Literature DB >> 21525986

Association of plasma Aß peptides with blood pressure in the elderly.

Jean-Charles Lambert1, Jean Dallongeville, Kathryn A Ellis, Susanna Schraen-Maschke, James Lui, Simon Laws, Julie Dumont, Florence Richard, Dominique Cottel, Claudine Berr, David Ames, Colin L Masters, Christopher C Rowe, Cassandra Szoeke, Christophe Tzourio, Jean-François Dartigues, Luc Buée, Ralph Martins, Philippe Amouyel.   

Abstract

BACKGROUND: Aß peptides are often considered as catabolic by-products of the amyloid ß protein precursor (APP), with unknown physiological functions. However, several biological properties have been tentatively attributed to these peptides, including a role in vasomotion. We assess whether plasma Aß peptide levels might be associated with systolic and diastolic blood pressure values (SBP and DBP, respectively). METHODOLOGY/PRINCIPAL
FINDINGS: Plasma Aß(1-40) and Aß(1-42) levels were measured using an xMAP-based assay in 1,972 individuals (none of whom were taking antihypertensive drugs) from 3 independent studies: the French population-based 3C and MONA-LISA (Lille) studies (n = 627 and n = 769, respectively) and the Australian, longitudinal AIBL study (n = 576). In the combined sample, the Aß(1-42)/ Aß(1-40) ratio was significantly and inversely associated with SBP (p = 0.03) and a similar trend was observed for DBP (p = 0.06). Using the median age (69) as a cut-off, the Aß(1-42)/Aß(1-40) ratio was strongly associated with both SBP and DBP in elderly individuals (p = 0.002 and p = 0.03, respectively). Consistently, a high Aß(1-42)/ Aß(1-40) ratio was associated with a lower risk of hypertension in both the combined whole sample (odds ratio [OR], 0.71; 95% confidence interval [CI], 0.56-0.90) and (to an even greater extent) in the elderly subjects (OR, 0.53; 95% CI, 0.37-0.75). Lastly, all these associations appeared to be primarily driven by the level of plasma Aß(1-40).
CONCLUSION: The plasma Aß(1-42)/Aß(1-40) ratio is inversely associated with SBP, DBP and the risk of hypertension in elderly subjects, suggesting that Aß peptides affect blood pressure in vivo. These results may be particularly relevant in Alzheimer's disease, in which a high Aß(1-42)/Aß(1-40) plasma ratio is reportedly associated with a decreased risk of incident disease.

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Year:  2011        PMID: 21525986      PMCID: PMC3078119          DOI: 10.1371/journal.pone.0018536

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Aß peptides are the main component of ß-amyloid deposits in the brains of Alzheimer's disease (AD) patients. Many different cell types from the brain and the peripheral tissues produce these peptides. They are catabolic by-products of the amyloid ß protein precursor (APP) and do not have a known physiological function. However, several lines of evidence suggest that Aß peptides may have biological functions by acting as ligands for various receptors and other molecules [1]–[3]. The peptides are transported between tissues and across the blood brain barrier via complex trafficking pathways [4]. Lastly, at physiological concentrations, the peptides may possess neurotrophic [5], antioxidant [6], platelet aggregation modulation [7], antimicrobial [8] and/or vasoconstriction properties [9]. With respect to vascular tone, Aß peptides are produced by the vascular smooth muscular cells (SMCs) [10] involved in blood pressure (BP) control and are known to have vasoactive properties [11]. Indeed, in in vitro studies, Aß peptides enhance constriction of isolated vessels via the release of endothelin 1 [12], a vasoactive peptide which produces smooth muscle contraction in vivo [11]. Taken as a whole, these observations suggest that the Aß peptides may affect BP control. Interestingly, the Aß peptides decrease cerebral blood flow and volume in rodents [13]–[15]. In the present study, we hypothesized that plasma Aß peptide concentrations may be associated with variations in systolic and/or diastolic blood pressure values (SBP and DBP, respectively). To this end, we analysed a pooled analysis of 1972 individuals from three independent cohorts in which plasma Aß1-40 and Aß1-42 concentrations were available.

