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Article

Genetic Predisposition to Alzheimer’s Disease Is Associated with Enlargement of Perivascular Spaces in Centrum Semiovale Region

1
Department of Radiology, Hospital Universitari Sagrat Cor, 08029 Barcelona, Spain
2
Barcelonaβeta Brain Research Center (BBRC), Pasqual Maragall Foundation, 08005 Barcelona, Spain
3
IMIM (Hospital del Mar Medical Research Institute), 08003 Barcelona, Spain
4
Centro de Investigación Biomédica en Red de Fragilidad y Envejecimiento Saludable (CIBERFES), 28029 Madrid, Spain
5
Centro de Investigación Biomédica en Red Bioingeniería, Biomateriales y Nanomedicina, 28029 Madrid, Spain
6
Josep Carreras Leukaemia Research Institute (IJC), 08916 Badalona, Barcelona, Spain
7
Centro de Investigación Biomedica en Red Cancer (CIBERONC), 28019 Madrid, Spain
8
Institució Catalana de Recerca i Estudis Avançats (ICREA), 08010 Barcelona, Spain
9
Physiological Sciences Department, School of Medicine and Health Sciences, University of Barcelona (UB), 08097 Barcelona, Spain
10
Universitat Pompeu Fabra, 08005 Barcelona, Spain
11
Centre for Genomic Regulation (CRG), Barcelona Institute of Science and Technology (BIST), 08003 Barcelona, Spain
12
Department of Experimental and Health Sciences, Institute of Evolutionary Biology (CSIC-UPF), Universitat Pompeu Fabra, 08003 Barcelona, Spain
13
Department of Clinical Genetics, Erasmus University Medical Center Rotterdam, 3015 GD Rotterdam, The Netherlands
*
Authors to whom correspondence should be addressed.
Present address: Department of Clinical Development, Neurodegeneration, H. Lundbeck A/S, Ottiliavej 9, 2500 Valby, Denmark.
The complete list of collaborators of the ALFA Study can be found in the acknowledgements.
Submission received: 26 April 2021 / Revised: 17 May 2021 / Accepted: 19 May 2021 / Published: 27 May 2021
(This article belongs to the Special Issue Genetic Research of Neurodegenerative and Psychiatric Disorders)

Abstract

:
This study investigated whether genetic factors involved in Alzheimer’s disease (AD) are associated with enlargement of Perivascular Spaces (ePVS) in the brain. A total of 680 participants with T2-weighted MRI scans and genetic information were acquired from the ALFA study. ePVS in the basal ganglia (BG) and the centrum semiovale (CS) were assessed based on a validated visual rating scale. We used univariate and multivariate logistic regression models to investigate associations between ePVS in BG and CS with BIN1-rs744373, as well as APOE genotypes. We found a significant association of the BIN1-rs744373 polymorphism in the CS subscale (p value = 0.019; OR = 2.564), suggesting that G allele carriers have an increased risk of ePVS in comparison with A allele carriers. In stratified analysis by APOE-ε4 status (carriers vs. non-carriers), these results remained significant only for ε4 carriers (p value = 0.011; OR = 1.429). To our knowledge, the present study is the first suggesting that genetic predisposition for AD is associated with ePVS in CS. These findings provide evidence that underlying biological processes affecting AD may influence CS-ePVS.

