Research Article
Depression and anxiety symptoms in older adults: a joint association study of candidate genes
https://doi.org/10.21203/rs.3.rs-1979357/v1
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mental disorder
genetic variants
vulnerability
susceptibility
In recent decades, there has been an increase in the population aged over 60 years in relation to the general population, and thus, as in many other countries, the percentage of older people in the Brazilian population has increased, currently comprising 28 million older people (Bezerra 2012; Bellora et al. 2021). In addition to the appearance of several pathologies in this age group, depression and anxiety are reported as two of the main mental disorders in older adults (Alexandrino-Silva et al.2019; Morin et al. 2019; Kiely et al. 2019).
According to the World Health Organization (WHO), depression is a public health problem (Bottino et al. 2012; Morin et al. 2019; Davies et al. 2019), affecting approximately 264 million people, including older adults, and it is also one of the main causes of disability in life, generating emotional suffering and worsening quality of life (Bottino et al. 2012; Morin et al. 2019; Davies et al. 2019). In a 2019 Brazilian survey, 13.2% of Brazilian older adults between 60 and 64 years of age presented depression – (IBGE 2018), with a greater prevalence in women (Leach et al. 2008; Faravelli et al. 2013; Sramek et al. 2016).
Depressive disorders present heterogeneity in the presentation of symptoms (Bottino et al. 2012; Alexandrino-Silva et al.2019; Kiely et al. 2019), where the most common symptoms are: sleep and weight alterations, feelings of worthlessness and guilt, fatigue, loss of energy, agitation or psychomotor retardation, lack of concentration, and also suicidal ideation (Rombaldi et al. 2012).
In addition, in older people, the symptoms of depression can often be confused with dementia, and careless clinical observation in older adults can result in inadequate treatment (Schuch et al. 2016; Curran et al. 2019).
Anxiety disorder is also a widespread problem, which is already a prevalent disorder for this age group, contributing to the reduction in quality of life, and restricting social life and independence (Semedo et al. 2016; Machado et al. 2016; Balsamo et al. 2018). The most common symptoms of anxiety disorder are: fear, anguish, excessive worry, restlessness, sleep disturbances, irritability, difficulty concentrating, muscle tension, and tiredness (Saade et al. 2019).
There are several reports on the comorbidity of depression and anxiety, that is, both disorders can be present together in up to 50% of cases (Tiller 2013; Balsamo et al. 2018). Naturally, the combination of depressive and anxious symptoms can contribute to worsening of the general clinical framework, disabling these patients to a greater extent, with larger physical, social, and psychological damages, which can even make treatment difficult (Balsamo et al. 2018; An et al. 2019).
The participation of the genetic component is present for both depressive disorder and anxiety disorder (Gutayson et al. 2020). The presence of a gene or a set of them in the pathological mental process has been investigated in several studies, including in studies of the phenotypic association of only depressive or anxious symptoms with genetic markers (Gutayson et al. 2020).
It is known today that the relationship of genes in the development of depressive and anxious symptoms is complex, and that these disorders are also influenced by environmental factors (cultural, psychological, among others) in addition to genetic factors (Dunn et al. 2015; Freitas-Silva et al. 2016). The genetic heritability for depressive disorder is estimated to be around 37% (Sullivan et al. 2000), while for anxiety it is around 35% (Sawyers et al. 2019).
More recent association studies have scanned the entire genome of an individual, for example, a million genetic markers, although the results are still inconclusive. In addition, there is a very small number of molecular genetic studies in the older population (over 60 years of age) (Sawyers et al. 2019).
