f49fb903656e4e54280c79fabd10c",slug:"financial-crises-a-selection-of-readings",bookSignature:"Stelios Markoulis",coverURL:"https://cdn.intechopen.com/books/images_new/8816.jpg",editors:[{id:"237863",title:"Dr.",name:"Stelios",middleName:null,surname:"Markoulis",slug:"stelios-markoulis",fullName:"Stelios Markoulis"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9376",title:"Contemporary Developments and Perspectives in International Health Security",subtitle:"Volume 1",isOpenForSubmission:!1,hash:"b9a00b84cd04aae458fb1d6c65795601",slug:"contemporary-developments-and-perspectives-in-international-health-security-volume-1",bookSignature:"Stanislaw P. Stawicki, Michael S. Firstenberg, Sagar C. Galwankar, Ricardo Izurieta and Thomas Papadimos",coverURL:"https://cdn.intechopen.com/books/images_new/9376.jpg",editors:[{id:"181694",title:"Dr.",name:"Stanislaw P.",middleName:null,surname:"Stawicki",slug:"stanislaw-p.-stawicki",fullName:"Stanislaw P. Stawicki"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"7769",title:"Medical Isotopes",subtitle:null,isOpenForSubmission:!1,hash:"f8d3c5a6c9a42398e56b4e82264753f7",slug:"medical-isotopes",bookSignature:"Syed Ali Raza Naqvi and Muhammad Babar Imrani",coverURL:"https://cdn.intechopen.com/books/images_new/7769.jpg",editors:[{id:"259190",title:"Dr.",name:"Syed Ali Raza",middleName:null,surname:"Naqvi",slug:"syed-ali-raza-naqvi",fullName:"Syed Ali Raza Naqvi"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9279",title:"Concepts, Applications and Emerging Opportunities in Industrial Engineering",subtitle:null,isOpenForSubmission:!1,hash:"9bfa87f9b627a5468b7c1e30b0eea07a",slug:"concepts-applications-and-emerging-opportunities-in-industrial-engineering",bookSignature:"Gary Moynihan",coverURL:"https://cdn.intechopen.com/books/images_new/9279.jpg",editors:[{id:"16974",title:"Dr.",name:"Gary",middleName:null,surname:"Moynihan",slug:"gary-moynihan",fullName:"Gary Moynihan"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"7807",title:"A Closer Look at Organizational Culture in Action",subtitle:null,isOpenForSubmission:!1,hash:"05c608b9271cc2bc711f4b28748b247b",slug:"a-closer-look-at-organizational-culture-in-action",bookSignature:"Süleyman Davut Göker",coverURL:"https://cdn.intechopen.com/books/images_new/7807.jpg",editors:[{id:"190035",title:"Associate Prof.",name:"Süleyman Davut",middleName:null,surname:"Göker",slug:"suleyman-davut-goker",fullName:"Süleyman Davut Göker"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}}],offset:12,limit:12,total:5128},hotBookTopics:{hotBooks:[],offset:0,limit:12,total:null},publish:{},publishingProposal:{success:null,errors:{}},books:{featuredBooks:[{type:"book",id:"9208",title:"Welding",subtitle:"Modern Topics",isOpenForSubmission:!1,hash:"7d6be076ccf3a3f8bd2ca52d86d4506b",slug:"welding-modern-topics",bookSignature:"Sadek Crisóstomo Absi Alfaro, Wojciech Borek and Błażej Tomiczek",coverURL:"https://cdn.intechopen.com/books/images_new/9208.jpg",editors:[{id:"65292",title:"Prof.",name:"Sadek Crisostomo Absi",middleName:"C. Absi",surname:"Alfaro",slug:"sadek-crisostomo-absi-alfaro",fullName:"Sadek Crisostomo Absi Alfaro"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9139",title:"Topics in Primary Care Medicine",subtitle:null,isOpenForSubmission:!1,hash:"ea774a4d4c1179da92a782e0ae9cde92",slug:"topics-in-primary-care-medicine",bookSignature:"Thomas F. Heston",coverURL:"https://cdn.intechopen.com/books/images_new/9139.jpg",editors:[{id:"217926",title:"Dr.",name:"Thomas F.",middleName:null,surname:"Heston",slug:"thomas-f.