Cognitive synoptical results obtained by the two groups studied. Values are mean (SD); ns = not significant. § number of mistakes.
1. Introduction
Gait impairment, worse equilibrium scores and falls are associated with leukoaraiosis, as widely recognised [1-6]. In Binswanger’s disease with a severe leukoaraiosis gait disorders are clearly evident while patients with mild periventricular changes may present subclinical forms of gait disorders, as proposed by some authors (see data in [7]).
Gait disorders in the elderly are particularly relevant, since they can influence the loss of functional independence and death [8]. As anticipated, cerebral small vessel disease (both white matter lesions and lacunar infarcts) correlates with gait parameters: stride length and a lower gait velocity [8]. Most importantly, subcortical vascular lesions seem to increase the possibility of falls, even if clear evidences are still lacking [9-11].
Walking difficulties in Alzheimer’s disease are well described [12]: patients show slow and irregular steps, difficulties in turning and avoiding obstacles [13, 14]. These disturbances have been described also in patients free from extrapyramidal, ataxic, paretic signs, and clinically relevant musculoskeletal impairments [12, 14]. Moreover, Alzheimer’s disease patients have a worse balance [12, 14, 15] and a higher risk of falls compared with matched controls [16, 17]. The prevalence of gait abnormalities varies widely across the studies (from 8.7% [18] to over 90% [19]); this can be explained because of different inclusion criteria and/or assessment procedures.
These observations have been confirmed by studies demonstrating that patients with Alzheimer’s disease walk more slowly compared to healthy controls [12] and these gait problems have been interpreted as manifestations of the extrapyramidal deficits (well-known to affect 12–28% of Alzheimer patients), or as side effects of drug treatment (e.g. neuroleptic agents) [20]. Since a overt walking problems and trunk movement alterations can be seen also in absence of extrapyramidal signs, it has been proposed that some Alzheimer’s disease patients may present “frontal gait disorder”, a syndrome coterminous with gait apraxia [21, 15]. The lack of a standardised instrument to assess gait has been implicated as a possible cause for the low frequency of reports on the topic.
Since the walking assessment cannot discriminate between walking disorders caused by gait apraxia and other neurological causes of walking difficulty, there has been the necessity to exclude alternative causes of walking abnormalities in Alzheimer’s disease (overt extrapyramidal impairments or other concurrent neurological diseases); in order to assess gait capacity, a new test has been proposed and a large proportion of the sample (40%) scored below cut off, even if the percentage of severely impaired was smaller. Although the possibility of right–left confusion, working memory deficits, and problems with verbal comprehension was minimised by demonstrating the items, the complexity of some of them might have contributed to inflating the proportion of patients performing poorly. Even though, the presence of associated vascular pathology in a few patients also cannot account for the outcome. Neuroradiological signs of white matter changes were reported in three of the 24 patients (22.5%) in the Della Sala
Therefore, in a well-defined population suffering from subcortical vascular dementia and Alzheimer’s disease (standing from a neurological, clinical, and radiological criteria), we tried to explore gait, balance and equilibrium alterations, and a behavioral complex symptom, such as apathy, even considering precipitant factors, such as concomitant pathologies and consequent therapies. We now present an extension of the work, with a speculation on what we observed for a two-year follow-up.
2. Subjects and methods
2.1. Patients
From June 1st 2010 to June 1st 2013, 155 patients diagnosed with Alzheimer’s disease (AD), according to NINDCS-ADRDA criteria [22], and 673 patients with subcortical vascular dementia (according the NINDS-AIREN criteria for probable VaD [23]) (age 65–94 years) have been examined in Cognitive Disorder Unit Evaluation of the University of Trieste and enrolled in the present study.
The inclusion criteria were a Mini-Mental State Examination (MMSE) scores of at least 14 and satisfying the fourth edition of the Diagnostic and Statistical Manual of Mental Disorders (DSM-IV) criteria for dementia. As far as neuroimaging is concerned, subcortical VaD (sVAD) was diagnosed when the CT/MRI scan showed moderate to severe ischemic white matter changes [24] and at least one lacunar infarct. In order to be enrolled into the study, Alzheimer’s subjects had to show on brain MRI the classical pattern of atrophy of AD (hippocampal atrophy) and display hypoperfusion in temporoparietal and precuneus regions (AD) on HMPAO-SPECT. The neurologist (RM) assessed independently, after the radiologist’s opinion, brain CT and/or MRI images and all the diagnoses have been confirmed after a long term clinical follow-up (12 and 36 months).