Methods

The three samples were selected according to the availability of (i) plasma Aß concentration assays using the same method (the INNO-BIA plasma Aß forms assay; this point is of particular importance, since the assay methodology can significantly influence interpretation of the data [16]), (ii) SBP and DBP measurements; (iii) information on demographic variables, smoking and medication use.

Populations

Written, informed consent was obtained from study participants. The study protocols for all populations were reviewed and approved by the appropriate independent ethics committees in each country. The institutional ethics committees of Austin Health, St Vincent's Health, Hollywood Private Hospital and Edith Cowan University granted ethics approval for the AIBL study. The institutional ethics committees of the Kremlin-Bicetre Hospital granted ethics approval for the 3C study. The institutional ethics committees of the Lille Hospital granted ethics approval for the MONA-LISA study. The 3C Study is a population-based, prospective study of the relationship between vascular factors and dementia [17]. It has been carried out in three French cities: Bordeaux (southwest France), Montpellier (southern France) and Dijon (central eastern France). A sample of non-institutionalised, over-65 subjects was randomly selected from the electoral rolls of each city between January 1999 and March 2001. In the present work, the study population was based on a sub-cohort of 1254 subjects randomly selected from the source sample totalling 8,414 individuals (i.e. a sampling ratio of 15%) stratified by centre, 5-year age class and gender. Aß plasma concentrations were measured in the whole sample [18]. Individuals taking antihypertensive drugs were excluded from our analysis (n = 615). Individuals for whom at least one Aß plasma concentration or co-variable measurement was missing were also excluded (n = 4), together with individuals exhibiting at least one aberrant Aß plasma concentration measurement (n = 8). These selection steps allowed us to define a sample of 627 individuals. The MONA-LISA (LILLE) study is an epidemiological, cross-sectional, population-based study performed in the Lille urban area in northern France. Inhabitants aged 35-74 years were randomly sampled from electoral rolls after stratification by town size, gender and 10-year age groups (n = 1,602) [19]. Only individuals older than 45 years old were selected (n = 1217) and blood samples were obtained from 1201 individuals. Our analysis excluded individuals taking antihypertensive drugs (n = 422), those for whom at least one Aß plasma concentration, SBP, DBP or co-variable measurement was also missing (n = 7) and those exhibiting at least one aberrant Aß plasma concentration measurement (n = 3). These selection steps allowed us to define a sample of 769 individuals. The Australian Imaging Biomarkers and Lifestyle (AIBL) study of ageing has been described elsewhere [20]. It is a longitudinal study performed in Perth and Melbourne (Australia). A total of 1,112 volunteers constituted the AIBL inception cohort. Our analysis excluded individuals taking antihypertensive drugs (n = 375), those for whom at least one Aß plasma concentration, SBP, DBP or co-variable measurement was also missing (n = 147) and those exhibiting at least one aberrant Aß plasma concentration measurement (n = 14). Again, these selection steps enabled us to define a sample of 576 individuals from the AIBL cohort.

Amyloid beta peptide assay

Fasting plasma samples were collected in tubes containing sodium EDTA as an anticoagulant. Following centrifugation, plasma samples were aliquoted into polypropylene tubes, stored at –80°C and only thawed immediately prior to Aß quantification. The plasma Aß peptide assay was performed using the INNO-BIA plasma Aß forms assay (Innogenetics, Ghent, Belgium) based on the multiplex xMAP technique with a LABScan-100 system (Luminex BV, The Netherlands). The 3C and MONA-LISA (LILLE) studies were analyzed in the same centre (INSERM U837, Alzheimer & Tauopathies, Lille, France).

Blood pressure measurements and co-variables

During inclusion in the 3C study, BP was measured twice after 5 minutes in the seated position by using a standard cuff placed around the right arm and an electronic monitor (OMRON M4). In the MONA-LISA (LILLE) population, SBP and DBP were measured after the subject had been seated for at least 10 min with an automatic sphygmomanometer (OMRON 705IT) and an appropriately sized cuff, with the arm at heart level. In the AIBL study, BP for each participant was measured between 8.15 am and 9.30 am and after 10 minutes in the seated position by using the Welch Allyn “DuraShock” handheld unit (DS65). If a measurement was high (>140/90) or low, the procedure was repeated after 10 minutes. The average of two measurements (available for 84% of the study sample) was used for analysis, whenever possible. Hypertension was defined as a SBP ≥140 mm Hg or DBP ≥90 mmHg (n = 337 in the 3C sample, n = 307 in the MONA-LISA (LILLE) sample and n = 270 in the AIBL sample). Age, centre and gender were always used as adjusting factors. Several other co-variables were also considered as potential confounders: smoking status (current or not), plasma cholesterol (total, high-density lipoprotein), creatinine levels and body mass index (BMI, as defined by the Quetelet equation).