-heston",fullName:"Thomas F. Heston"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"8697",title:"Virtual Reality and Its Application in Education",subtitle:null,isOpenForSubmission:!1,hash:"ee01b5e387ba0062c6b0d1e9227bda05",slug:"virtual-reality-and-its-application-in-education",bookSignature:"Dragan Cvetković",coverURL:"https://cdn.intechopen.com/books/images_new/8697.jpg",editors:[{id:"101330",title:"Dr.",name:"Dragan",middleName:"Mladen",surname:"Cvetković",slug:"dragan-cvetkovic",fullName:"Dragan Cvetković"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9785",title:"Endometriosis",subtitle:null,isOpenForSubmission:!1,hash:"f457ca61f29cf7e8bc191732c50bb0ce",slug:"endometriosis",bookSignature:"Courtney Marsh",coverURL:"https://cdn.intechopen.com/books/images_new/9785.jpg",editors:[{id:"255491",title:"Dr.",name:"Courtney",middleName:null,surname:"Marsh",slug:"courtney-marsh",fullName:"Courtney Marsh"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9343",title:"Trace Metals in the Environment",subtitle:"New Approaches and Recent Advances",isOpenForSubmission:!1,hash:"ae07e345bc2ce1ebbda9f70c5cd12141",slug:"trace-metals-in-the-environment-new-approaches-and-recent-advances",bookSignature:"Mario Alfonso Murillo-Tovar, Hugo Saldarriaga-Noreña and Agnieszka Saeid",coverURL:"https://cdn.intechopen.com/books/images_new/9343.jpg",editors:[{id:"255959",title:"Dr.",name:"Mario Alfonso",middleName:null,surname:"Murillo-Tovar",slug:"mario-alfonso-murillo-tovar",fullName:"Mario Alfonso Murillo-Tovar"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"8468",title:"Sheep Farming",subtitle:"An Approach to Feed, Growth and Sanity",isOpenForSubmission:!1,hash:"838f08594850bc04aa14ec873ed1b96f",slug:"sheep-farming-an-approach-to-feed-growth-and-sanity",bookSignature:"António Monteiro",coverURL:"https://cdn.intechopen.com/books/images_new/8468.jpg",editors:[{id:"190314",title:"Prof.",name:"António",middleName:"Cardoso",surname:"Monteiro",slug:"antonio-monteiro",fullName:"António Monteiro"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"8816",title:"Financial Crises",subtitle:"A Selection of Readings",isOpenForSubmission:!1,hash:"6f2f49fb903656e4e54280c79fabd10c",slug:"financial-crises-a-selection-of-readings",bookSignature:"Stelios Markoulis",coverURL:"https://cdn.intechopen.com/books/images_new/8816.jpg",editors:[{id:"237863",title:"Dr.",name:"Stelios",middleName:null,surname:"Markoulis",slug:"stelios-markoulis",fullName:"Stelios Markoulis"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"7831",title:"Sustainability in Urban Planning and Design",subtitle:null,isOpenForSubmission:!1,hash:"c924420492c8c2c9751e178d025f4066",slug:"sustainability-in-urban-planning-and-design",bookSignature:"Amjad Almusaed, Asaad Almssad and Linh Truong - Hong",coverURL:"https://cdn.intechopen.com/books/images_new/7831.jpg",editors:[{id:"110471",title:"Dr.",name:"Amjad",middleName:"Zaki",surname:"Almusaed",slug:"amjad-almusaed",fullName:"Amjad Almusaed"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"9376",title:"Contemporary Developments and Perspectives in International Health Security",subtitle:"Volume 1",isOpenForSubmission:!1,hash:"b9a00b84cd04aae458fb1d6c65795601",slug:"contemporary-developments-and-perspectives-in-international-health-security-volume-1",bookSignature:"Stanislaw P. Stawicki, Michael S. Firstenberg, Sagar C. Galwankar, Ricardo Izurieta and Thomas Papadimos",coverURL:"https://cdn.intechopen.com/books/images_new/9376.jpg",editors:[{id:"181694",title:"Dr.",name:"Stanislaw P.",middleName:null,surname:"Stawicki",slug:"stanislaw-p.