Exclusion criteria were: normal pressure hydrocephalus, diagnoses of major stroke or brain haemorrhage, previous brain tumours, white matter lesions due to specific aetiologies (e.g. multiple sclerosis, vasculitis, brain irradiation, and genetic forms of vascular dementia such as CADASIL or CARASIL). Finally, also major psychiatric illness (e.g.. schizophrenia, bipolar disorders, psychosis, compulsive-obsessive disorders, etc) or central nervous system disorders and alcoholism were excluded. Also absence of an informed caregiver, unavailability of neuroradiological examination, and/or the use of psychotropic drugs within two months prior to the clinical assessment implied patient’s exclusion from the study. According to these exclusion criteria, 27 AD patients and 70 sVAD patients were excluded. We did not consider a discriminant/exclusion criteria depression, referring to different studies (such as [25]), according to the potential correlation to vascular dementia predisposing factor.
2.2. Study design
This was a prospective cohort study, designed to investigate behavioural alterations, and in particular apathy of a AD and of a sVAD population. Study subjects underwent the following evaluations. The standardized baseline assessment implied a detailed history, physical examination (pulse rate and rhythm, blood pressure, heart size and sounds, peripheral pulses, retinal vessel and carotid artery evaluation), EKG, chest X-ray, laboratory tests and psychiatric evaluation. All patients were followed with neurological examinations scheduled every four months, while the complete neuropsychological examination was conducted at baseline and at 36 months. We conducted the study in accordance with the Declaration of Helsinki and with the Ethics Guidelines of the Institute.
2.3. Outcome measures
All patients were studied, with complete neurological and neuropsychological examinations. Main outcomes of the study were: global performance, which was assessed using the Mini Mental State Examination [26], Frontal Assessment Battery (FAB) [27]; global behavioral symptoms, assessed by the Neuro Psychiatric Inventory, NPI [28]; the caregiver stress, assessed by the Relative Stress Scale, RSS [29]. In addition to these main outcome measures, the Clinical Insight Rating Scale (CIR) [30] (which provides a measure of its four comprising items – awareness, cognitive deficit, disease progression and functional deficit) was performed. The Barthel index (BI) [31] and the Instrumental activity of Daily living (IADL) [32] have been used to assess functional activities and complex activities of daily living, respectively. Mobility problems were evaluated by the Tinetti scale for equilibrium/balance and gait [33]: in particular, a semiquantitative assessment was used, consisting of the modified Tinetti test with 17 items, 9 for body balance (0-16), 8 for gait (0-12). Patients were registered for their medical intake.
3. Statistical analysis
Statistical analyses were performed using the Statistical Package for the Social Sciences (SPSS, version 16.0). Wilcoxon Signed Ranks test was used to analyze the Within-group changes, from baseline to 24 months, of the overall scores for each efficacy variable.
Behavioral outcome measures, cognition, Tinetti scale, global, balance and equilibrium, and BI correlations were analyzed applying the Spearman's rank correlation analyses.
4. Results
The study subjects were 128 AD patients and 603 sVAD patients. All the patients could be fully studied (mean age 72.3 ± 7.3 years, range= 62-94 years). 1 AD patient and 5 sVAD patients died during the two-year follow-up. As anticipated, the diagnosis based on clinical history, neuropsychological assessment and neuroimaging was reinforced by subsequent follow-up in all cases.
All the selected patients underwent neuroimaging: 128 AD patients did MRI studies; 603 sVAD patients did CT scans; moreover, 201 of the latter completed the diagnostic pathway with MRI images, in case of not adequate imaging acquisition or not convincing data. Therefore, the patients who did CT/MRI were homogeneously recruited and no demographical/social/cultural/clinical difference distinguished from each other.
