Open access peer-reviewed chapter

Microbial Community Structure and Metabolic Networks in Polar Glaciers

Written By

Eva Garcia-Lopez, Ana Maria Moreno and Cristina Cid

Submitted: 20 July 2018 Reviewed: 04 February 2019 Published: 20 March 2019

DOI: 10.5772/intechopen.84945

From the Edited Volume

Metagenomics - Basics, Methods and Applications

Edited by Wael N. Hozzein

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Abstract

Polar glaciers are inhabited by numerous microorganisms including representatives of bacteria, archaea, microeukaryotes, and viruses. Low temperature is a main factor when considering polar glaciers as extreme environments. However, desiccation, low nutrients availability, ultraviolet irradiation, and photoreactive chemistry do also significantly influence their challenging life. Glaciers are highly selective and confined habitats, which make them favorable environments for adaptation and speciation. Depending on the glacier area studied, microorganisms establish a vertical food chain, from the surface photosynthesizers in upper illuminated layers to chemoautotrophs and heterotrophs confined to the inner part. These regions are rich not only in biodiversity but also in new mechanisms of adaptation to the environment, since selection acts with a particular intensity. Glaciers are retreating in many areas of the world due to global warming. When glaciers have ultimately withdrawn, microorganisms play a main role, carrying out key processes in the development of soil and facilitating plant colonization. These features make them unique and interesting for the study and protection of the biological heritage. Metagenomics have allowed a deeper understanding of microbial ecology and function of polar glacier microbial communities. In this review, we present a complete analysis of the microbial diversity in these ecosystems and include a thorough overview of the metabolic potentials and biogeochemical cycles in polar glacier habitats.

Keywords

  • polar glacier
  • metagenomics
  • diversity
  • community structure
  • metabolic networks

1. Introduction

Polar glaciers have aroused great interest over the last year, and their study has increased since they are sentinels of climate change. Although both poles are extreme environments (in terms of low temperatures, high UV radiation, lack of light in winter and permanent solar radiation in summer, scarce nutrients, etc.), Arctic and Antarctic glaciers are very different. The North Pole is an ocean surrounded by land, while the South Pole is a continent surrounded by water. This distinction confers them very unique geographical and environmental characteristics.

Metabolically active microbial communities have been identified in both the Arctic [1] and Antarctic glaciers (Figure 1) [2]. These microbial communities include bacteria, archaea, microeukaryotes, and viruses [3].

Figure 1.

Polar maps and localization of the referenced glaciers. (1) Cascade Volcano Arc [4]; (2) Robertson Glacier, Alberta [5]; (3) Western margin of the Greenland ice sheet [6]; (4) southwest part of the Greenland ice sheet [7]; (5) North-Eastern Greenland [8]; (6) Islandic glaciers [11, 12]; (7) Hamiltonbukta, Svalbard [9]; (8) Ny Ålesund, Svalbard [10]; (9) West Antarctic ice sheet [15]; (10) high Antarctic Plateau [13]; (11) Lake Vostok [14] (map source: Google Earth Pro).

Arctic glaciers do not reach such distant latitudes or low temperatures as Antarctic glaciers do. These are some of the reasons why they are being extremely affected by global warming. There are glaciers around the entire Arctic Ocean, but polar glaciers in North America [4, 5], Greenland [6, 7, 8], Svalbard [9, 10], and Iceland [11, 12] (Figure 1) have been the most widely studied from a microbiological point of view. Antarctic glaciers present exceptional environmental conditions. Being in higher latitudes allows the existence of very low temperatures and high rates of solar radiation in summer. Some published reports on glacial and subglacial microbiology refer to very extreme latitudes that reach −75°S in the high Antarctic Plateau [13], −77°S in Lake Vostok [14], and −84°S in the West Antarctic ice sheet [15] (Figure 1).

In the study of glacier microbiology, a variety of techniques have been traditionally used, such as microscopy techniques [16], cell cultures, and isolation of microorganisms [17]. However, the most significant advance has been achieved with the application of metagenomics. This discipline has allowed both the knowledge of the microbial communities’ structure and the comprehension of their metabolic potential.