-stawicki",fullName:"Stanislaw P. Stawicki"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}},{type:"book",id:"7769",title:"Medical Isotopes",subtitle:null,isOpenForSubmission:!1,hash:"f8d3c5a6c9a42398e56b4e82264753f7",slug:"medical-isotopes",bookSignature:"Syed Ali Raza Naqvi and Muhammad Babar Imrani",coverURL:"https://cdn.intechopen.com/books/images_new/7769.jpg",editors:[{id:"259190",title:"Dr.",name:"Syed Ali Raza",middleName:null,surname:"Naqvi",slug:"syed-ali-raza-naqvi",fullName:"Syed Ali Raza Naqvi"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}}],latestBooks:[{type:"book",id:"8468",title:"Sheep Farming",subtitle:"An Approach to Feed, Growth and Health",isOpenForSubmission:!1,hash:"838f08594850bc04aa14ec873ed1b96f",slug:"sheep-farming-an-approach-to-feed-growth-and-health",bookSignature:"António Monteiro",coverURL:"https://cdn.intechopen.com/books/images_new/8468.jpg",editedByType:"Edited by",editors:[{id:"190314",title:"Prof.",name:"António",middleName:"Cardoso",surname:"Monteiro",slug:"antonio-monteiro",fullName:"António Monteiro"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"9523",title:"Oral and Maxillofacial Surgery",subtitle:null,isOpenForSubmission:!1,hash:"5eb6ec2db961a6c8965d11180a58d5c1",slug:"oral-and-maxillofacial-surgery",bookSignature:"Gokul Sridharan",coverURL:"https://cdn.intechopen.com/books/images_new/9523.jpg",editedByType:"Edited by",editors:[{id:"82453",title:"Dr.",name:"Gokul",middleName:null,surname:"Sridharan",slug:"gokul-sridharan",fullName:"Gokul Sridharan"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"9785",title:"Endometriosis",subtitle:null,isOpenForSubmission:!1,hash:"f457ca61f29cf7e8bc191732c50bb0ce",slug:"endometriosis",bookSignature:"Courtney Marsh",coverURL:"https://cdn.intechopen.com/books/images_new/9785.jpg",editedByType:"Edited by",editors:[{id:"255491",title:"Dr.",name:"Courtney",middleName:null,surname:"Marsh",slug:"courtney-marsh",fullName:"Courtney Marsh"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"9018",title:"Some RNA Viruses",subtitle:null,isOpenForSubmission:!1,hash:"a5cae846dbe3692495fc4add2f60fd84",slug:"some-rna-viruses",bookSignature:"Yogendra Shah and Eltayb Abuelzein",coverURL:"https://cdn.intechopen.com/books/images_new/9018.jpg",editedByType:"Edited by",editors:[{id:"278914",title:"Ph.D.",name:"Yogendra",middleName:null,surname:"Shah",slug:"yogendra-shah",fullName:"Yogendra Shah"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"8816",title:"Financial Crises",subtitle:"A Selection of Readings",isOpenForSubmission:!1,hash:"6f2f49fb903656e4e54280c79fabd10c",slug:"financial-crises-a-selection-of-readings",bookSignature:"Stelios Markoulis",coverURL:"https://cdn.intechopen.com/books/images_new/8816.jpg",editedByType:"Edited by",editors:[{id:"237863",title:"Dr.",name:"Stelios",middleName:null,surname:"Markoulis",slug:"stelios-markoulis",fullName:"Stelios Markoulis"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"9585",title:"Advances in Complex Valvular Disease",subtitle:null,isOpenForSubmission:!1,hash:"ef64f11e211621ecfe69c46e60e7ca3d",slug:"advances-in-complex-valvular-disease",bookSignature:"Michael S. Firstenberg and Imran Khan",coverURL:"https://cdn.intechopen.com/books/images_new/9585.jpg",editedByType:"Edited by",editors:[{id:"64343",title:null,name:"Michael S.",middleName:"S",surname:"Firstenberg",slug:"michael-s.