Statistics

The data were analysed using SAS statistical software (release 9.1, SAS Institute Inc., Cary NC, USA). In each centre, each quantitative variable was transformed into a z-score (equal to (observed value minus the sample mean), divided by the sample standard deviation). The relationships between the Aß1-40, Aß1-42 and Aß1-42/Aß1-40 z-scores on one hand and the SBP or DBP z-scores on the other were assessed using a general linear model (GLM) adjusted for age, centre and gender (model 1). Analyses were subsequently adjusted for other confounders, as defined below: smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score (model 2). Interactions between Aß1-42/Aß1-40 z-scores, SBP or DBP z-scores and age or gender were tested in a GLM adjusted as for model 2. We analysed the association of Aß1-40, Aß1-42 and Aß1-42/Aß1-40 z-scores with the risk of hypertension. Aß1-40, Aß1-42 and Aß1-42/Aß1-40 z-scores tertiles were defined and the lowest was used as a reference in a logistic regression model. Odds ratios were systematically adjusted for centre, age, gender, smoking status, cholesterol (total, high-density lipoprotein), creatinine levels and BMI z-scores (model 2).

Results

The characteristics of the three independent, constituent samples are presented in Table 1. There was a statistically significant, inverse association between plasma Aß1-42/Aß1-40 and SBP (p = 0.03; Table 2). A similar trend was observed for DBP (p = 0.06; Table 2). We also looked at whether or not Aß1-42/Aß1-40 was associated with the risk of hypertension. In fact, individuals in the upper Aß1-42/Aß1-40 tertile had a 1.4-fold lower risk of hypertension than subjects in the lower tertile (Table 3).
Table 1

Baseline sociodemographic variables and potential confounding factors in the 3C, ABLI and MONA-LISA (LILLE) populations (individuals not taking antihypertensive drugs; for details, see the Materials and Methods section).

3C study (n = 627)AIBL study (n = 576)MONA-LISA study (n = 769)
Age (years)73.1±5.371.6±7.858.1±8.2
% women59.7%57.8%49.4%
Smoking (% current)6.7%3.0%18.6%
Body mass index (kg/m2)24.9±3.525.5±4.126.5±4.5
Plasma HDL cholesterol (mmol/L)1.67±0.411.70±0.441.50±0.39
Plasma cholesterol (mmol/L)6.0±1.05.7±1.15.87±1.1
Plasma creatinine80.5±15.681.1±17.385.0±15.8
SBP (mmHg)141.9±20.4136.5±14.7136.5±18.6
DBP (mmHg)81.3±11.078.0±9.382.2±10.6
Plasma Aß1-40 (pg/ml)227.8±48.0153.6±40.4205.4±42.8
Plasma Aß1-42 (pg/ml)37.5±10.331.3±10.036.7±11.45
Plasma Aß1-42/ Aß1-40 0.169±0.0490.209±0.0590.184±0.069
Table 2

Associations between plasma Aß peptides and SBP & DBP values.

Combined sampleModel 1Model 2
1-40 ßpßp
SBP z-score+0.006±0.0230.80+0.006±0.0230.80
DBP z-score+0.011±0.0260.65+0.005±0.0230.83
1-42 ßpßp
SBP z-score−0.036±0.0210.09−0.039±0.0210.10
DBP z-score−0.023±0.0220.31−0.031±0.0220.16
1-42/Aß1-40 ßpßp
SBP z-score−0.044±0.0220.04−0.045±0.0210.03
DBP z-score−0.037±0.0220.10−0.040±0.0220.06

Data are ß coefficients ± 95% CI.

Model 1: Adjusted for age, gender, centre.

Model 2: Adjusted for age, gender, centre, smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score.