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2. Microbial community structure through reconstruction of microbial genomes in polar glaciers

Glaciers have recently been considered authentic biomes [18]. It has been observed that microbial community composition depends on the area of the glacier studied [19]. In most of them, three well-defined and interconnected ecosystems can be defined: supraglacial, englacial, and subglacial ecosystems. These ecosystems are different in their solar radiation, water content, nutrient abundance, and redox potential [20]. These factors influence in the abundance and diversity of microbial populations inhabiting glaciers (Figure 2). They also affect the type of functionality and the biogeochemical cycles in these ecosystems.

Figure 2.

Bacterial community structure in polar glacier ecosystems based on 16S and 18S rRNA gene sequences. Pie charts represent relative abundances of bacteria, archaea, and eukarya for three glacier ecosystems: supraglacial, englacial, and subglacial. The data are from [20, 11, 10, 4, 13, 8] for bacteria, from [11, 15, 5, 6, 14] for archaea, and from [19, 7, 12, 14] for eukarya.

2.1 The supraglacial ecosystem

The supraglacial ecosystem is the one which has best been studied. It has been reported that the main habitats in the supraglacial ecosystem are the snowpack, cryoconite holes (vertical cylindrical melt holes in a glacier surface), supraglacial streams, and moraines [20].

2.1.1 The glacial snow

The sunlit and oxygenated supraglacial surface is populated by autotrophic microorganisms such as cyanobacteria, microalgae, and diatoms [21], by chemolithotrophic bacteria, which feed on inorganic sand particles, and by heterotrophic bacteria and microeukaryotes [22] (Figure 2). The main bacterial classes that have been described in this ecosystem are Betaproteobacteria, Actinobacteria, and Bacteroidetes [11, 23]. The genus Polaromonas is one of the most abundant in the supraglacial area of Arctic [9] and Antarctic glaciers [24].

Among microeukaryotes, snow is mainly populated by pigmented algae, which have been observed in Arctic and Antarctic glaciers [25]. They belong to several taxa, mainly Chlamydomonas, Chloromonas, Raphidonema, and Chrysophyceae [11].

Fungi, especially basidiomycetous yeasts and Chytridiomycota, have been reported in glacial snow and ice [26]. It is believed that they act as saprophytes and parasites, yet their diversity and function in this ecosystem are poorly known [25].

Archaea have also been identified in glacial snow and ice, although they have not been found in all the studies that have been carried out. They belong to Nitrososphaerales, which are known as important ammonia oxidizers [11].

2.1.2 Ice surfaces

Under the recently fallen snow, there is a layer of hard ice. This layer arises to the surface in the episodes of melting that occur during the polar summer. The ice surface constitutes a distinct type of supraglacial microhabitat that is different from cryoconite holes. It is mainly populated by microalgae (Zygnematophyceae) and by cyanobacteria [17].

2.1.3 Cryoconite holes

Cryoconite holes are predominantly inhabited by cyanobacteria [27]. Filamentous cyanobacteria such as Phormidesmis, Oscillatoria, Leptolyngbya, Phormidium, and Nostoc play an important role in cryoconites [28]. They produce organic material and extracellular polymeric substances (EPS), which act as cryo- and osmo-protectants [27]. Additionally, bacteria of the class Actinobacteria (Microbacteriaceae and Intrasporangiaceae) are also important members of cryoconite holes, followed by Proteobacteria, Bacteroidetes, and Cyanobacteria. Archaea and eukarya are the least abundant and the least representative members of this environment [10].

2.2 The englacial ecosystem

In englacial ecosystems, live motile bacteria can reach more than 3000 m of depth. These bacteria reside in clay particles and ice channels. According to their metabolism, they can be both chemoautotrophs (i.e., Streptomyces, Nocardia, Bacillus) and heterotrophs (i.e., Proteobacteria, Actinobacteria) (Figure 2). The later bacteria feed on solubilized organic products from pollen grains and from other dead microorganisms. At great depth, anaerobic respiration takes place [29] and methanogens (for instance, Firmicutes and Euryarchaeota) are also active [20].

2.3 The subglacial ecosystem

The subglacial ecosystem is dominated by aerobic and anaerobic bacteria in basal bedrock and subglacial lakes. It does also contain diverse and metabolically active archaeal, bacterial, and fungal species [25] (Figure 2).