Based on the international literature, we initially selected 11 genes that were associated with psychiatric disorders, including depression and/or anxiety, as follows: (a) the gene encoding the serotonin transporter protein (5HTT or SLC6A4) has been selected as a candidate gene in several studies investigating various psychiatric phenotypes (Luddington et al. 2009; Fratelli et al. 2020). The involvement of serotonin transport has been proposed as an important factor in the development of depressive disorders (Luddington et al. 2009; Fratelli et al. 2020). ; (b) the gene for apolipoprotein E (APOE), a lipoprotein transport glycoprotein that is involved with susceptibility to Alzheimer's disease (AD) (Feng et al. 2015; Kitzlerová et al. 2018). Studies have reported that the epsilon 4 allele, in addition to being a risk factor for the development of AD, also contributes as a risk factor for depression (Lavretsky et al. 2003; Bruke et al. 2018); (c) the cardiovascular system was also associated with a risk for the development of depression, the gene AGTR1 (Angiotensin II Receptor 1) is the most studied for this association (Saab et al. 2007; Gabril et al. 2011). Some studies report that depression and dementia share similar risk factors and common pathogenetic history, including cardiovascular risk factors (Saab et al. 2007); (d) another gene widely investigated in the literature is the Brain-Derived Neurotrophic Factor (BDNF), the most studied polymorphism is rs6265, known as Val66Met (where a guanine base is replaced by adenine at position 196, leading to the exchange of the amino acid valine for methionine at codon 66). There are reports in the literature associating this substitution of valine for methionine with susceptibility to the development of psychiatric disorders, including depressive disorders (Caldieraro et al. 2018; Youssef et al. 2018; Bassi et al. 2018; Aldoghachi et al. 2019); (e) the catechol-O-methyltransferase (COMT) gene is another relevant research target for depression and anxiety disorders. The COMT-encoded enzyme plays a key role in the degradation of catecholamines (adrenaline, noradrenaline, and dopamine) (Cao et al. 2018; Pigoni et al. 2019). Previous studies indicate that the alteration in these neurotransmissions of the dopaminergic system can lead to some symptoms of depressive frameworks (Ohara et al. 1998; Massat et al. 2011); (f) some studies have suggested that folate deficiency, a cofactor in homocysteine metabolism, can lead to hyperhomocysteinemia, and this enzymatic insufficiency would be associated with the rs1801133 (C677T) and rs1801131 (A1298C) polymorphisms of the gene MTHFR (methylenetetrahydrofolate reductase), suggesting that as a result, these polymorphisms may be associated with depression (Wu et al. 2013; Sayadi et al. 2016; Wan et al. 2018); (g) it has also been proposed that alterations in the signaling of the pathways of the target protein of rapamycin (MTOR) are involved in difficulties in the mechanisms of learning, memory and also, psychiatric disorders, including depressive symptoms (Frias et al. 2006; Réus et al. 2015; Ignácio et al. 2016),. Finally, some studies have associated increased levels of inflammatory cytokines and their soluble receptors in peripheral blood in individuals with anxiety, mood, and depressive disorders (Kang et al. 2015; Michopoulos et al. 2017; Felger et al. 2018). We investigated cytokines that were proposed by some studies as a risk factor for depression and/or anxiety, being (h) interleukin 6 (IL-6), (i) interleukin 10 (IL-10), (j) C-reactive protein (CRP), and (k) Tumor Necrosis Factor (TNF) (Howren et al. 2009; Kim et al. 2012; Udina et al. 2013; Paolucci et al. 2018; Naudé et al. 2018; Alemeida et al. 2020).
After selecting the 27 genetic markers of the 11 candidate genes described above, an association study was carried out between these markers in a population-based design, involving older people aged 60 years or over, and their correlation with depressive and/or anxious symptoms. A cognitive assessment was included in the analysis, as alterations in cognition are frequently reported in older adults (presence of cognitive deficit or dementia).
Older individuals who were attended by Basic Health Units (UBS) in the Butantã region in the city of São Paulo, Brazil were selected for the study. Initially, all the older adults (individuals aged 60 years or older) were screened for subsyndromal symptoms of depression and/or anxiety. All participants signed an informed consent form and the project was approved by the local research ethics committee of the Hospital das Clínicas- Faculdade de Medicina da Universidade de São Paulo (HC-FMUSP) – 05403-000, FAPESP number − 2012/50010-0.
For the screening of depressive symptoms, we used the CES-D (Center for Epidemiologic Studies Depression Scale) (Breslau 1985). This scale evaluates the feelings and behaviors of the older adult arising over the previous two weeks (Beekman et al. 1997; Bastitoni et al. 2010). For this scale, the majority of studies use a value equal to or greater than 16 as a cut-off point, however, this is not a rule since other studies used lower cut-off points, such as 13 (Lewinsohn et al. 1997) or a higher cut-off point of 20 (Vilagut et al. 2016). This decision depends on the socio-economic, cognitive, and cultural characteristics of the sample evaluated.
consisting of 20 items in which the older person marks the answer declaring to agree or disagree with the information presented (Pachana et al. 2007; Martiny et al. 2011).
The MMSE (Mini Mental State Examination) was used for the cognitive screening of the older adults (Folstein et al. 1975). This test has the ability to assess five areas of cognition: orientation, registration, attention and calculation, and recall, and language (Bottino et al. 2009; Brucki et al. 2003).