-firstenberg",fullName:"Michael S. Firstenberg"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"10150",title:"Smart Manufacturing",subtitle:"When Artificial Intelligence Meets the Internet of Things",isOpenForSubmission:!1,hash:"87004a19de13702d042f8ff96d454698",slug:"smart-manufacturing-when-artificial-intelligence-meets-the-internet-of-things",bookSignature:"Tan Yen Kheng",coverURL:"https://cdn.intechopen.com/books/images_new/10150.jpg",editedByType:"Edited by",editors:[{id:"78857",title:"Dr.",name:"Tan Yen",middleName:null,surname:"Kheng",slug:"tan-yen-kheng",fullName:"Tan Yen Kheng"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"9386",title:"Direct Numerical Simulations",subtitle:"An Introduction and Applications",isOpenForSubmission:!1,hash:"158a3a0fdba295d21ff23326f5a072d5",slug:"direct-numerical-simulations-an-introduction-and-applications",bookSignature:"Srinivasa Rao",coverURL:"https://cdn.intechopen.com/books/images_new/9386.jpg",editedByType:"Edited by",editors:[{id:"6897",title:"Dr.",name:"Srinivasa",middleName:"P",surname:"Rao",slug:"srinivasa-rao",fullName:"Srinivasa Rao"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"9139",title:"Topics in Primary Care Medicine",subtitle:null,isOpenForSubmission:!1,hash:"ea774a4d4c1179da92a782e0ae9cde92",slug:"topics-in-primary-care-medicine",bookSignature:"Thomas F. Heston",coverURL:"https://cdn.intechopen.com/books/images_new/9139.jpg",editedByType:"Edited by",editors:[{id:"217926",title:"Dr.",name:"Thomas F.",middleName:null,surname:"Heston",slug:"thomas-f.-heston",fullName:"Thomas F. Heston"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"9208",title:"Welding",subtitle:"Modern Topics",isOpenForSubmission:!1,hash:"7d6be076ccf3a3f8bd2ca52d86d4506b",slug:"welding-modern-topics",bookSignature:"Sadek Crisóstomo Absi Alfaro, Wojciech Borek and Błażej Tomiczek",coverURL:"https://cdn.intechopen.com/books/images_new/9208.jpg",editedByType:"Edited by",editors:[{id:"65292",title:"Prof.",name:"Sadek Crisostomo Absi",middleName:"C. Absi",surname:"Alfaro",slug:"sadek-crisostomo-absi-alfaro",fullName:"Sadek Crisostomo Absi Alfaro"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}}]},subject:{topic:{id:"90",title:"Computer Science and Engineering",slug:"computer-science-and-engineering",parent:{title:"Computer and Information Science",slug:"computer-and-information-science"},numberOfBooks:33,numberOfAuthorsAndEditors:771,numberOfWosCitations:720,numberOfCrossrefCitations:636,numberOfDimensionsCitations:1176,videoUrl:null,fallbackUrl:null,description:null},booksByTopicFilter:{topicSlug:"computer-science-and-engineering",sort:"-publishedDate",limit:12,offset:0},booksByTopicCollection:[{type:"book",id:"8423",title:"Security and Privacy From a Legal, Ethical, and Technical Perspective",subtitle:null,isOpenForSubmission:!1,hash:"dc4f0b68a2f903e7bf1ec7fbe042dbf2",slug:"security-and-privacy-from-a-legal-ethical-and-technical-perspective",bookSignature:"Christos Kalloniatis and Carlos Travieso-Gonzalez",coverURL:"https://cdn.intechopen.com/books/images_new/8423.jpg",editedByType:"Edited by",editors:[{id:"219671",title:"Associate Prof.",name:"Christos",middleName:null,surname:"Kalloniatis",slug:"christos-kalloniatis",fullName:"Christos Kalloniatis"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"8511",title:"Cyberspace",subtitle:null,isOpenForSubmission:!1,hash:"8c1cdeb133dbe6cc1151367061c1bba6",slug:"cyberspace",bookSignature:"Evon Abu-Taieh, Abdelkrim El Mouatasim and Issam H. Al Hadid",coverURL:"https://cdn.intechopen.com/books/images_new/8511.jpg",editedByType:"Edited by",editors:[{id:"223522",title:"Dr.",name:"Evon",middleName:"M.O.",surname:"Abu-Taieh",slug:"evon-abu-taieh",fullName:"Evon Abu-Taieh"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"6958",title:"High Performance Parallel Computing",subtitle:null,isOpenForSubmission:!1,hash:"dd811128360e48c520a91871f0279659",slug:"high-performance-parallel-computing",bookSignature:"Satyadhyan Chickerur",coverURL:"https://cdn.intechopen.com/books/images_new/6958.jpg",editedByType:"Edited by",editors:[{id:"239076",title:"Dr.",name:"Satyadhyan",middleName:null,surname:"Chickerur",slug:"satyadhyan-chickerur",fullName:"Satyadhyan