Among bacteria, species with chemolithotrophic activity have been identified; an example is Sideroxydans lithotrophicus, which is an iron sulfide oxidizer. Other bacterial taxa found in this ecosystem are Thiobacillus and Thiomicrospira, both associated with the sulfur and iron cycles [15].

Archaea in these anoxic environments are mainly represented by methanogenic and methanotrophic species [25]. Methanogenesis, the production of methane in an anaerobic process mediated exclusively by methanogenic archaea, is a very plausible process in the subglacial ecosystem. In glacier samples from this environment, methanogenic archaea of the euryarchaeal orders Methanosarcinales [5] and Methanomicrobiales have been detected [6].

Eukaryotes have only been found in some of the studied subglacial environments [19]. Among them, mainly fungi have been described [26]. Basidiomycetes predominate, among which Cryptococcus and Rhodotorula are the dominant genera.

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3. Metabolic potentials and biogeochemical cycles in polar glaciers through reconstruction of microbial metagenomes

Living in such extreme environments implies coping with low temperatures, desiccation, low nutrients availability, and ultraviolet irradiation [30]. Over the last years, metagenomics have allowed a great understanding of metabolic potentials and biogeochemical cycles in polar glaciers through reconstruction of microbial genomes (Figure 3).

Figure 3.

Overview of the metabolic potentials between dominant microorganisms in the three polar glacial ecosystems. The data are from [20, 11, 10, 4, 13, 8] for bacteria, from [11, 15, 5, 6, 14] for archaea, and from [19, 7, 12, 14] for eukarya.

Regarding the supraglacial ecosystem, metagenomic studies have demonstrated the wide diversity of functions in cryoconite holes, with a range of metabolic pathways which depend on their competence to acquire and degrade available nutrients [10]. Functional analyses highlighted the importance of stress responses and efficient carbon and nutrient recycling.

Metagenomic techniques have also been used to identify algal communities in the supraglacial ecosystem and their relationship with geochemical factors [12].

The potential of archaea as important ammonia oxidizers has been another finding achieved by metagenomics [11].

Little is known about the metabolic potential and the biogeochemical cycles of microbial communities inhabiting the englacial ecosystem. It has been reported that microorganisms enclosed in the englacial ice present very low metabolic rates, using energy only to repair damaged biomolecules and not to grow and reproduce [31].

In the subglacial ecosystem, some metagenomics data implied that the most abundant and active component were bacteria within the order Methylococcales [6]. Transcripts of the particulate methane monooxygenase from these taxa were detected, demonstrating that methanotrophic bacteria were functional members of this subglacial ecosystem.

At least three modes of carbon fixation were inferred [14]. The most common mode of carbon fixation was the reductive pentose phosphate cycle. The second in frequency was the reductive tricarboxylic acid pathway. This cycle also produces precursors for nucleic acid and aromatic amino acid syntheses. The third type of carbon fixation, the reductive acetyl-CoA pathway, is the one used by archaea [14].

These investigations did also identify genes that carry out various parts of the nitrogen cycle, including nitrogen fixation (Actinobacteria, Cyanobacteria, Betaproteobacteria, and Gammaproteobacteria), nitrification (Alphaproteobacteria and Betaproteobacteria), denitrification (Gammaproteobacteria), nitrate reduction (Betaproteobacteria and Gammaproteobacteria), anammox (Planctomycetes), assimilation (most microorganisms from these investigations), and decomposition (fungi and other heterotrophs) [14].

Characterization of the Antarctic Blood Falls microbial assemblage revealed taxa that could participate in active sulfur cycling, including autotrophs and heterotrophs such as Desulfocapsa, Geopsychrobacter, Thiomicrospira, and Thermacetogenium [32]. Although these microorganisms usually inhabit the subglacial ecosystem, in Blood Falls, they have been identified in brines collected from outflowing fluids (Figure 3).

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4. Comparison of metagenome analysis techniques

The metagenome of polar microorganisms has been widely studied in recent years. Their results can provide a great amount of information about the biodiversity, survival capacity, and functioning of microbial communities in these extreme environments. In addition, information about ancient communities preserved within glacial ice through time can be obtained [33].