1. Introduction

Perivascular spaces (PVS) are pial-lined and interstitial fluid-filled spaces in the brain surrounding the cerebral vessel walls that can be detectable in vivo by Magnetic Resonance Imaging (MRI) [1].
Enlargement of perivascular spaces (ePVS) in the brain is common but is generally overlooked and is of uncertain pathophysiology. Accumulated evidence suggests that ePVS correlates with aging [2], cognition [3], inflammatory processes [4], and cerebrovascular diseases [5], as well as with neurodegenerative pathologies [6,7]. Specifically, some previous studies have reported an association between ePVS and pathologic features of Alzheimer’s disease (AD) [8,9]. Other studies have reported that the frequency and severity of MRI-visible PVS are greater in AD than in cognitively unimpaired individuals [10,11,12]. However, the relationship between ePVS and AD is still poorly understood.
Identifying whether the genetic basis of AD influences ePVS in cognitively unimpaired individuals may provide additional insights into the neurobiological abnormalities that underlie AD.
The Apolipoprotein E (Apo-E) is a major cholesterol carrier that supports lipid transport. It also has an important role in Aβ metabolism, one of the pathological hallmarks of AD. It is well established that, even in asymptomatic AD stages, the APOE-ε4 allele triggers Aβ accumulation not only in the brain parenchyma but also in the perivascular region, the latter leading to cerebral amyloid angiopathy (CAA), in which blood vessel function is disrupted [13]. In addition, amyloid-independent effects of APOE have been described on tau neurofibrillary degeneration, microglia and astrocyte responses, and blood-brain barrier disruption [14]. In particular, it has been recently shown that APOE-ε4 can also increase blood-brain barrier permeability in the hippocampus and medial temporal lobe, contributing to cognitive decline independently of AD pathology [15]. However, controversial results have been found about its influence in ePVS [16,17].
Along with APOE, the Bridging integrator 1 (BIN1) gene has been identified as an influential risk locus for AD [18,19]. BIN1 is involved in the retrieval of synaptic vesicles, and ubiquitous isoforms of BIN1 participate in inflammatory processes. Specifically, the BIN1 rs744373 polymorphism has been reported as a modulator of tau clearance [20,21], which could provide a possible neural mechanism underlying the association between BIN1 polymorphism and risk for AD. This genetic variant presents two possible alleles, A (major allele) and G (minor allele), the latter being associated with AD and thus considered the risk allele [22,23]. Although BIN1 has been linked with lipid metabolism [24] and neuroinflammatory pathways [25], the exact pathogenic mechanisms of BIN1 in the AD pathophysiological process remain to be determined, and no study to date has examined its involvement in ePVS.
In this study, we aimed to investigate whether APOE and BIN1 are associated with ePVS burden (Figure 1).

2. Material and Methods

2.1. Participants

Participants were drawn from the ALFA study (Alzheimer and Families) carried out in the Barcelonaβeta Brain Research Center [26]. The ALFA study is composed of 2743 cognitively unimpaired participants, mostly adult children of patients with AD, and aged between 45 and 75 years. A subset of 680 participants with available information on BIN1-rs744373 SNP and APOE genotypes, as well as having an MRI examination, were included in this study. The study sample is a large cohort of cognitively unimpaired individuals after an exhaustive neuropsychological and clinical screening procedure; therefore, results should not be confounded by comorbidities of dementia, being the individuals of the study are at a low mean of cardiovascular risk.

2.2. Standard Protocol Approvals, Registrations, and Patient Consents

The study was conducted in accordance with the directives of the Spanish Law 14/2007, of 3rd of July, on Biomedical Research (Ley 14/2007 de Investigación Biomédica). The ALFA study protocol was approved by the Independent Ethics Committee Parc de Salut Mar Barcelona and registered at Clinicaltrials.gov, accessed on 25 May 2021 (Identifier: NCT01835717). All participants accepted the study procedures by signing the study’s informed consent form that had also been approved by the same IRB.

2.3. Genotyping

Genome-wide genotyping was performed using the Illumina Infinium NeuroChip backbone [27], based on a genome-wide genotyping array (Infinium HumanCore-24 v1.0 and Infinium HumanCore-24 v1.2). PLINK was used for the quality control (QC) of genetic data [28]. We applied the following sample QC thresholds: sample missingness rates  > 2%, and heterozygosity less than 4 standard deviations. Additionally, we exclude individuals showing sex discordances and higher genetic relatedness (IBD > 0.185). Further details can be found in Reference [29]. The final genetic data set of the present study consisted of 680 participants of European ethnic origin with available information regarding BIN1-rs744373 polymorphism and APOE genotypes. Departures from Hardy-Weinberg equilibrium and allele frequencies were also inspected. The APOE allelic variants were obtained from allelic combinations of the rs429358 and rs7412 polymorphism [30]. According to the genotypes of these polymorphisms, subjects were classified depending on APOE-ε4 status (non-carriers vs. carriers), the number of ε4 alleles (non-carriers, one ε4 allele, or two ε4 alleles), and APOE allelic variants (ε3ε3, ε2ε3, ε3ε4, and ε4ε4). Subjects were also classified depending on BIN1-rs744373 G allele status (non-carriers vs. carriers).