Table 3

Associations between the plasma Aß 1-42/A ß1-40 ratio and hypertension.

A ß 1-42/A ß 1-40 z-score
Risk of hypertension1st tertile2nd tertile3rd tertilep
Whole sample1.00 (ref)0.81 (0.65–1.03)0.71 (0.56–0.90)0.004
>69 years of age1.00 (ref)0.69 (0.49–0.98)0.53 (0.37–0.75)0.0003

The odds ratio (95% CI) for hypertension (n = 914) was adjusted for age, gender, centre, smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score.

Data are ß coefficients ± 95% CI. Model 1: Adjusted for age, gender, centre. Model 2: Adjusted for age, gender, centre, smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score. The odds ratio (95% CI) for hypertension (n = 914) was adjusted for age, gender, centre, smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score. We next searched for potential interactions between age, gender and the associations described above. We observed significant interactions with age when analysing the association between SBP or the risk of hypertension and plasma Aß1-42/Aß1-40 (p = 0.02 and p = 0.04, respectively). These observations are particular relevant, since BP and plasma Aß concentrations are already known to be strongly age-dependent [18], [21]. We thus stratified the combined sample using the median age (>69) as a cut-off and observed more pronounced inverse associations between BP levels and Aß1-42/Aß1-40 in the elderly individuals (Table 4). Importantly, the association of Aß1-42/Aß1-40 with BP levels appeared to be primarily linked to plasma Aß1-40 levels (Table 4). Similarly, this association was even more pronounced in the elderly, where individuals in the upper Aß1-42/Aß1-40 tertile had a 2-fold lower risk of hypertension (Table 3). The plasma Aß1-42/Aß1-40 ratio's associations with hypertension again appeared to be mainly driven by plasma Aß1-40 in the oldest subjects. Individuals in the upper Aß1-40 z-score tertile had a greater risk of suffering from hypertension (OR = 1.61, 95% CI [1.09–2.39], p = 0.01), whereas no association with the Aß1-42 z-score was found (OR = 1.03, 95% CI [0.74–1.45], p = 0.85).
Table 4

Associations between plasma Aß peptides and SBP & DBP values.

≤69 years of ageModel 1Model 2
1-40 ßpßp
SBP z-score−0.046±0.0300.12−0.049±0.0290.10
DBP z-score−0.025±0.0310.41−0.035±0.0300.24
1-42 ßpßp
SBP z-score−0.028±0.0300.34−0.036±0.0300.23
DBP z-score−0.008±0.0310.80−0.032±0.0310.54
1-42/Aß1-40 ßpßp
SBP z-score+0.013±0.0220.56+0.006±0.0220.78
DBP z-score−0.010±0.0240.67−0.013±0.0220.57

Data are ß coefficients ± 95% CI.

Model 1: Adjusted for age, gender, centre.

Model 2: Adjusted for age, gender, centre, smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score.

Data are ß coefficients ± 95% CI. Model 1: Adjusted for age, gender, centre. Model 2: Adjusted for age, gender, centre, smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score. Importantly, all the reported associations appeared homogenous and in the same direction in the three samples when analysed separately (Table S1 and S2) and remained significant when pairs of populations were compared in a sensitivity analysis (data not shown).