4.1 Sanger

Between 1975 and 2005, most of the DNA sequences were obtained through the application of the Sanger techniques [34], which led to the first generation of automated DNA sequencers [35] (Figure 4). For 16S or 18S rRNA sequencing, PCR amplification was carried out with specific primers (Table 1) and sequencing instruments based on capillary electrophoresis. Nowadays, Sanger sequencing achieves high read lengths of up to 1000 bp and per base and accuracies of 99.999% [36]. In the de novo metagenomics, randomly fragmented DNA was cloned into a high-copy-number plasmid and then transformed in Escherichia coli. However, whole-genome sequencing by this technology was extremely expensive and time consuming.

Figure 4.

Typical workflow in polar glacier metagenomics researches.

Specificity Primers Sequence (5′ to 3′) Product length (bp) Authors Reference
Sanger Bacteria 16S-F AGAGTTTGATCCTGGCTCAG 1000 Lane, 1991 [45]
Bacteria 16S-R CACGAGCTGACGACAGCC 1000 Lane, 1991 [45]
Archaea 20F TTCCGGTTGATCCYGCCRG 1372 Massana et al., 1997 [46]
Archaea U1392R ACGGGCGGTGTGTRC 1372 Massana et al., 1997 [46]
Eukarya Euka1F CTGGTTGATCCTGCCAG 500 Lefranc et al., 2005 [47]
Eukarya Euk502R TGATCCTTCTGCAGGTTCACCTAC 500 Amann et al., 1990 [48]
NGS Bacteria (V3–V4) 341F ACACTGACGACATGGTTCTACACCTACGGGNGGCWGCAG 100 Herlemann et al., 2011 [49]
Bacteria (V3–V4) 805R TACGGTAGCAGAGACTTGGTCTGACTACHVGGGTATCTAATCC 100 Herlemann et al., 2011 [49]
Eukarya (V9) 1380F GCCTCCCTCGCGCCATCAGXXXXXCCCTGCCHTTTGTACACAC 43 Amaral-Zettler et al., 2009 [50]
Eukarya (V9) 1510R GCCTTGCCAGCCCGCTCAGCCTTCYGCAGGTTCACCTAC 39 Amaral-Zettler et al., 2009 [50]

Table 1.

Primer sequences for 16S or 18S rRNA sequencing.

Some examples of microorganisms from polar glaciers analyzed with these technologies were Antarctic bacteria from the Dry Valleys [37] and the Arctic ice pack [38]. In general, the number of sequences identified by this technique was scarce. However, this method has the advantage of generating long reference sequences, which are very useful for studies of taxonomy and biodiversity.

4.2 NGS

Next-generation sequencing (NGS) technology is similar to capillary sequencing (Figure 4). The main difference is that, instead of sequencing a single DNA fragment, NGS develops this process with millions of DNA fragments.

The introduction of pyrosequencing technology by 454 life sciences in 2005 began the NGS innovation. This allowed the identification of thousands of short-sequencing reads without the need for cloning. This technique was used to research the microbial life in the Dry Valleys, Antarctica [39], and Ace Lake, Antarctica [40], and in Arctic glaciers from Svalbard [10].

Since then, many other NGS technologies have been developed. The Illumina platform (MiniSeq, MiSeq, NextSeq, HiSeq, and NovaSeq instruments) is based on sequencing by synthesis of the complementary strand and fluorescence-based detection of reversibly blocked terminator nucleotides. The platform includes multiple instruments with varying read length. For example, Illumina sequencing has been employed in a metagenomic research into diazotrophic communities across Arctic glacier forefields [41] and in the metagenomic analysis of basal ice from an Alaskan glacier [42]. Sequencing of 16S and 18S rDNA PCR amplicons is the most common approach to investigating environmental prokaryotic diversity, despite the known biases introduced during PCR. Recently this method has been improved with the use of 16S rDNA fragments derived from Illumina-sequenced environmental metagenomes [43]. Furthermore, newer Illumina sequencers produce longer reads (e.g., the HiSeq2500 and MiSeq produce 2 × 150bp and 2 × 250bp reads, respectively, which after merging can generate reads up to, e.g., 290 and 490 bp).