2.4. Image Acquisition and Rating of ePVS

Scans were obtained with a 3T scanner (Philips Ingenia CX, Eindhoven, Netherlands). The MRI protocol was identical for all participants and included high-resolution 3D T2-weighted structural images: Turbo Spin Echo, 256 × 256, 1 × 1 × 1 mm3 matrix, TR/TE: 2500/264 ms, flip angle = 90°. In addition, a 3D T1-weighted TFE sequence was acquired (voxel size 0.75 × 0.75 × 0.75 mm3, TR/TE: 9.90/4.6 ms, flip angle = 8°), as well as a 3D T2-FLAIR sequence (voxel size 1 × 1 × 1 mm3, TR/TE: 5000/312 ms). Scans were visually assessed for quality and incidental findings by a trained neuroradiologist.
ePVS were quantified independently in basal ganglia (BG) and centrum semiovale (CS) regions by a radiologist based on high-resolution T2-weighted images. The radiologist was blinded to other variables of the study. A visual rating scale used in previous publications [31,32,33,34] was used to code ePVS. Specifically, ePVS were assessed in the slice and hemisphere with the highest number, and rated as 0 (no PVS), 1 (mild; 1–10 PVS), 2 (moderate; 11–20 PVS), 3 (frequent; 21–40 PVS), or 4 (severe; >40 PVS).
Participants were dichotomized according to the severity of the ePVS rating of the BG and CS (degrees 0–2 were categorized as non-severe or 0; degrees 3–4 were categorized as severe or 1). The intra-rater agreement rate of the PVS scale was evaluated using a Kappa-Cohen agreement test on a random sample of 20% of the subjects in the dataset (κ = 0.77, p = 6.02 × 10−8 for BG subscale; and κ = 0.76, p = 8.2 × 10−10 for CS subscale).

2.5. Statistical Analysis

Differences in demographic variables were tested using the χ2 test and F test for gender, age, years of education, number of APOE-ε4 alleles, and BIN1-rs744373 genotype.
The association between APOE genotypes and BIN1 rs744373 polymorphism with the ePVS subscales and with the total scale were assessed by computing odds ratios (OR) using univariate and multivariate logistic regression models corrected by age, sex, and years of education. Dominant genetic models were assumed for BIN1 rs744373. Briefly, in dominant models, homozygous of the major allele (i.e., AA genotype) were compared to heterozygous and homozygous of the minor allele (i.e., AG, GG genotypes).
For APOE genotype, we adjusted three models. In the first model, we compared ε4 carriers vs. non-carriers (APOE status). In the second model, we compared individuals depending on the number of ε4 alleles. Finally, in the third model, we compared ε3ε3 individuals (reference category) vs. ε2ε3, ε3ε4, and ε4ε4. APOE-ε2ε4 individuals were excluded in all analyses. Moreover, we additionally stratified the analysis of BIN1 rs744373 polymorphism by APOE-ε4 status, and we explored interaction effects between BIN1 rs744373 and APOE-ε4 status. To assess the association between demographic variables and ePVS, we additionally computed ORs using logistic regression models.
Statistical significance was set at False Discovery Rate (FDR) corrected p value < 0.05 (Benjamini-Hochberg procedure). All statistical analyses and data visualization were carried out using R version 3.4.4.

3. Results

3.1. Sample Descriptive

Table 1 and Table 2 show the characteristics of the sample. We divided the participants according to the severity of their ePVS rating in the BG and CS. We obtained two different categories for each region, with 550 non-severe and 130 severe BG ratings, and 227 non-severe and 453 severe CS ratings.

3.2. APOE and ePVS

The APOE-ε4 allele was present in 280 individuals (41% of the sample). Of them, 239 (35% of the sample) were APOE-ε4 heterozygous, and 41 (6% of the sample) APOE-ε4 homozygous. In both subscales, the presence of APOE-ε4 alleles was generally, more frequent in severe cases, while the APOE-ε3ε3 genotype was, in general, more frequent in non-severe cases (Table 1 and Table 2).
We did not observe a significant association between APOE and ePVS. Specifically, significant differences between being an ε4 carrier, and the ePVS subscales in both regions (BG p value = 0.379, CS p value = 0.445) were not found. In addition, we did not observe significant associations between the number of ε4 alleles (0, 1, or 2) and the subscales (BG p value = 0.546 and 0.088, CS p value = 0.475 and 0.174). Finally, significant associations between APOE genotype and the subscales were not found either (Table 3).