Chickerur"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"6715",title:"Petri Nets in Science and Engineering",subtitle:null,isOpenForSubmission:!1,hash:"b0b98cd043ed2dc582d8365630929d33",slug:"petri-nets-in-science-and-engineering",bookSignature:"Raul Campos-Rodriguez and Mildreth Alcaraz-Mejia",coverURL:"https://cdn.intechopen.com/books/images_new/6715.jpg",editedByType:"Edited by",editors:[{id:"178524",title:"Dr.",name:"Raul",middleName:null,surname:"Campos-Rodriguez",slug:"raul-campos-rodriguez",fullName:"Raul Campos-Rodriguez"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"5368",title:"Radio Frequency Identification",subtitle:null,isOpenForSubmission:!1,hash:"c86dd0c6a48afce125a9f8f2363fd4b8",slug:"radio-frequency-identification",bookSignature:"Paulo Cesar Crepaldi and Tales Cleber Pimenta",coverURL:"https://cdn.intechopen.com/books/images_new/5368.jpg",editedByType:"Edited by",editors:[{id:"38288",title:"Prof.",name:"Paulo",middleName:"Cesar",surname:"Crepaldi",slug:"paulo-crepaldi",fullName:"Paulo Crepaldi"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"6038",title:"Wireless Sensor Networks",subtitle:"Insights and Innovations",isOpenForSubmission:!1,hash:"e63cb7f71bc1fed54902b371cbe21a2a",slug:"wireless-sensor-networks-insights-and-innovations",bookSignature:"Philip Sallis",coverURL:"https://cdn.intechopen.com/books/images_new/6038.jpg",editedByType:"Edited by",editors:[{id:"10893",title:"Prof.",name:"Philip John",middleName:null,surname:"Sallis",slug:"philip-john-sallis",fullName:"Philip John Sallis"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"5966",title:"Heuristics and Hyper-Heuristics",subtitle:"Principles and Applications",isOpenForSubmission:!1,hash:"da699185a8b84a430d96d54bc35acdb2",slug:"heuristics-and-hyper-heuristics-principles-and-applications",bookSignature:"Javier Del Ser Lorente",coverURL:"https://cdn.intechopen.com/books/images_new/5966.jpg",editedByType:"Edited by",editors:[{id:"49813",title:"Dr.",name:"Javier",middleName:null,surname:"Del Ser",slug:"javier-del-ser",fullName:"Javier Del Ser"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"5745",title:"Recent Progress in Parallel and Distributed Computing",subtitle:null,isOpenForSubmission:!1,hash:"dba64b23d703d16339860ebf4a13f022",slug:"recent-progress-in-parallel-and-distributed-computing",bookSignature:"Wen-Jyi Hwang",coverURL:"https://cdn.intechopen.com/books/images_new/5745.jpg",editedByType:"Edited by",editors:[{id:"108614",title:"Prof.",name:"Wen-Jyi",middleName:null,surname:"Hwang",slug:"wen-jyi-hwang",fullName:"Wen-Jyi Hwang"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"5707",title:"Computer Simulation",subtitle:null,isOpenForSubmission:!1,hash:"9eec1723d4d4775dc9755db55aa387a6",slug:"computer-simulation",bookSignature:"Dragan Cvetkovic",coverURL:"https://cdn.intechopen.com/books/images_new/5707.jpg",editedByType:"Edited by",editors:[{id:"101330",title:"Dr.",name:"Dragan",middleName:"Mladen",surname:"Cvetković",slug:"dragan-cvetkovic",fullName:"Dragan Cvetković"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"5183",title:"Face Recognition",subtitle:"Semisupervised Classification, Subspace Projection and Evaluation Methods",isOpenForSubmission:!1,hash:"d693acce19fca9cbf40d8f3f759e491d",slug:"face-recognition-semisupervised-classification-subspace-projection-and-evaluation-methods",bookSignature:"S. Ramakrishnan",coverURL:"https://cdn.intechopen.com/books/images_new/5183.jpg",editedByType:"Edited by",editors:[{id:"116136",title:"Dr.",name:"Srinivasan",middleName:null,surname:"Ramakrishnan",slug:"srinivasan-ramakrishnan",fullName:"Srinivasan Ramakrishnan"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"5150",title:"Electronics Cooling",subtitle:null,isOpenForSubmission:!1,hash:"b95856cfcc87ef3cb7d7c7c7bac4010d",slug:"electronics-cooling",bookSignature:"S M Sohel Murshed",coverURL:"https://cdn.intechopen.com/books/images_new/5150.jpg",editedByType:"Edited by",editors:[{id:"24904",title:"Prof.",name:"S. M. Sohel",middleName:null,surname:"Murshed",slug:"s.