Other metagenomic studies based on the Ion Torrent platform were also based on sequencing by synthesis, but the detection was performed using semiconductor technology. Ion Torrent technology was applied to analyze red snow microbiomes and their role in melting Arctic glaciers [12].

The main drawback of the aforementioned second-generation sequencing platforms is that they generate relatively fragmented genome assemblies. In order to produce closed reference genomes, longer reads are required [36]. To meet this demand, third-generation sequencing platforms have been developed. These technologies directly target single DNA molecules without the need for PCR amplification. The PacBio RSII platform uses single-molecule real-time (SMRT) sequencing technology which allows to obtain extremely long DNA fragments of 20 kb and even longer [43].

4.3 Genome analysis tools

Environmental microbiome sequencing analysis consists of binning sequencing reads into taxonomic units to compare the microbial composition of samples. This information will allow the knowledge of the microbial population taxonomy, diversity, and functioning. When these data are correlated to certain environmental parameters, both ecological and biogeochemical analysis can be performed. Taxonomic binning of 16S and 18S rRNA reads is usually based on one of these four databases: SILVA, Ribosomal Database Project, Greengenes, and NCBI [44]. For instance, the Ribosomal Database Project was used to perform a metagenomic analysis if Illumina sequences to identify bacterial communities in Antarctic surface snow [45].

Several tools have been developed to investigate the taxonomic composition of metagenomes and, in some cases, the functional composition of the community. These tools can be classified into two groups: those that use all the available sequences (MEGAN/MEGAN4, MG-RAST, Genometa, Kraken, LMAT, Taxator-tk, CLARK, GOTTCHA, EBI) and those that use a set of genes (MetaPhyler, QIIME6, mOTU, MetaPhlAn, One Codex) [33]. These genome analysis tools are summarized in Table 2.

Table 2.

Metagenome analysis tools.

Incomplete list compiled from sources.


B, bacterial taxa; E, eukaryotic taxa.


An example of the use of these tools is the metagenomics analysis with MG-RAST performed to study Arctic microbial communities [41]. Sequence analysis with QIIME was performed with cryoconite samples from Arctic glaciers [10] and with permafrost samples from the Antarctic Dry Valleys [39].

Although metagenomics is changing rapidly, still new improvements in the development of analytical tools and databases are required to answer important questions in polar glacier microbiology.

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5. Conclusions

  • Extraordinary advances in metagenomics have allowed a great understanding of microbial ecology and function of polar glacier microbial communities.

  • Important novel tools to study environmental microbiology based on metagenomics are being developed.

  • Third-generation technologies may further revolutionize metagenomic research.

  • The application of new technologies to metagenomic studies of polar glaciers will enable to link the diversity and functionality of these habitats.

  • Significant challenges for metagenomics remain, especially in data processing and genome analysis.

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Acknowledgments

This research was supported by the Spanish Ministerio de Ciencia, Innovación y Universidades (Grants CTM 2010-12134-E/ANT and CTM2011-16003-E) and the Institute of Health Carlos III (Grant PI14/00705). E.G.L. is a recipient of a Ciencia, Innovación y Universidades Fellowship (Grant PTA2016-12325-I, Programa Nacional de Contratación e Incorporación de RRHH). We thank Paula Alcazar for reading this manuscript and for her helpful suggestions and revisions.

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Conflict of interest

The authors declare that none of us has any competing commercial interests in relation to the submitted work.