3.3. BIN1-rs744373 and ePVS

The BIN1 rs744373-G allele was present in 345 individuals (51% of the sample). In the CS subscale, this allele was more frequent in the severe category (57%) than in the non-severe one (47%). We observed significant association of the BIN1-rs744373 SNP in the CS subscale (p value = 0.022; OR = 1.481), suggesting that G-allele carriers have an increased risk of PVS enlargement in comparison with A-allele carriers. These results remained significant in stratified analysis by APOE-ε4 status, albeit only in ε4 allele carriers (p value = 0.013; OR = 2.009) (Figure 2).
No significant associations were found in the BG region (Table 3), neither interactive significant associations between BIN1-rs744373 and APOE genotypes.

3.4. Age-Dependent Effects

We observed significant effects of age in both subscales (p value < 0.001), suggesting that older people are more likely to have ePVS in these regions irrespective of genetic predisposition to AD (Table 3). These results were independent of genetic associations (Figure 2). Years of education were significantly associated with CS-ePVS only in APOE-ε4 non-carriers (OR = 1.01, p value = 0.045). No significant associations were found for sex.

4. Discussion

In this study, we investigated the association between ePVS and relevant genetic factors related to AD (i.e., the APOE genotype and BIN1-rs744373 polymorphism). We found significant associations between BIN1-rs744373 in the CS region, suggesting that G-allele carriers, which have OR = 1.7 of developing AD, have an increased risk of ePVS in comparison with A-allele carriers. These results were significant only in APOE-ε4 carriers, suggesting that only those with a higher genetic predisposition to AD are associated with ePVS in CS. In addition, we did not find significant associations between APOE genotype or status and ePVS, which is in line with previous studies [11,35] and suggests that a multiple genetic predisposition to AD may affect ePVS.
To our knowledge, there were no previous studies that investigated the association of BIN1 and ePVS. This gene is known for encoding a set of proteins generated by alternative RNA splicing with functions in membrane and actin dynamics, cell polarity, and stress signaling and has been identified as a relevant significant risk locus for late-onset AD [18,19]. Other studies have found that BIN1 is involved in the neural degeneration of hippocampal, middle temporal, posterior cingulate, and precuneus regions, influencing the metabolism of glucose in the temporal lobe throughout the AD process [36]. Furthermore, other studies have found that the BIN1 locus is strongly associated with poorer memory performance without observing associations with brain MRI markers. These results led to the hypothesis that BIN1 may exert its influence on the development of AD via mechanisms not visualized by structural MRIs, like amyloid-deposition or tau-pathology [37,38]. Indeed, other researchers found evidence that BIN1 could contribute to the progression of AD-related tau pathology by altering tau clearance and promoting the release of tau-enriched extracellular vesicles by microglia via exosomes secretion [18] and by increasing aggregate internalization by endocytosis [37].
However, the characteristics of our study do not allow us to disentangle the molecular mechanisms associated with the observed effects of APOE and BIN1 on ePVS. Unfortunately, biomarkers of AD pathology were not available in this sample to unravel whether the observed effects are mediated by amyloid and/or tau pathology. Given the main roles of APOE and BIN1, it could be speculated that, in APOE-ε4 carriers, who are expected to harbor higher levels of amyloid pathology, the presence of the BIN1-rs744373 polymorphism can present with even further higher levels of amyloid and/or tau and lead to a disruption of the interstitial fluid dynamics in the brain. An alternative putative mechanism may involve the endosome-lysosome pathway resulting in an earlier and/or more severe AD-related neurodegeneration, which has also been associated with ePVS. However, the level of neurodegeneration in our participants is expected to be rather small, if any, given that they are cognitively unimpaired. Finally, since APOE, BIN1, and ePVS have all been reported to play an important role in the immune response of the brain, it could also be hypothesized that neuroinflammatory processes might be contributing to the effects observed in our work. Further studies, including biomarkers of core AD pathology and neuroinflammatory mechanisms, which are currently being collected in this sample, may help address these questions.
Another important aspect of our results is the dependence on ePVS topography. For instance, we found significant results in the CS region, but not in the BG. Interestingly, some previous studies reported that CS-ePVS appears to be associated with a clinical diagnosis of AD [12,39] (i.e., cerebral Aβ pathologies), whereas ePVS in the BG appears to be associated with subcortical vascular cognitive impairment [40,41]. However, literature on this is scarce, and some of these results were obtained from the analysis of heterogeneous populations (i.e., showing considerable differences correlating with the presence of cardiovascular risk factors). These differences make it difficult to extrapolate from the results, and this issue requires further research in homogenous populations.
A number of limitations in this study must be considered. Particularly challenging was the evaluation of MRIs with very small ePVS that can be seen as faint, indistinct, high signal structures, since those can cause a change from one category to another if considered. In addition, we should take into account that ePVS are a crude simplification of the complex anatomical brain patterns, and are not uniform across the lifespan. Moreover, the results should be interpreted considering the unavailability of a replication sample. Finally, the study sample belongs to a cognitively unimpaired population; thus, the identified associations cannot be interpreted to exert a causal relationship with the clinical presentation of AD.
However, the characteristics of the studied cohort, as well as the higher prevalence of the G allele of BIN1-rs744373 polymorphism and the APOE-ε4 allele, allow us achieving an unprecedented statistical power in comparison with studies with similar number of individuals that are genetically closer to the general population [42].
In conclusion, our findings suggest that genetic risk factors for AD are associated with ePVS in CS. These results may provide evidence that the biological pathways affecting AD may influence ePVS in CS.