-m.-sohel-murshed",fullName:"S. M. Sohel Murshed"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}},{type:"book",id:"4655",title:"Applications of Digital Signal Processing through Practical Approach",subtitle:null,isOpenForSubmission:!1,hash:"b20308efd28e8a487949997c8d673fb8",slug:"applications-of-digital-signal-processing-through-practical-approach",bookSignature:"Sudhakar Radhakrishnan",coverURL:"https://cdn.intechopen.com/books/images_new/4655.jpg",editedByType:"Edited by",editors:[{id:"26327",title:"Dr.",name:"Sudhakar",middleName:null,surname:"Radhakrishnan",slug:"sudhakar-radhakrishnan",fullName:"Sudhakar Radhakrishnan"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter",authoredCaption:"Edited by"}}],booksByTopicTotal:33,mostCitedChapters:[{id:"50801",doi:"10.5772/62898",title:"Performance Evaluation of Nanofluids in an Inclined Ribbed Microchannel for Electronic Cooling Applications",slug:"performance-evaluation-of-nanofluids-in-an-inclined-ribbed-microchannel-for-electronic-cooling-appli",totalDownloads:1940,totalCrossrefCites:44,totalDimensionsCites:78,book:{slug:"electronics-cooling",title:"Electronics Cooling",fullTitle:"Electronics Cooling"},signatures:"Mohammad Reza Safaei, Marjan Gooarzi, Omid Ali Akbari, Mostafa\nSafdari Shadloo and Mahidzal Dahari",authors:[{id:"178854",title:"Dr.",name:"Mohammad Reza",middleName:null,surname:"Safaei",slug:"mohammad-reza-safaei",fullName:"Mohammad Reza Safaei"},{id:"179807",title:"Dr.",name:"Mostafa",middleName:null,surname:"Safdari Shadloo",slug:"mostafa-safdari-shadloo",fullName:"Mostafa Safdari Shadloo"},{id:"179809",title:"Dr.",name:"Mahidzal",middleName:null,surname:"Dahari",slug:"mahidzal-dahari",fullName:"Mahidzal Dahari"},{id:"179813",title:"MSc.",name:"Marjan",middleName:null,surname:"Goodarzi",slug:"marjan-goodarzi",fullName:"Marjan Goodarzi"},{id:"185093",title:"MSc.",name:"Omid",middleName:null,surname:"Ali Akbari",slug:"omid-ali-akbari",fullName:"Omid Ali Akbari"}]},{id:"5184",doi:"10.5772/6180",title:"From the Lab to the Real World: Affect Recognition Using Multiple Cues and Modalities",slug:"from_the_lab_to_the_real_world__affect_recognition_using_multiple_cues_and_modalities",totalDownloads:3121,totalCrossrefCites:34,totalDimensionsCites:51,book:{slug:"affective_computing",title:"Affective Computing",fullTitle:"Affective Computing"},signatures:"Hatice Gunes, Massimo Piccardi and Maja Pantic",authors:null},{id:"5197",doi:"10.5772/6167",title:"Generating Facial Expressions with Deep Belief Nets",slug:"generating_facial_expressions_with_deep_belief_nets",totalDownloads:3128,totalCrossrefCites:1,totalDimensionsCites:47,book:{slug:"affective_computing",title:"Affective Computing",fullTitle:"Affective Computing"},signatures:"Joshua M. Susskind, Geoffrey E. Hinton, Javier R. Movellan and Adam K. Anderson",authors:null}],mostDownloadedChaptersLast30Days:[{id:"68505",title:"Research Design and Methodology",slug:"research-design-and-methodology",totalDownloads:15717,totalCrossrefCites:1,totalDimensionsCites:2,book:{slug:"cyberspace",title:"Cyberspace",fullTitle:"Cyberspace"},signatures:"Kassu Jilcha Sileyew",authors:null},{id:"15946",title:"Wake-Up-Word Speech