References

  1. 1. Skidmore ML, Foght JM, Sharp MJ. Microbial life beneath a high Arctic glacier. Applied and Environmental Microbiology. 2000;66:3214-3220
  2. 2. Foght J, Aislabie J, Turner S, Brown CE, Ryburn J, Saul DJ, et al. Culturable bacteria in subglacial sediments and ice from two southern hemisphere glaciers. Microbial Ecology. 2004;47:329-340. DOI: 10.1007/s00248-003-1036-5
  3. 3. Garcia-Lopez E, Cid C. The role of microbial ecology in glacier retreat analysis. In: Tangborn WV, editor. Glaciers. Rijeka, Croatia: InTech; 2017. DOI: 10.5772/intechopen.69097
  4. 4. Hamilton TL, Havig J. Primary productivity of snow algae communities on stratovolcanoes of the Pacific Northwest. Geobiology. 2017;15:280-295. DOI: 10.1111/gbi.12219
  5. 5. Boyd ES, Hamilton TL, Havig JR, Skidmore ML, Shock EL. Chemolithotrophic primary production in a subglacial ecosystem. Applied and Environmental Microbiology. 2014;80:6146-6153. DOI: 10.1128/AEM.01956-14
  6. 6. Dieser M, Broemsen EL, Cameron KA, King GM, Achberger A, Choquette K, et al. Molecular and biogeochemical evidence for methane cycling beneath the Western margin of the Greenland ice sheet. The ISME Journal. 2014;8:2305-2316. DOI: 10.1038/ismej.2014.59
  7. 7. Yallop ML, Anesio AM, Perkins RG, Cook J, Telling J, Fagan D, et al. Photophysiology and albedo-changing potential of the ice algal community on the surface of the Greenland ice sheet. The ISME Journal. 2012;6:2302-2313. DOI: 10.1038/ismej.2012.107
  8. 8. Møller AK, Søborg DA, Al-Soud WA, Sørensen SJ, Kroer N. Bacterial community structure in high-arctic snow and freshwater as revealed by pyrosequencing of 16S rRNA genes and cultivation. Polar Research. 2013;32:17390. DOI: 10.3402/polar.v32i0.17390
  9. 9. Garcia-Lopez E, Rodriguez-Lorente I, Alcazar P, Cid C. Microbial communities in coastal glaciers and tidewater tongues of Svalbard archipelago, Norway. Frontiers in Marine Science. 2019;5:512. DOI: 10.3389/fmars.2018.00512
  10. 10. Edwards A, Mur LA, Girdwood SE, Anesio AM, Stibal M, Rassner SM, et al. Coupled cryoconite ecosystem structure-function relationships are revealed by comparing bacterial communities in alpine and Arctic glaciers. FEMS Microbiology Ecology. 2014;89:222-237. DOI: 10.1111/1574-6941.12283
  11. 11. Lutz S, Anesio AM, Edwards A, Benning LG. Microbial diversity on Icelandic glaciers and ice caps. Frontiers in Microbiology. 2015;6:307. DOI: 10.3389/fmicb.2015.00307
  12. 12. Lutz S, Anesio AM, Raiswell R, Edwards A, Newton RJ, Gill F, et al. The biogeography of red snow microbiomes and their role in melting arctic glaciers. Nature Communications. 2016;7:11968. DOI: 10.1038/ncomms11968
  13. 13. Michaud L, Lo Giudice A, Mysara M, Monsieurs P, Raffa C, Leys N, et al. Snow surface microbiome on the high Antarctic plateau (DOME C). PLoS One. 2014;9:e104505. DOI: 10.1371/journal.pone.0104505
  14. 14. Shtarkman YM, Kocer ZA, Edgar R, Veerapaneni RS, D’Elia T, Morris PF, et al. Subglacial Lake Vostok (Antarctica) accretion ice contains a diverse set of sequences from aquatic, marine and sediment-inhabiting bacteria and Eukarya. PLoS One. 2013;8:e67221. DOI: 10.1371/journal.pone.0067221
  15. 15. Christner BC, Priscu JC, Achberger AM, Barbante C, Carter SP, Christianson K, et al. A microbial ecosystem beneath the West Antarctic ice sheet. Nature. 2014;512:310-313. DOI: 10.1038/nature13667
  16. 16. Deming JW. Psychrophiles and polar regions. Current Opinion in Microbiology. 2002;5:301-309