A neurologist (RM) revised all the imaging, employing the Blennow
Patients were allowed to continue any previous therapy (e.g. antihypertensive, antidyslipidemic, antidiabetic drugs). During the follow-up, the patients were prescribed neuroleptics and/or benzodiazepines.
A synopsis of the cognitive performances obtained by the two groups has been reported in Table 1-2-3-4.
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|
|
|
|
25.8 (2.4) | 19.9 (1.9) | <0.01 |
Arithmetic calculations (WAIS) § | 6.3 (1.6) | 8.6 (1.2) | <0.05 |
Digit span forward (WAIS) | 5.8 (1.5) | 5.1 (0.6) | <0.05 |
Digit span backward (WAIS) | 4.4 (2.5) | 2.6 (0.8) | <0.05 |
|
9.2 (2.1) | 11.8 (1.2) | <0.05 |
|
|
|
|
|
20.2 (2.2) (-5.2 (.0.3); p<0.01) |
15.1 (1.7) (-4.85 (0.2); p<0.01) |
<0.01 |
|
5.4 (1.1) (-0.9 (0.5); ns) |
3.4 (1.7) (-5.2 (0.5); p<0.01) |
<0.05 |
|
4.1 (1.4) (-1.7 (0.1); p<0.05) |
3.2 (0.2) (-1.9 (0.4); p<0.05) |
<0.05 |
|
3.6 (0.3) (-0.8 (2.2); ns) |
1.9 (0.1) (-0.5 (0.7); p<0.05) |
<0.01 |
|
4.7 (1.5) (-4.5 (0.6); p<0.01) |
7.5 (0.2) (-3.3 (1.0); p<0.05) |
<0.01 |
|
|
|
|
87.41 ± 11.3 | 92.14 ± 0.11 |
|
6.8 ± 0.34 | 5.84 ± 1.3 |
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|
|
|
|
-25.17± 3.4 p<0.01 | -13.57 ± 3.4 p<0.05 | p<0.01 |
|
-1.7 ± 0.3 p<0.05 | -3.4 ± 3.4 p<0.01 |
p<0.01 |
In summary, there are some important cognitive differences in the two groups: AD patients did worse in MMSE, in arithmetic calculation and in digit tasks of WAIS, IADL; sVAD patients did generally worse in FAB tests, Barthel Index.
From the behavioral perspective (Table 5-6), at baseline, the AD group had a worse score of NPI and BEHAVE-AD, and their caregivers did have a heavier stress (RSS). On the contrary, sVAD patients, at baseline did feel much more depressed (as stated by NPI partial scores, not purposely evaluated in this topic) and did have a better insight in their situation. After 24 months, AD patients showed higher NPI and Behave scores; sVAD patients did show more insight. Surprisingly, the stress levels of the caregivers were not significantly different in the two groups. sVAD patients did manifest more overt apathy, which increase during follow-up and remained a major key point in behavior disturbances of these patients.
Moreover, there was a dramatic decrease, either in gait and equilibrium control, either in the combined synoptical measure (of total score) in both groups, with sVAD patients showing a constantly worse performance, compared to AD patients (Table 7-8).