The flowchart (Fig. 1) presents the scheme of selection of the older adults according to the sampling, inclusion and exclusion criteria, and screening scales (CES-D, GAI, and MMSE).
Laboratory Methodology
Approximately 5mL (milliliters) of whole blood were collected by venipuncture of a peripheral vein, in tubes containing EDTA anticoagulant (ethylenediamine tetraacetic acid) and were processed and stored in the blood bank of the Laboratório de Patologia Clínica do Instituto de Psiquiatria da Faculdade de Medicina do Hospital das Clínicas (IPq-HC-FMUSP).
We used DNA (deoxyribonucleic acid) as the genetic material. DNA extraction was performed using the Salting-out technique (Lahiri et al. 1991) and after the extraction we performed purification of the DNA samples. The genetic material was evaluated for its quality and integrity.
DNA genotyping was performed with 27 genetic markers from 11 candidate genes for depression and anxiety disorders. We used the real-time PCR technique for genotypic analysis of polymorphisms, except for the polymorphic variant of the promoter region (5HTTLPR) which we performed by conventional PCR. The table below (table 1) represents the chosen genes and their respective polymorphisms and alleles.
Statistical analysis
For the analysis in our study, we used the median of the CES-D, GAI, and MMSE scales. The median was calculated from the score obtained in each scale for the 874 older adults. The median value was established in two categorical values; zero (0) or one (1), to indicate a value lower or higher than the median, as shown in detail in table 2.
Using a binary configuration model GAI+2CES-D+4MMSE, table 3 demonstrates the only possible combinations between the categorical values for the CES-D, GAI, and MMSE scales, thus resulting in eight possible combinations that we denominate Depressive and/or Anxiety Symptomatology Groups (DASG).
The Hardy-Weinberg test (Chi square test; p ≤ 0.05) was performed to determine whether the distribution of alleles and their respective genotypes in the population were in balance. In this way, we continue n sequence with the individual and joint analysis of genetic markers.
Genetic markers – statistical analysis
The 27 genetic markers were analyzed in steps. In the first step each polymorphism was analyzed for each of the eight DASG groups. From the genotypic frequencies, the observed allele frequencies were calculated and according to the Hardy-Weinberg equilibrium (H-W-E) the expected genotypes were calculated. Pearson's chi-square test was performed at a significance level of 5%. When finding an association rejecting H0 at 5%, a chi-square test was performed to compare the rejected group with the other non-rejected groups.
In parallel, we carried out a specific approach to the analysis of APOE polymorphisms (rs429358 and rs7412) for the alleles (ɛ2, ɛ3 e ɛ4), analyzed in relation to the Hardy-Weinberg equilibrium (H-W-E) by Pearson's chi-square test. The general characteristics between APOE genotypes were described as observed numbers and compared between groups by one-way ANOVA Student´s test. The analysis was performed in SPSS v26 and we considered a statistically significant value of ≤0,05.
Joint analysis of genetic markers
The pooled analysis of polymorphisms was performed after the individual analysis. Pearson's chi-square test was also used for genetic markers that showed significant results in the individual analysis. We considered the value of p ≤0.05.
In total, 924 blood samples were collected from the 2,503 older people interviewed. Of these collected samples, 50 were excluded, for reasons such as duplicate samples, older people under the age of 60 years, and DNA extractions with poor quality, with a final number of 874 participants.
Genotypic analysis was performed for the 27 polymorphisms. The value of the total number of older people (value of “n”) was different for each genetic marker, as shown in table 4, because some samples showed uncertain results in the PCR amplification results, and were therefore excluded.
Depressive and/or Anxious Symptomatology Groups
For the CES-D, GAI, and MMSE scales, the median value was calculated to establish two categorical values, set at zero (0) and one (1). For CES-D and GAI, we categorized the values above the median as zero (0), and the values below the median as one (1). In contrast, for the MMSE scale, the categorical value zero (0) was adopted for score values below the median, and the categorical value one (1) for values above the median. Table 5 presents the median result and the categorical values for each scale.
The association of this categorization is due to the scale scores, since, for both the CES-D and GAI scales, the increase in the score is indicative of depressive and anxious symptomatology, while on the MMSE scale, the decrease in the score indicates lower cognitive capacity.
Due to the binary configuration model (GAI+2CES-D+4MMSE), we obtained unique combinations of the categorical values of the applied medians, which resulted in eight distinct categories and allowed the construction of the Depressive and/or Anxious Symptomatology Groups of the study (Table 6).