Author Contributions

Major role in the quantification of ePVS; analyze the data, interpret the data and draft the manuscript were conducted by I.C. Acquisition of neuroimaging data was performed by G.O. and C.F. Acquisition of genetic data by C.M., M.C.d.M., D.P., M.E. Major role in the acquisition of ALFA study data was conducted by J.L.M. Writing and editing by A.N. and R.G. Conceptualization of the study, interpretation of the results, writing and supervise the project were done by J.D.G. and N.V.-T. All authors have read and agreed to the published version of the manuscript.

Funding

The project leading to these results has received funding from “la Caixa” Foundation (ID 100010434), under agreement LCF/PR/GN17/50300004, the Alzheimer’s Association and an international anonymous charity foundation through the TriBEKa Imaging Platform project (TriBEKa-17-519007) and the Health Department of the Catalan Government (Health Research and Innovation Strategic Plan (PERIS) 2016-2020 grant# SLT002/16/00201). Additional support has been received from the Universities and Research Secretariat, Ministry of Business and Knowledge of the Catalan Government under the grant no. 2017-SGR-892. All CRG authors acknowledge the support of the Spanish Ministry of Science, Innovation and Universities to the EMBL partnership, the Centro de Excelencia Severo Ochoa and the CERCA Programme / Generalitat de Catalunya. JDG is supported by the Spanish Ministry of Science and Innovation (RYC-2013-13054). NV-T is funded by a postdoctoral grant, Juan de la Cierva Programme (FJC2018-038085-I), Ministry of Science and Innovation—Spanish State Research Agency.

Institutional Review Board Statement

The ALFA study was approved by the Independent Ethics Committee “Parc de Salut Mar”, Barcelona, and registered at Clinicaltrials.gov (Identifier: NCT01835717).

Informed Consent Statement

All participating subjects signed the study’s informed consent form that had also been approved by the Independent Ethics Committee “Parc de Salut Mar”, Barcelona.

Data Availability Statement

To protect participants’ privacy, individual level data cannot be made publicly available. Researchers who wish to use data from the ALFA study must obtain approval from the ALFA study Management Team ([email protected]).

Acknowledgments

This publication is part of the ALFA (ALzheimer and FAmilies) study. The authors would like to express their most sincere gratitude to the ALFA project participants, without whom this research would have not been possible. Collaborators of the ALFA study are: Müge Akinci, Annabella Beteta, Raffaele Cacciaglia, Alba Cañas, Irene Cumplido, Carme Deulofeu, Ruth Dominguez, Maria Emilio, Carles Falcon, Karine Fauria, Sherezade Fuentes, Oriol Grau-Rivera, Laura Hernandez, Gema Huesa, Jordi Huguet, Iva Knezevic, Eider M. Arenaza-Urquijo, Paula Marne, Tania Menchón, Marta Milà-Alomà, Grégory Operto, Albina Polo, Sandra Pradas, Blanca Rodríguez-Fernández, Aleix Sala-Vila, Gemma Salvadó, Gonzalo Sánchez-Benavides, Anna Soteras, Laura Stankeviciute, Marc Suárez-Calvet, and Marc Vilanova.