  17. 17. Martín-Cerezo ML, García-López E, Cid C. Isolation and identification of a red pigment from the Antarctic bacterium Shewanella frigidimarina. Protein and Peptide Letters. 2015;22:1076-1082
  18. 18. Anesio AM, Laybourn-Parry J. Glaciers and ice sheets as a biome. Trends in Ecology & Evolution. 2012;27:219-225. DOI: 10.1016/j.tree.2011.09.012
  19. 19. Boetius A, Anesio AM, Deming JW, Mikucki JA, Rapp JZ. Microbial ecology of the cryosphere: Sea ice and glacial habitats. Nature Reviews. Microbiology. 2015;13:677-690. DOI: 10.1038/nrmicro3522
  20. 20. Hodson A, Anesio AM, Tranter M, Fountain A, Osborn M, Priscu J, et al. Glacial ecosystems. Ecological Monographs. 2008;78:41-67
  21. 21. Garcia-Lopez E, Cid C. Glaciers and ice sheets as analog environments of potentially habitable icy worlds. Frontiers in Microbiology. 2017;8:1407. DOI: 10.3389/fmicb.2017.01407
  22. 22. Mieczen T, Gorniak D, Swiatecki A, Zdanowski M, Tarkowska-Kukuryk M, Adamczuk M. Vertical microzonation of ciliates in cryoconite holes in ecology glacier, King George Island. Polish Polar Research. 2013;34:201-212. DOI: 10.2478/popore-2013-0008
  23. 23. Xiang S, Shang T, Chen Y, Jing Z, Yao T. Dominant bacteria and biomass in the Kuytun 51 glacier. Applied and Environmental Microbiology. 2009;75:7287-7290. DOI: 10.1128/AEM.00915-09
  24. 24. Irgens RL, Gosink JJ, Staley JT. Polaromonas vacuolata gen. nov., sp. nov., a psychrophilic, marine, gas vacuolate bacterium from Antarctica. International Journal of Systematic Bacteriology. 1996;46:822-826. DOI: 10.1099/00207713-46-3-822
  25. 25. Anesio AM, Lutz S, Chrismas NAM, Benning LG. The microbiome of glaciers and ice sheets. NPJ Biofilms and Microbiomes. 2017;3:10. DOI: 10.1038/s41522-017-0019-0
  26. 26. Butinar L, Spencer-Martins I, Gunde-Cimerman N. Yeasts in high Arctic glaciers: The discovery of a new habitat for eukaryotic microorganisms. Antonie van Leeuwenhoek. 2007;91:277-289. DOI: 10.1007/s10482-006-9117-3
  27. 27. Stibal M, Sabacka M, Kastovska K. Microbial communities on glacier surfaces in Svalbard: Impact of physical and chemical properties on abundance and structure of cyanobacteria and algae. Microbial Ecology. 2006;52:644-654. DOI: 10.3389/fmicb.2015.00225
  28. 28. Chrismas NA, Anesio AM, Sánchez-Baracaldo P. Multiple adaptations to polar and alpine environments within cyanobacteria: A phylogenomic and Bayesian approach. Frontiers in Microbiology. 2015;6:1070. DOI: 10.3389/fmicb.2015.01070
  29. 29. Price PB. Microbial life in glacial ice and implications for a cold origin of life. FEMS Microbiology Ecology. 2007;59:217-231
  30. 30. Garcia-Lopez E, Alcazar P, Postigo M, Cid C. The effect of climate change on microbial communities from glaciers. In: Glaciers: Formation, Climate Change and Their Effects. New York: Nova Science Publishers, Inc; 2016. pp. 71-88
  31. 31. Tung HC, Bramall NE, Price BP. Microbial origin of excess methane in glacial ice and implications for life on Mars. PNAS. 2005;102:18292-18296. DOI: 10.1073/pnas.0507601102
  32. 32. Mikucki JA, Pearson A, Johnston DT, Turchyn AV, Farquhar J, Schrag DP, et al. A contemporary microbially maintained subglacial ferrous “ocean”. Science. 2009;324:397-400. DOI: 10.1126/science.1167350
  33. 33. Lindgreen S, Adair KL, Gardner PP. An evaluation of the accuracy and speed of metagenome analysis tools. Scientific Reports. 2016;6:19233. DOI: 10.1038/srep19233
  34. 34. Sanger F, Nicklen S, Coulson AR. DNA sequencing with chain-terminating inhibitors. PNAS. 1977;74(12):5463-5467