The 874 older adults in the study were distributed according to the median scores for each scale (Table 7).
Results of the individual analysis of genetic markers
All 27 polymorphisms were in Hardy-Weinberg equilibrium, so we proceeded with the chi-square analysis. In this individual analysis, we evaluated the possible association between the genotypes of the genetic markers and the DASG, considering statistical significance at the 5% level.
Tables 8 to 16 present the results of the analysis performed on the distribution of genotypes and the probability of alleles in association with the eight DASG groups that were significant at 5% for a given group.
Some polymorphisms were statistically rejected at 5% for some DASG groups; rs2020933 for group 1 (table 8); rs8071667 for group 2 (table 9); rs5186 for group 0 (table 10); rs6265 for group 4 (table 11); rs165599 for group 3 and also for group 7 (table 12); rs1417938 for group 0 (table 13); rs1800795 for group 4 (table 14); rs1800896 for group 0 (table 15); and the polymorphism rs2295080 for group 0 (table 16).
A new chi-square test was performed for these genetic markers, in which we compared the significant group against the other non-significant groups. Tables 17 to 21 present the results obtained for the polymorphisms.
As shown in tables (17 to 21), of the nine polymorphisms that presented results different from the expected p ≤ 0.05 of the groups regarding the distribution of genotypes, only four of these genetic markers presented a statically significant p value when the group with the rejected H0 was compared to the non-rejected groups. Therefore, for our individual analysis, the polymorphisms that presented statistically significant results were: rs8071667 (p=0.03) of the 5HTT gene associated with group 2; rs6265 (p=0.004) of the BDNF gene associated with group 4; rs165599 (p= 0.023) of the COMT gene associated with groups 3 and 7; and finally, rs1417938 (p= 0.006) of the CRP gene associated with group 0.
For the rs165599 polymorphism in the COMT gene, two groups presented rejected H0, being group 3 and group 7. As shown in tables 19 and 20, we performed a chi-square test where we placed group 3 against group 7 to test whether they should be aggregated or not in comparison with the other groups. For both tests, the two groups remained associated.
The table below presents the analysis of the rs429358 and rs7412 polymorphisms of the APOE gene both in association with the alleles ɛ2, ɛ3, and ɛ4 and in association with genotypes ɛ2/ɛ2, ɛ2/ɛ3, ɛ2/ɛ4, ɛ3/ɛ3, ɛ3/ɛ4, and ɛ4/ɛ4 (table 22).
Results of the joint analysis of genetic markers
For the joint analysis of the polymorphisms, we used the basis of the individual analysis of each one of them. The analysis was performed by combining the three genotypes of the polymorphisms and performing the general chi-square test for the eight DASG groups, as shown in Table 23.
In the current study, we investigated candidate genes that were reported to be associated with depression and/or anxiety in studies in the literature, that is, genetic markers of susceptibility or vulnerability to the manifestation of these symptoms.
The 27 polymorphisms studied are distributed in 11 distinct genes, namely: 5HTT, APOE, AGTR1, BDNF, COMT, CRP, IL6, IL10, MTHFR, MTOR, and TNF. In Brazil, this study is pioneering in investigating the joint association of candidate gene polymorphisms in a population-based sample of older people. Furthermore, for the analysis of the results, we developed a specific approach based on the median value of the applied scales (CES-D, GAI, and MMSE). We denominated these “Depressive and/or Anxious Symptomatology Groups” (DASG), with the main strategy of this study being the analysis of the association between the investigated polymorphisms and the eight groups formed.
The DASG was a technique deemed necessary to be developed due to the difficulty of practically no Brazilian studies in this area for this specific type of population, and in this way, being able to create references of cut-off points for the CES-D and GAI scales. That is, for the CES-D scale, the majority of international studies use the cut-off value equal to or greater than 16, however, some studies use a lower cut-off point, such as 13 (Lewinsohn et al. 1997), and also while other studies using the highest cut-off point (Vilagut et al. 2016). These differences in the cut-off point for studies using the CES-D are necessary due to different characteristics (socio-economic, educational, and cultural levels) of the samples evaluated. For the Brazilian population, the MMSE scale has different established cut-off points. In addition, several versions of the MMSE adopted the level of education as a criterion to establish the cut-off point (Melo and Barbosa 1015).