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24.7 (8.7) | 36.1 (8.5) | (p<0.01) |
|
16.9 (0.3) | 24.4 (5.2) | (p<0.01) |
|
3 (0.2) | 2 (0.5) | (p<0.05) |
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|
47.5 (1.3) (+22.8 (5.9), <0.01) |
45.2 (2.1) (+9.1 (6.8), <0.05) |
ns |
|
34.1 (0.8) (+17.2 (0.5), <0.01) |
56.3 (4.5) (+31.9 (1.1), <0.01) |
(p<0.01) |
|
2.2 (0.3) (-0.8 (0.1), ns) |
1.0 (0.3) (-1.0 (0.3), <0.05) |
(p<0.01) |
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10.1 ± 0.1 | 14.3 ± 1.1 | <0.001 |
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10.2 ± 1.1 | 11.4 ± 0.3 | <0.05 |
|
20.3 ± 1.2 | 25.7 ± 1.4 | <0.001 |
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|
|
|
|
-5 ± 0.6 p<0.01 | -3.4 ± 0.6 p<0.01 | P<0.001 |
|
-7.9 ± 1.1 p<0.01 | -3.1± 1.1 p<0.01 | P<0.001 |
|
-12.9 ± 0.2 p<0.01 | -6.5 ± 0.2 p<0.01 | P<0.001 |
Spearman’s rank correlation analyses indicated that there was a significant correlation between Gait scores (total and separately, gait and equilibrium) and FAB scores (
Spearman’s rank correlation analyses indicated that there was a significant correlation between Tinetti total, and equilibrium and gait score and BI over baseline, and 24 months (
Furthermore, we have found a correlation between Tinetti equilibrium score and NPI over 24, months (equilibrium Tinetti/NPI: r=0.78, p<0.05 in sVAD; r=0.87, p<0.01 in AD), and Tinetti gait score and NPI over 24 months (
Spearman’s rank correlation analyses indicated that there was a significant correlation between Gait scores (total scores and separately, gait and equilibrium) and MMSE (
Surprisingly, we have found only a correlation between benzodiazepines intake and Tinetti equilibrium score at 24 months (respectively r=0.77, p<0.05 in sVAD; r=0.84, p<0.01 in AD).
We distinguished typical from atypical neuroleptic intake (Table 9). Moreover, since quetiapine, as an atypical neuroleptic, has a lower dopamine affinity compared to olanzapine, we considered separately the compounds, concluding as follows:
Typical neuroleptics: a significant correlation between haloperidol intake and Tinetti equilibrium score at baseline and at 24 months (respectively: r=0.61, p<0.05, at baseline and r=0.81, p<0.01 in AD patients; r=0.72, p<0.05 at 24 months in sVAD); between haloperidol intake and Tinetti total score at baseline and 24 months (respectively: r=0.81, p<0.01 and r=0.86, p<0.01 in AD; only at 24 months r=0.71, p<0.01 in sVAD); not significant correlation between promazine chloridate intake and Tinetti sub-scores at baseline and at 24 months in AD; we have found a positive correlation between the equilibrium score of Tinetti test and promazine intake at 24 months in sVAD, not in AD group (r=0.74, p<0.05).
Atypical neuroleptics: we have found a significant correlation between olanzapine intake and Tinetti equilibrium score at 24 months in AD groups (none of sVAD took olanzapine in our study) (r=0.74, p<0.05) and between olanzapine intake and Tinetti total score at 24 months (r=0.71, p<0.05); we have found a positive correlation between the equilibrium score of Tinetti test and quetiapine intake at 24 months (respectively: r=0.79, p<0.05 in AD group; r=0.82, p<0.01 in sVAD). The mean dose of olanzapine remained stable during the 24-month follow-up (5.2-5.4 mg/day); on the contrary, quetiapine dosage increased up to 24-month follow-up (56.3-89.6 mg/day).
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lorazepam, mean (±SD) dose delorazepam, mean (±SD) dose bromazepam, mean (±SD) dose |
144 patients 1.27± 0.3 mg/day 1.21 ± 0.8 mg/day 2.11 ± 1.1 mg/day |
289 patients 2.56 ± 0.65 mg/day 2.61 ± 1.29 mg/day 3.41 ± 0.8 mg/day |
298 patients 3.94 ± 1.5 mg/day 3.1 ± 1.54 mg/day 4.6 ± 1.4 mg/day |
304 patients 4.56 ± 1.65 mg/day 4.1 ± 1.89 mg/day 5.41 ± 1.8 mg/day |
haloperidol, mean (±SD) dose promazine chloridrate, mean (±SD) dose |
88 patients 1.56 ± 0.54 mg/day 53.12 ± 12.23 mg/day |
356 patients 2.34 ± 0.67 mg/day 59.12 ± 16.91 mg/day |
88 patients 2.87 ± 1.54 mg/day 63.12 ± 7.2 mg/day |
127 patients 3.56 ± 0.54 mg/day 67.12 ± 1.56 mg/day |
olanzapine, mean (±SD) dose quetiapine, mean (±SD) dose |
4 patients 0.0 ± 0 mg/day 37.5 ± 5.21 mg/day |
23 patients 0 ± 0 mg/day 56.9 ± 3.5 mg/day |
63 patients 5.6 ± 1.6 mg/day 66.8 ± 3.5 mg/day |
83 patients 5.9 ± 2.94 mg/day 89.9 ± 3.5 mg/day |
5. Discussion
Walking is a complex mechanism, based on motor control, step rhythm, muscular activation and dys-activation, motor adjustment, attention, perception and so on. Spinal and brainstem activation, which seems to be fundamental for quadrupeds, is not so dominant in humans, where gait depends more on cortical and subcortical inputs [39].