Conflicts of Interest

J.L.M. is currently a full time employee of Lundbeck and priorly has served as a consultant or at advisory boards for the following for-profit companies, or has given lectures in symposia sponsored by the following for-profit companies: Roche Diagnostics, Genentech, Novartis, Lundbeck, Oryzon, Biogen, Lilly, Janssen, Green Valley, MSD, Eisai, Alector, BioCross, GE Healthcare, ProMIS Neurosciences. The remaining authors declare that they have no conflict of interest.

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Figure 1. Schema of the study. Hypothesized etiologies for enlargement of perivascular spaces. Created with BioRender.com, accessed on 10–22 May 2021.
Figure 1. Schema of the study. Hypothesized etiologies for enlargement of perivascular spaces. Created with BioRender.com, accessed on 10–22 May 2021.
Genes 12 00825 g001
Figure 2. Associations (Odds Ratios) between enlargement of Perivascular Spaces in basal ganglia and centrum semiovale regions and BIN1-rs744373 polymorphism, stratified by APOE genotypes. Models were adjusted by age, sex, and years of education. p-values were corrected using the false discovery rate (FDR) method. *** p-value < 5 × 10−5; ** p-value < 5 × 10−3; * p-value < 5 × 10−2.
Figure 2. Associations (Odds Ratios) between enlargement of Perivascular Spaces in basal ganglia and centrum semiovale regions and BIN1-rs744373 polymorphism, stratified by APOE genotypes. Models were adjusted by age, sex, and years of education. p-values were corrected using the false discovery rate (FDR) method. *** p-value < 5 × 10−5; ** p-value < 5 × 10−3; * p-value < 5 × 10−2.
Genes 12 00825 g002
Table 1. Characteristics of the study’s sample according to basal ganglia rating. Mean and SD are shown for continuous variables.
Table 1. Characteristics of the study’s sample according to basal ganglia rating. Mean and SD are shown for continuous variables.
Non-Severe BG Rating (n = 550)Severe BG Rating (n = 130)Total (n = 680)p2, F)
Age (m ± SD; years)58.99 (±6.5)64.02 (±5.81)59.95 (±6.67)0.120
Sex (female), n (%)374 (68%)86 (66%)460 (67%)0.763
Education (m ± SD; years)13.58 (±3.42)13 (±3.41)13.47 (±3.42)0.987
APOE-ε4 carriers, n (%)221 (40%)59 (45%)280 (41%)0.324
Number of APOE-ε4 alleles, n (%)0:329 (60%);
1:192 (35%);
2:29 (5%)
0:71 (55%);
1:47 (36%);
2:12 (9%)
0:400 (59%);
1:239 (35%);
2:41 (6%)
0.195
APOE-ε4 isoforms, n (%)23:28 (5%);
33:297 (54%);
34:180 (33%);
44:29 (5%)
23:7 (5%);
33:60 (46%);
34:46 (35%);
44:12 (9%)
23:35 (5%);
33:357 (52%);
34:226 (33%);
44:41 (6%)
0.068
BIN1-rs744373 G
allele carriers n (%)
280 (51%)65 (50%)345 (51%)0.929
Legend: n, sample size; m, mean; SD, standard deviation; p, p value; BG, basal ganglia.
Table 2. Characteristics of the study’s sample according to Centrum Semiovale rating. Mean and SD are shown for continuous variables.
Table 2. Characteristics of the study’s sample according to Centrum Semiovale rating. Mean and SD are shown for continuous variables.
Non-Severe CS Rating (n = 227)Severe CS Rating (n = 453)Total (n = 680)p2, F)
Age (m ± SD; years)58.06 (±5.75)60.9 (±6.9)59.95 (±6.67)0.002
Sex (female), n (%)155 (68%)305 (67%)460 (67%)0.87
Education (m ± SD; years)13.21 (±3.47)13.6 (±3.39)13.47 (±3.42)0.663