The DASG sought to identify a possible association of polymorphisms and groups subdivided according to the medians of the applied scales. Thus, this DASG classification resulted in eight distinct groups, where we considered group 0 as the worst classification of the medians and group 7 as the best, bearing in mind that, for CES-D and GAI, the increase in the score is indicative of depressive and anxious symptomatology, respectively, while for the MMSE scale the decrease is indicative of cognitive deficit. Through this approach, we were able to better evaluate the results of the investigated genetic markers, that is, to reduce the chances of a false positive. It is important to note that although the older adults in our study with MMSE scores below the median may present mild symptoms of cognitive deficit, there will be no cases of severe symptoms or even dementia, as respondents with an MMSE score below 13 (cut-off point for screening) were excluded.
Of the 27 studied polymorphisms of the 11 candidate genes for depressive and/or anxious symptoms, only four presented statistically significant results at the 5% level (p≤ 0.05) when analyzed individually. The four polymorphisms were: 5HTT gene rs8071667 for DASG group 2 (p=0.03); BDNF gene rs6265 for group 4 (p=0.004); rs165599 of the COMT gene for groups 3 and 7 (p=0.023) and the rs1417938 polymorphism of the CRP gene for group 0 (p=0.006).
Several studies in the literature observe the possible association with depression of the serotonin transporter gene (5HTT), however, the number of reports of an association involving depression and anxiety is still low (Nordquist and Oreland 2010; Fratelli et al. 2020). A study in 2009 investigated the rs8071667 variant and plasma levels of interleukin-6 with depressive symptoms in twin men aged 54 years, and the lowest frequency allele (T) of this variant was statistically significant p=0.008 (Su et al. 2009). In our study, the same polymorphism was statistically significant p=0.03 associated with group 2 of the DASG, a group consisting of 41 individuals with anxious symptoms and cognition below the median, but without depressive symptoms.
For the BDNF gene, the associated variant rs6265 was also statistically significant in our first analysis, p=0.004, but associated with group 4 of the DASG, a group composed of 181 older people who had symptoms of both depression and anxiety, but without cognitive symptoms (scores above the median for the MMSE scale). There is a report in the literature involving Argentine, American, Brazilian (Bassi et al. 2018; Aldoghachi et al. 2019) and Malay populations associating the A (Met) allele with depression, even though BDNF protein levels are either increased or decreased for these patients (Caldieraro et al. 2018; Aldoghachi et al. 2019). Another study in 2018, investigated this variant (rs6265) in depressed patients, and the results showed the presence of the G (Val) allele in most of these participants (Bassi et al. 2018). Therefore, in the literature we found both the A (Met) and the G allele (Val) associated with the risk of developing depressive disorders.
The rs165599 variant of the COMT gene was also statistically significant for two DASG groups; group 3 (p= 0.02), composed of 134 older people who do not have symptoms of depression and anxiety, but have cognition below the median, and group 7 (p= 0.02) with a total of 201 individuals who do not present depressive or anxious symptoms and cognition above the median. The COMT gene and its polymorphisms have been studied in psychiatric disorders, including schizophrenia, bipolar disorder, and depression (Funke et al. 2005; Behbahani et al. 2015).
A 2005 study investigated variations in this gene to confer an overall risk for psychiatric disorders and genotyped four polymorphisms, including rs165599 in 394 participants (Behbahani et al. 2015).). The G allele of this variant was significantly associated with the diagnoses in all affected individuals, including depression (Funke et al. 2005). Despite the few findings in the literature for the rs165599 variant and depression and/or anxiety, the studies found support the idea that this variant may confer a general predisposition to psychiatric disorders.
The rs1417938 polymorphism of the CRP gene was statistically significant (p=0.006) in association with group 0 of the DASG, a group composed of individuals who present depressive and anxious symptoms and also cognition below the median. There are reports in the literature associating depression/anxiety with increased C-reactive protein (Ancelin et al. 2015; Tayefi et al. 2017).
A study in 2015 investigated 990 older people and genotyped five variants of the CRP gene, among these rs1417938 SNPs. The lowest frequency allele (A) was statistically significant for homozygous women, presenting a reduction in the risk of developing depression when comparing the homozygous women with the most frequent allele (Ancelin et al. 2015). In another finding in the literature, the A allele was potentially associated with the risk for developing depressive disorders (Yibulaiyin et al., 2017).
Continuing with our findings, the joint analysis was performed based on the results of the individual analysis for each variant. Only two SNPs were significant when analyzed together (rs165599 and rs1417938) of the COMT and CRP genes, respectively. In our analysis, the statistical value of p was 1.72E-10.