Recognition",slug:"wake-up-word-speech-recognition",totalDownloads:3988,totalCrossrefCites:3,totalDimensionsCites:3,book:{slug:"speech-technologies",title:"Speech Technologies",fullTitle:"Speech Technologies"},signatures:"Veton Kepuska",authors:[{id:"24379",title:"Prof.",name:"Veton",middleName:null,surname:"Kepuska",slug:"veton-kepuska",fullName:"Veton Kepuska"}]},{id:"51031",title:"Face Recognition: Issues, Methods and Alternative Applications",slug:"face-recognition-issues-methods-and-alternative-applications",totalDownloads:10252,totalCrossrefCites:2,totalDimensionsCites:4,book:{slug:"face-recognition-semisupervised-classification-subspace-projection-and-evaluation-methods",title:"Face Recognition",fullTitle:"Face Recognition - Semisupervised Classification, Subspace Projection and Evaluation Methods"},signatures:"Waldemar Wójcik, Konrad Gromaszek and Muhtar Junisbekov",authors:[{id:"24059",title:"Dr.Ing.",name:"Konrad",middleName:null,surname:"Gromaszek",slug:"konrad-gromaszek",fullName:"Konrad Gromaszek"}]},{id:"56541",title:"Routing Protocols for Wireless Sensor Networks (WSNs)",slug:"routing-protocols-for-wireless-sensor-networks-wsns-",totalDownloads:4319,totalCrossrefCites:7,totalDimensionsCites:9,book:{slug:"wireless-sensor-networks-insights-and-innovations",title:"Wireless Sensor Networks",fullTitle:"Wireless Sensor Networks - Insights and Innovations"},signatures:"Noman Shabbir and Syed Rizwan Hassan",authors:[{id:"206600",title:"Mr.",name:"Noman",middleName:null,surname:"Shabbir",slug:"noman-shabbir",fullName:"Noman Shabbir"},{id:"206601",title:"Mr.",name:"Syed Rizwan",middleName:null,surname:"Hassan",slug:"syed-rizwan-hassan",fullName:"Syed Rizwan Hassan"}]},{id:"70973",title:"Social Media, Ethics and the Privacy Paradox",slug:"social-media-ethics-and-the-privacy-paradox",totalDownloads:824,totalCrossrefCites:0,totalDimensionsCites:0,book:{slug:"security-and-privacy-from-a-legal-ethical-and-technical-perspective",title:"Security and Privacy From a Legal, Ethical, and Technical Perspective",fullTitle:"Security and Privacy From a Legal, Ethical, and Technical Perspective"},signatures:"Nadine Barrett-Maitland and Jenice Lynch",authors:[{id:"311821",title:"Ph.D. Student",name:"Nadine",middleName:null,surname:"Barrett-Maitland",slug:"nadine-barrett-maitland",fullName:"Nadine Barrett-Maitland"},{id:"311822",title:"Ms.",name:"Jenice",middleName:null,surname:"Lynch",slug:"jenice-lynch",fullName:"Jenice Lynch"}]},{id:"72542",title:"Machine Learning Applications in Misuse and Anomaly Detection",slug:"machine-learning-applications-in-misuse-and-anomaly-detection",totalDownloads:301,totalCrossrefCites:0,totalDimensionsCites:0,book:{slug:"security-and-privacy-from-a-legal-ethical-and-technical-perspective",title:"Security and Privacy From a Legal, Ethical, and Technical Perspective",fullTitle:"Security and Privacy From a Legal, Ethical, and Technical Perspective"},signatures:"Jaydip Sen and Sidra Mehtab",authors:[{id:"4519",title:"Prof.",name:"Jaydip",middleName:null,surname:"Sen",slug:"jaydip-sen",fullName:"Jaydip Sen"},{id:"320071",title:"Dr.",name:"Sidra",middleName:null,surname:"Mehtab",slug:"sidra-mehtab",fullName:"Sidra Mehtab"}]},{id:"62639",title:"Reliability Evaluation for Mechanical Systems by Petri Nets",slug:"reliability-evaluation-for-mechanical-systems-by-petri-nets",totalDownloads:491,totalCrossrefCites:1,totalDimensionsCites:2,book:{slug:"petri-nets-in-science-and-engineering",title:"Petri Nets in Science and Engineering",fullTitle:"Petri Nets in Science and Engineering"},signatures:"Jianing Wu and Shaoze Yan",authors:[{id:"238979",title:"Dr.",name:"Jianing",middleName:null,surname:"Wu",slug:"jianing-wu",fullName:"Jianing Wu"}]},{id:"50065",title:"Heat Pipes for Computer