APOE-ε4 carriers, n (%)87 (38%)193 (43%)280 (41%)0.323
Number of APOE-ε4 alleles, n (%)0:140 (62%);
1:77 (34%);
2:10 (4%)
0:260 (57%);
1:162 (36%);
2:31 (7%)
0:400 (59%);
1:239 (35%);
2:41 (6%)
0.348
APOE genotypes, n (%)23:12 (5%);
33:126 (55%);
34:73 (32%);
44:10 (4%)
23:23 (5%);
33:231 (51%);
34:153 (34%);
44:31 (7%)
23:35 (5%);
33:357 (52%);
34:226 (33%);
44:41 (6%)
0.776
BIN1-rs744373 G
allele carriers n (%)
130 (57%)215 (47%)345 (51%)0.019
Legend: n, sample size; m, mean; SD, standard deviation; p, p value; CS, Centrum Semiovale.
Table 3. Associations between enlargement of Perivascular Spaces in basal ganglia and centrum semiovale. rs744373 polymorphisms and APOE genotype. Models were adjusted by age, sex, and education. False-discovery rate-corrected p-values.
Table 3. Associations between enlargement of Perivascular Spaces in basal ganglia and centrum semiovale. rs744373 polymorphisms and APOE genotype. Models were adjusted by age, sex, and education. False-discovery rate-corrected p-values.
Basal GangliaCentrum Semiovale
OR (IC 95%)p-Value OR (IC 95%)p-Value
Age (years)1.121 [1.087;1.155]<0.0011.071 [1.043;1.099]<0.001
Sex
MaleRef.Ref.Ref.Ref.
Female1.17 [0.721;1.626]0.4371.044 [0.743;1.474]0.743
APOE genotypes
ε3ε3Ref.Ref.Ref.Ref.
ε2ε31.256 [0.481;2.879]0.6201.039 [0.506;2.239]0.918
ε3ε41.265 [0.822;1.937]0.2821.142 [0.803;1.631]0.460
ε4ε42.057 [0.956;4.193]0.0641.672 [0.816;3.721]0.165
APOE-ε4
non-carriersRef.Ref.Ref.Ref.
carriers1.19 [0.839;1.818]0.3791.194 [0.862;1.658]0.445
APOE-ε4 genotypes
0 allelesRef.Ref.Ref.Ref.
1 allele1.135 [0.750;1.706]0.5461.132 [0.806;1.596]0.475
2 alleles1.927 [0.902;3.893]0.0881.651 [0.809;3.663]0.174
BIN1-rs744373 (dominant model)
AA genotypeRef.Ref.Ref.Ref.
AG + GG genotype1.037 [0.707;1.522]0.8481.481 [1.075;2.049]0.022
Legend: Ref., Reference category; OR, Odds Ratio. Dominant models tested: BIN1-rs744373 GG group vs. BIN1-rs744373 GA and AA group.
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Ciampa, I.; Operto, G.; Falcon, C.; Minguillon, C.; Castro de Moura, M.; Piñeyro, D.; Esteller, M.; Molinuevo, J.L.; Guigó, R.; Navarro, A.; et al. Genetic Predisposition to Alzheimer’s Disease Is Associated with Enlargement of Perivascular Spaces in Centrum Semiovale Region. Genes 2021, 12, 825. https://0-doi-org.brum.beds.ac.uk/10.3390/genes12060825

AMA Style

Ciampa I, Operto G, Falcon C, Minguillon C, Castro de Moura M, Piñeyro D, Esteller M, Molinuevo JL, Guigó R, Navarro A, et al. Genetic Predisposition to Alzheimer’s Disease Is Associated with Enlargement of Perivascular Spaces in Centrum Semiovale Region. Genes. 2021; 12(6):825. https://0-doi-org.brum.beds.ac.uk/10.3390/genes12060825

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Ciampa, Iacopo, Grégory Operto, Carles Falcon, Carolina Minguillon, Manuel Castro de Moura, David Piñeyro, Manel Esteller, Jose Luis Molinuevo, Roderic Guigó, Arcadi Navarro, and et al. 2021. "Genetic Predisposition to Alzheimer’s Disease Is Associated with Enlargement of Perivascular Spaces in Centrum Semiovale Region" Genes 12, no. 6: 825. https://0-doi-org.brum.beds.ac.uk/10.3390/genes12060825

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