As already mentioned, the rs165599 (COMT) variant has been investigated and reported in the literature as a genetic marker that contributes as a potential risk factor for several psychiatric disorders (being reported predominantly for bipolar disorder and schizophrenia) (Funke et al. 2005). The rs1417938 polymorphism (CRP) has already been described as an SNP associated with depression (Ancelin et al. 2015; Tayefi et al. 2017). The two polymorphisms were statistically significant for the individual analysis and when grouped together, the level of statistical significance was even higher. In this way, it suggests that both variants are an important risk factor for the development of symptoms of depression and anxiety.
For the analysis of APOE (rs429358 and rs7412) we analyzed the SNPs separately (which was not significant in our findings), however, when we performed the genotypic distribution of these two associated polymorphisms for the alleles ɛ2, ɛ3, and ɛ4 and for the genotypes ɛ2/ ɛ2, ɛ2/ ɛ3, ɛ2/ ɛ4, ɛ3/ɛ3, ɛ3/ ɛ4, and ɛ4/ ɛ4 we found statistically significant findings; that is, for the genotype ɛ3/ɛ3 associated with group 0, group 4, and group 7 of the DASG with a p value of 0.016, and for the genotype ɛ3/ɛ4 associated with group 4 and group 7 with a p-value of 0.04. When we analyzed the association only of the alleles, the allele ɛ3 was significant for groups 4 and 7 (p=0.02).
Therefore, the 5HTTLPR variant of the 5HTT gene, which is much reported in the literature, as well as the other investigated genes (AGTR1, IL6, IL10, MTHFR, MTOR, and TNF), showed statistically non-significant results in our sample. Despite reports in the literature associating these genes with depression and/or anxiety, there are also reports corroborating our initial findings.
Limitations
Our study has some methodological limitations. Despite the total sample being composed of a total of 874 older people, the subdivision of the DASG into eight groups based on the CES-D, GAI, and MMSE scores reduces the statistical power to identify true but not detected associations (false negatives), that is, it may make it difficult to detect a positive association for some polymorphisms. In addition to the sample size, the collection of information in our study was carried out by different health professionals, which may be a factor of variability in the approach used and collection of the responses related to each scale used. Furthermore, another relevant point would be the degree of genetic heterogeneity among the individuals studied, which could be a confounding factor in the results presented.
In the current study, we sought to investigate the relationship between genetic variants of candidate genes and depressive and/or anxious symptoms in a Brazilian population of older people. In addition, we sought to develop an original approach to the analysis by creating DASG to try to partially resolve the lack of information about the study of these polymorphisms in this age group in Brazil.
Among the 11 genes studied and their 27 genetic markers, statistically significant results in our sample were observed in only four of them, being rs8071667 (5HTT gene), rs626 (BDNF gene), rs165599 (COMT gene), and rs1417667 (CRP gene). Thus, the most robust results for the joint association of these variants were for the COMT gene variant rs165599 and for the CRP gene variant rs417667.
In the scientific literature, we did not find any other studies with the positive results reported here, however further research is necessary using a similar methodology in larger and independent samples, seeking to reproduce our initial results to confirm the relevance of these findings.
Acknowledgements
We would like to thank everyone who somehow contributed to the development of the research.
Funding
This work was supported by State of São Paulo Research Foundation, Brazil (FAPESP Grants numbers 2012/50010-0 and 2016/07699-8). Isabela Ferreira de Moraes was supported by a Brazilian Federal Research Funding Agency (CAPES - Coordenação de Aperfeiçoamento de Pessoal de Nível Superior – 88882.327657/2019-01).
Conflict of Interest
The presente study has no conflicts of interest.
Ethical Approval
The present study has ethical approval.
Informed Consent
All study participants signed the Free Consent Form.
Author Contribution
Isabela Ferreira de Moraes contributed to the introduction, genotypic analysis and discussion of the article.
Thais Chile contributed to the genotypic analysis and discussion of the article.
Vanessa de Jesus Rodrigues de Paula contributed to statistical analysis of APOE.
Clóvis Alexandrino-Silva contributed to clinical methodology.
Geraldo Busatto contributed to clinical methodology.
Helena Brentani contributed to statistical analysis of polymorphisms.
Homero Vallada contributed to the introduction, discussion and conclusion of the article.
Table 1 to 23 is available in the Supplementary Files section.
No competing interests reported.
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