Cooling Applications",slug:"heat-pipes-for-computer-cooling-applications",totalDownloads:4021,totalCrossrefCites:2,totalDimensionsCites:4,book:{slug:"electronics-cooling",title:"Electronics Cooling",fullTitle:"Electronics Cooling"},signatures:"Mohamed H.A. Elnaggar and Ezzaldeen Edwan",authors:[{id:"178453",title:"Dr.",name:"Mohamed",middleName:null,surname:"Elnaggar",slug:"mohamed-elnaggar",fullName:"Mohamed Elnaggar"},{id:"184278",title:"Dr.",name:"Ezzaldeen",middleName:null,surname:"Edwan",slug:"ezzaldeen-edwan",fullName:"Ezzaldeen Edwan"}]},{id:"50437",title:"Face Recognition: Demystification of Multifarious Aspect in Evaluation Metrics",slug:"face-recognition-demystification-of-multifarious-aspect-in-evaluation-metrics",totalDownloads:2317,totalCrossrefCites:4,totalDimensionsCites:7,book:{slug:"face-recognition-semisupervised-classification-subspace-projection-and-evaluation-methods",title:"Face Recognition",fullTitle:"Face Recognition - Semisupervised Classification, Subspace Projection and Evaluation Methods"},signatures:"Mala Sundaram and Ambika Mani",authors:[{id:"180904",title:"Mrs.",name:"Mala",middleName:null,surname:"Sundaram",slug:"mala-sundaram",fullName:"Mala Sundaram"},{id:"180905",title:"Mrs.",name:"Ambika",middleName:null,surname:"Mani",slug:"ambika-mani",fullName:"Ambika Mani"}]},{id:"52083",title:"A Methodology for Evaluating Security in Commercial RFID Systems",slug:"a-methodology-for-evaluating-security-in-commercial-rfid-systems",totalDownloads:980,totalCrossrefCites:12,totalDimensionsCites:26,book:{slug:"radio-frequency-identification",title:"Radio Frequency Identification",fullTitle:"Radio Frequency Identification"},signatures:"Tiago M. Fernández-Caramés, Paula Fraga-Lamas, Manuel Suárez-\nAlbela and Luis Castedo",authors:[{id:"186818",title:"Dr.",name:"Tiago M.",middleName:null,surname:"Fernández-Caramés",slug:"tiago-m.-fernandez-carames",fullName:"Tiago M. Fernández-Caramés"},{id:"193724",title:"Dr.",name:"Paula",middleName:null,surname:"Fraga-Lamas",slug:"paula-fraga-lamas",fullName:"Paula Fraga-Lamas"},{id:"193725",title:"Mr.",name:"Manuel",middleName:null,surname:"Suárez-Albela",slug:"manuel-suarez-albela",fullName:"Manuel Suárez-Albela"}]}],onlineFirstChaptersFilter:{topicSlug:"computer-science-and-engineering",limit:3,offset:0},onlineFirstChaptersCollection:[],onlineFirstChaptersTotal:0},preDownload:{success:null,errors:{}},aboutIntechopen:{},privacyPolicy:{},peerReviewing:{},howOpenAccessPublishingWithIntechopenWorks:{},sponsorshipBooks:{sponsorshipBooks:[{type:"book",id:"10176",title:"Microgrids and Local Energy Systems",subtitle:null,isOpenForSubmission:!0,hash:"c32b4a5351a88f263074b0d0ca813a9c",slug:null,bookSignature:"Prof. Nick Jenkins",coverURL:"https://cdn.intechopen.com/books/images_new/10176.jpg",editedByType:null,editors:[{id:"55219",title:"Prof.",name:"Nick",middleName:null,surname:"Jenkins",slug:"nick-jenkins",fullName:"Nick Jenkins"}],equalEditorOne:null,equalEditorTwo:null,equalEditorThree:null,productType:{id:"1",chapterContentType:"chapter"}}],offset:8,limit:8,total:1},route:{name:"onlineFirst.detail",path:"/online-first/a-meta-analysis-of-modifications-of-root-system-traits-of-crop-plants-to-potassium-k-deprivation",hash:"",query:{},params:{chapter:"a-meta-analysis-of-modifications-of-root-system-traits-of-crop-plants-to-potassium-k-deprivation"},fullPath:"/online-first/a-meta-analysis-of-modifications-of-root-system-traits-of-crop-plants-to-potassium-k-deprivation",meta:{},from:{name:null,path:"/",hash:"",query:{},params:{},fullPath:"/",meta:{}}}},function(){var e;(e=document.currentScript||document.scripts[document.scripts.length-1]).parentNode.removeChild(e)}()