  35. 35. Garcia-Descalzo L, Garcia-Lopez E, Postigo M, Baquero F, Alcazar A, Cid C. Eukariotic microorganisms in cold environments: Examples from Pyrenean glaciers. Frontiers in Microbiology. 2013;4:55. DOI: 10.3389/fmicb.2013.00055
  36. 36. Shendure J, Ji H. Next-generation DNA sequencing. Nature Biotechnology. 2008;26:1135-1145. DOI: 10.1038/nbt1486
  37. 37. Bidle KD, Lee S, Marchant DR, Falkowski PG. Fossil genes and microbes in the oldest ice on earth. PNAS. 2007;104:13455-13460. DOI: 10.1073/pnas.0702196104
  38. 38. Brinkmeyer R, Glöckner FO, Helmke E, Amann R. Predominance of ß-proteobacteria in summer melt pools on Arctic pack ice. Limnology and Oceanography. 2004;49:1013-1021. DOI: 10.4319/lo.2004.49.4.1013
  39. 39. Goordial J, Davila A, Lacelle D, Pollard W, Marinova MM, Greer CW, et al. Nearing the cold-arid limits of microbial life in permafrost of an upper dry valley, Antarctica. The ISME Journal. 2016;10:1613-1624. DOI: 10.1038/ismej.2015.239
  40. 40. Lauro FM, DeMaere MZ, Yau S, Brown MV, Ng C, Wilkins D, et al. An integrative study of a meromictic lake ecosystem in Antarctica. The ISME Journal. 2011;5:879-895. DOI: 10.1038/ismej.2010.185
  41. 41. Nash MV, Anesio AM, Barker G, Tranter M, Varliero G, Eloe-Fadrosh EA, et al. Metagenomic insights into diazotrophic communities across Arctic glacier forefields. FEMS Microbiology Ecology. 2018;94:9. DOI: 10.1093/femsec/fiy114
  42. 42. Kayani MUR, Doyle SM, Sangwan N, Wang G, Gilbert JA, Christner BC, et al. Metagenomic analysis of basal ice from an Alaskan glacier. Microbiome. 2018;6:123. DOI: 10.1186/s40168-018-0505-5
  43. 43. Besser J, Carleton HA, Gerner-Smidt P, Lindsey RL, Trees E. Next-generation sequencing technologies and their application to the study and control of bacterial infections. Clinical Microbiology and Infection. 2018;24:335-341. DOI: 10.1016/j.cmi.2017.10.013
  44. 44. Balvočiūtė M, Huson DH. SILVA, RDP, Greengenes, NCBI and OTT—How do these taxonomies compare? BMC Genomics. 2017;18:114. DOI: 10.1186/s12864-017-3501-4
  45. 45. Lane DJ. 16S/23S rRNA sequencing. In: Stackebrandt E, Goodfellow M, editors. Nucleic Acid Techniques in Bacterial Systematic. New York: John Wiley and Sons; 1991. pp. 115-175
  46. 46. Massana R, Murray AE, Preston CM, DeLong EF. Vertical distribution and phylogenetic characterization of marine planktonic Archaea in the Santa Barbara channel. Applied and Environmental Microbiology. 1997;63:50-56
  47. 47. Lefranc M, Thenot A, Lepere C, Debroas D. Genetic diversity of small eukaryotes in lakes differing by their trophic status. Applied and Environmental Microbiology. 2005;71:5935-5942. DOI: 10.1128/AEM.71.10.5935-5942.2005
  48. 48. Amann RI, Binder BJ, Olson RJ, Chisholm SW, Devereux R, Stahl DA. Combination of 16S rRNA-targeted oligonucleotide probes with flow cytometry for analyzing mixed microbial populations. Applied and Environmental Microbiology. 1990;56:1919-1925
  49. 49. Herlemann DP, Labrenz M, Jurgens K, Bertilsson S, Waniek JJ, Andersson AF. Transitions in bacterial communities along the 2000 km salinity gradient of the Baltic Sea. The ISME Journal. 2011;5:1571-1579. DOI: 10.1038/ismej.2011.41
  50. 50. Amaral-Zettler LA, Mc Climent EA, Ducklow HW, Huse SM. A method for studying protistan diversity using massively parallel sequencing of V9 hyper variable regions of small-subunit ribosomal RNA genes. PLoS One. 2009;4:e6372. DOI: 10.1371/journal.pone.0006372

Written By

Eva Garcia-Lopez, Ana Maria Moreno and Cristina Cid

Submitted: 20 July 2018 Reviewed: 04 February 2019 Published: 20 March 2019