The motor cortex, represented by distinct areas in the frontal lobes, receives a variety of inputs: sensory areas, motor control structures, and modulatory pathways including the thalamus and basal ganglia (BG). Movement planning and performance are strictly dependent from this cluster of architectonically distinct frontal fields [40]. In particular, SMA activates immediately before gait ignition in normal walking, suggesting a preparatory activity for each sub-component of a movement sequence [41]. It has been suggested that this activity may reflect sub-movement program selection, subsequently sent to the M1. On the other hand, BG generate a phasic activity, which switches off SMA output and which is probably involved in providing a non-specific cue both to trigger the sub-movement and to instruct the SMA to prepare for the next, finally generating an “automatic” movement sequence [42, 7]. In conclusion, internal cues give rise to automatic movement sequences, as a result of the cooperation of BG and SMA [7].
Gait control and in particular gait variability are deeply influenced by BG compensatory activity [43]. Rosano and colleagues reported that subclinical brain vascular abnormalities (WM infarcts and hyperintensities in MRI) were more frequent and severe in patients with a greater variability of step length, independently from age, gender, and cognitive function [43]. Moreover, older people and patients with leukoaraiosis show higher-level gait alterations, supporting the previous observations [39]. These data have been clinically confirmed by other works by the LADIS group [11], by Srikanth
Though, there are quite real differences among the few other studies on this point. It has been established by Della Sala
On the contrary gait and balance in sVAD is a very precocious symptom, which relates, from the very beginning with frontal executive functions (FAB) and Barthel Index (BI) (Table 10).
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Peculiar | Unspecific |
Early | Late | |
Frequent | Less frequent | |
|
Frontal executive functions (FAB) | Global cognitive functions (MMSE) |
Barthel Index (BI) | Behavioral performance (NPI) | |
Drugs intake |
Insofar, we hypothesize that even though gait apraxia is one of the symptoms declared in AD, affecting highly routinized synergistic actions, it relates to AD cognitive worsening. On the contrary, it is a key, precocious and very peculiar aspect of sVAD. Therefore, considering this point, it can be found a good explanation of the phenomenon, in Liston
However, it has been demonstrated that many patients with vascular-HLGDs present with disequilibrium as primary complaint rather than timing and movement ignition problems [4, 51, 7]. To explain this phenomenon it has been purposed that an alteration of the sensory/PMA pathways, compromising the contribute to sub-movements initiation and control of sensory input (proprioceptive, auditory, vestibular and visual information), may represent their primary disorder [7]. The preservation of BG/SMA pathways guarantees the generation of automatic, internally cued movements,
A clear point should be made in our study to the extremely strict exclusion criteria in AD and in sVAD recruitment, basically founded on clinical signs and neuroimaging world-wide accepted criteria. For example, in order to eliminate any confounding, we excluded patients with brainstem lesions, which ischemic lesions could cause specific gait and equilibrium abnormalities. Similarly, we considered also concurrent medications and co-morbidities, in order to ensure that the gait and balance alterations observed should be considered as an exclusive result of subcortical WM widespread damage. During the follow-up, a general worsening, decrease of behavioural control, and consequent pharmacologic intake (neuroleptics and benzodiazepines) stressed but did not cause directly the described gait abnormalities. In conclusion, it might be stated that subcortical lesions cause “per se” the interruption of long loop reflexes of deep white motor tracts and descending motor fibers arising from medial cortical areas (see data and literature in: Guerini
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