Discussion

Here, we have shown that an elevated plasma Aß1-42/Aß1-40 ratio is significantly associated with low SBP and DBP values. In the elderly, we estimate that a 0.01 unit increment in Aß1-42/Aß1-40 was associated with a 0.29±0.09 mmHg decline in SBP and a 0.10±0.05 mmHg decline in DBP. Consistently, an elevated Aß1-42/Aß1-40 plasma ratio was also associated with a lower risk of hypertension in the elderly. Importantly, the plasma Aß1-42/Aß1-40 ratio's associations with SBP, DBP and hypertension appeared to be mainly driven by plasma Aß1-40 in the oldest subjects. Our observation of an association between plasma Aß1-40 and SBP agrees with the report of a similar trend (in a small sample) by Abdullah et al [22]. The mechanisms underlying this preferential association may be related to the Aß1-40 peptide's properties on vascular vessels. Earlier studies have shown that Aß1-40 peptides can constrict cerebral blood vessels in vitro 9 and decrease cerebral flow and cerebral blood volume in vivo [10]–[12]. and that Aß1-40 has greater vasoconstriction effects on the cerebral vasculature than Aß1-42 does [12]. Furthermore, in rodents, injection of Aß1-40 into the tail modulates cerebral blood flow and volume, suggesting that Aß peptides have a direct impact on blood pressure. Finally, Aß peptides have been described to potentially modulate the vasoactivity of the rat aorta [23]. Thus, by extension our observation of an association between an elevated Aß1-42/Aß1-40 ratio and low SBP may be related to the properties of Aß1-40 on vascular wall in the elderly. In vitro and in vivo experiments will be needed to underpin this epidemiological observation and to extend knowledge of the Aß peptides' vasoactivity from the cerebral vasculature to the vascular system as a whole. Alternatively, we cannot rule out the possibility that the plasma Aß1-42/Aß1-40 ratio is merely a marker of other parameters involved in BP variations or that the plasma Aß1-42/Aß1-40 association with BP is a consequence of BP variations by themselves. These possibilities may help explain the stronger association of the plasma Aß1-42/Aß1-40 ratio with SBP and DBP in the elderly individuals. Age-related arterial wall stiffening may lead indirectly to subtle changes in APP metabolism in the SMCs (one of the main non-brain cell types able to produce Aß peptides). Again, only in vitro and in vivo experiments will be able to clarify this question. Nonetheless, and notwithstanding the consistent effects that we have observed, our study suffered from a number of limitations. Firstly, quantification of Aß peptides in plasma is not fully standardized and it varied from one centre to another (Table 1). Even though centre-to-centre variations are well known for quantitative variables, we cannot rule out the possible presence of assay-related of bias. Therefore, in order to minimize between-centre variability, we transformed the data in to z-scores prior to our statistical analyses. Secondly, it is still unclear whether the assay used here does indeed quantify all the various free, bound, monomeric and oligomeric forms of plasma Aß1-40 and Aß1-42 peptides. Accordingly, we may only have a partial picture of the Aß1-40 and Aß1-42 concentrations in plasma - a picture which is also likely to be influenced by sample conditioning, storage and analyses. In order to minimize this problem, we analysed three independent cohorts in which the same plasma Aß peptide assay method had been used. Interestingly, the assay performed in the present study uses xMAP technology to quantify several epitopes and thus several different Aß species. Furthermore, we observed a strong correlation between plasma Aß1-40 and Aß1-42 in all the populations analysed (data not shown) - indicating that the plasma Aß peptide concentrations are representative of the physiological processes leading to Aß peptide production (i.e. APP metabolism). Furthermore, sensitivity analyses indicated that the observed results are homogeneous for the elderly individuals in the different studies and support the existence of a real impact of Aß peptides on BP values and hypertension (Tables S1 and S2). Our data may be of particular interest in the field of dementia. On the epidemiological level, an increased risk of dementia in individuals with high BP (and especially very high SBP) has been reported [24], although there is no clear consensus to indicate that raised BP in later life is a risk factor in dementia [25]–[27]. Furthermore, use of antihypertensive agents was suggested to reduce the risk of dementia and cognitive decline observed in clinical trials [28]. Interestingly, we and others have observed that an elevated Aß1-42/Aß1-40 ratio is strongly associated with a decreased risk of incident Alzheimer's disease and mixed/vascular dementia [18], [29]. Consequently, we can justifiably postulate that high plasma Aß1-42/Aß1-40 may reduce and/or delay the risk of developing dementia in the elderly by decreasing SBP and lowering the risk of hypertension. Our data might be also consistent with the finding that plasma Aß1-40 is associated with microvascular brain injury in subjects with AD, mild cognitive impairment or cerebral amyloid angiopathy [30]. In conclusion, our data support the potential vasoactive properties of the Aß peptides and suggest that the latter are able to subtly modulate BP in the elderly. Furthermore, these observations may offer new opportunities for better understanding the vascular component of dementia in general and Alzheimer's disease in particular. Associations between plasma Aß peptides and SBP & DBP values in the elderly participants in the 3C (n = 445), MONA-LISA (LILLE) (n = 102) and AIBL (n = 323) studies. Adjusted for age, gender, centre, smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score. (DOC) Click here for additional data file. Associations between plasma Aß1-42/Aß1-40 ratio and hypertension in the elderly. Odds ratio (95% CI) for hypertension in the 3C study (n = 265), in the MONA-LISA (LILLE) study (n = 58) and the AIBL study (n = 180). Adjusted for age, gender, centre (when necessary), smoking status, total cholesterol z-score, HDL z-score, creatinine z-score and BMI z-score. (DOC) Click here for additional data file.
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6.  Plasma β-amyloid in Alzheimer's disease and vascular disease.

Authors:  Shorena Janelidze; Erik Stomrud; Sebastian Palmqvist; Henrik Zetterberg; Danielle van Westen; Andreas Jeromin; Linan Song; David Hanlon; Cristina A Tan Hehir; David Baker; Kaj Blennow; Oskar Hansson
Journal:  Sci Rep       Date:  2016-05-31       Impact factor: 4.379

7.  Whole exome sequence-based association analyses of plasma amyloid-β in African and European Americans; the Atherosclerosis Risk in Communities-Neurocognitive Study.

Authors:  Jeannette Simino; Zhiying Wang; Jan Bressler; Vincent Chouraki; Qiong Yang; Steven G Younkin; Sudha Seshadri; Myriam Fornage; Eric Boerwinkle; Thomas H Mosley
Journal:  PLoS One       Date:  2017-07-13       Impact factor: 3.240

8.  Fifteen Years of the Australian Imaging, Biomarkers and Lifestyle (AIBL) Study: Progress and Observations from 2,359 Older Adults Spanning the Spectrum from Cognitive Normality to Alzheimer's Disease.

Authors:  Christopher Fowler; Stephanie R Rainey-Smith; Sabine Bird; Julia Bomke; Pierrick Bourgeat; Belinda M Brown; Samantha C Burnham; Ashley I Bush; Carolyn Chadunow; Steven Collins; James Doecke; Vincent Doré; Kathryn A Ellis; Lis Evered; Amir Fazlollahi; Jurgen Fripp; Samantha L Gardener; Simon Gibson; Robert Grenfell; Elise Harrison; Richard Head; Liang Jin; Adrian Kamer; Fiona Lamb; Nicola T Lautenschlager; Simon M Laws; Qiao-Xin Li; Lucy Lim; Yen Ying Lim; Andrea Louey; S Lance Macaulay; Lucy Mackintosh; Ralph N Martins; Paul Maruff; Colin L Masters; Simon McBride; Lidija Milicic; Madeline Peretti; Kelly Pertile; Tenielle Porter; Morgan Radler; Alan Rembach; Joanne Robertson; Mark Rodrigues; Christopher C Rowe; Rebecca Rumble; Olivier Salvado; Greg Savage; Brendan Silbert; Magdalene Soh; Hamid R Sohrabi; Kevin Taddei; Tania Taddei; Christine Thai; Brett Trounson; Regan Tyrrell; Michael Vacher; Shiji Varghese; Victor L Villemagne; Michael Weinborn; Michael Woodward; Ying Xia; David Ames
Journal:  J Alzheimers Dis Rep       Date:  2021-06-03

9.  Blood Pressure Level Is Associated With Changes in Plasma Aβ1 -40 and Aβ1-42 Levels: A Cross-sectional Study Conducted in the Suburbs of Xi'an, China.

Authors:  Meilin She; Suhang Shang; Ningwei Hu; Chen Chen; Liangjun Dang; Ling Gao; Shan Wei; Kang Huo; Jingyi Wang; Jin Wang; Qiumin Qu
Journal:  Front Aging Neurosci       Date:  2021-06-04       Impact factor: 5.750

10.  Aging and APOE-ε4 are determinative factors of plasma Aβ42 levels.

Authors:  Takumi Nakamura; Takeshi Kawarabayashi; Yusuke Seino; Mie Hirohata; Naoko Nakahata; Sakiko Narita; Ken Itoh; Shigeyuki Nakaji; Mikio Shoji
Journal:  Ann Clin Transl Neurol       Date:  2018-09-07       Impact factor: 4.511

  10 in total

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