Literature DB >> 30636874

Associations of BRAP polymorphisms with the risk of alcohol dependence and scores on the Alcohol Use Disorders Identification Test.

Jee Wook Kim1,2, Young Min Choe1,2, Joong-Gon Shin3, Byung Lae Park4, Hyung-Doo Shin3,4, Ihn-Geun Choi2,5, Boung Chul Lee2,6.   

Abstract

BACKGROUND: Alcohol dependence (AD) is a common disorder that is influenced by genetic as well as environmental factors. A previous genome-wide association study (GWAS) of the Korean population performed by our research group identified a number of genes, including BRCA1-associated protein (BRAP) and protein arginine methyltransferase 8 (PRMT8), as novel genetic markers of AD.
METHODS: The present investigation was a fine-mapping follow-up study of 459 AD and 455 non-AD subjects of Korean descent to determine the associations between BRAP and PRMT8 polymorphisms and AD. The Alcohol Use Disorders Identification Test (AUDIT) was administered to screen for the degree of AD risk in the subjects and 58 genetic variants, 5 for BRAP and 53 for PRMT8, were genotyped for subsequent association analyses.
RESULTS: In the present case-control analysis, BRAP rs3782886 showed the most significant association signal with a risk of AD (P=1.29×10-16, Pcorr =7.74×10-16, OR =0.19). There were also significant differences in the overall and subcategory scores for the BRAP genetic variants, including rs3782886 (P=9.94×10-31, Pcorr =5.96×10-30 at rs3782886 for the overall AUDIT score). However, the genetic effects of PRMT8 polymorphisms observed in our previous GWAS were not replicated in the present study (minimum P=0.0005, Pcorr >0.05, OR =0.30 at rs4766139 in the recessive model). Furthermore, the single-nucleotide polymorphisms of PRMT8 were not associated with the overall and subcategory AUDIT scores.
CONCLUSION: The present findings suggest that the genetic variants of BRAP may contribute to a predisposition for an alcohol use disorder.

Entities:  

Keywords:  AUDIT; BRAP; alcohol dependence; genome-wide association study; single-nucleotide polymorphism

Year:  2018        PMID: 30636874      PMCID: PMC6309135          DOI: 10.2147/NDT.S184067

Source DB:  PubMed          Journal:  Neuropsychiatr Dis Treat        ISSN: 1176-6328            Impact factor:   2.570


Introduction

Alcohol dependence (AD) is a severe psychiatric disorder with a multifactorial etiology that includes complex gene-to-gene and gene-to-environment interactions.1–3 Adoption and twin studies conducted to clarify the effects of genes in this etiology have revealed that genetic factors comprise 50%–60% of the heritability of AD susceptibility.4,5 Additionally, adoptees are more similar to their biologic parents than their adoptive parents in terms of AD susceptibility6,7 and the higher concordance for AD susceptibility between twins is derived from shared genetic components.8 In fact, several candidate studies assessing the risk loci for AD were designed to target gene variants related to alcohol metabolism or neurobiology.9–13 Recently, a number of genome-wide association studies (GWASs) have investigated genetic markers of AD, including the genomic region of chromosome 4q22-q32, which includes alcohol dehydrogenase (ADH) cluster genes.14–17 Furthermore, a recent GWAS of a Korean AD cohort revealed that three chromosomal regions are associated with AD, including the ADH gene cluster and ALDH2, which participate in alcohol metabolism (minimum P=6.46×10−8, OR =2.73 at ADH7 rs10516441 of the ADH gene cluster and P=8.42×10−8, OR =0.22 at ALDH2 rs671). The genetic effects of the ADH gene cluster were also replicated in a Korean population (minimum P=2.63×10−21 at ADH1B rs1229984). In addition to genes related to alcohol metabolism, genes known to participate in neurodevelopment, such as BRCA1-associated protein (BRAP) and protein arginine methyltransferase 8 (PRMT8), have multiple association signals with the risk of AD (P=4.65×10−6, OR =0.31 at BRAP rs3782886 and P=1.77×10−5, OR =1.96 at PRMT8 rs876594).18 Based on the polygenic hypothesis of AD pathophysiology, it is possible that multiple genetic loci associated with neurobiologic pathways could be associated with the risk of AD. Thus, the present investigation conducted followup replication studies of our previous GWAS of a Korean cohort with AD to identify associations between the risk of AD and novel candidate genes other than those related to alcohol metabolism.

Methods

Subject recruitment and the Alcohol Use Disorders Identification Test (AUDIT)

The present study recruited 914 individuals of Korean descent from Hangang Sacred Heart, Keyo, Dasarang, KARF, and Humanity and Youth Rehabilitation Hospitals. Of these individuals, 459 were alcoholic subjects and 455 were nonalcoholic subjects; the nonalcoholic subjects were recruited from the industrial medical center of Hangang Sacred Heart Hospital. All subjects enrolled in this study underwent inpatient therapy for >30 days due to their drinking problems and the patients who comprised a subgroup in our previous study did not have major medical or comorbid psychiatric illnesses other than an alcohol-related disorder.11,19 AD was diagnosed clinically with a semi-structured interview based on the guidelines of the Diagnostic and Statistical Manual of Mental Disorders IV20 by skilled psychiatrists as well as on information provided by their caregivers; diagnostic validity was high because all subjects were hospitalized in alcohol-related hospitals. Most of the healthy controls were nondrinkers, although some were occasional light drinkers as revealed by a drinking habit questionnaire. Subjects who had first-degree relatives with major psychiatric disorders, including schizophrenia, mood disorders, and/or substance abuse disorders other than nicotine dependence, were excluded from the present analyses. The study protocol was approved by the institutional review board of each hospital. All participants provided written informed consent, and that this study was conducted in accordance with the Declaration of Helsinki. The AUDIT was administered to screen for the degree of AD risk in the subjects.21 The AUDIT consists of ten items and is often used in Asian populations, including the Korean population. This tool includes three domain structures: items 1–3 measure alcohol consumption, items 4–6 assess AD, and items 7–10 evaluate alcohol-related harm.22,23 All items are equally weighted, the scores range from 0 to 4, and the total AUDIT score is determined by summing all subcategory scores; a higher AUDIT score is indicative of a higher risk in each category.

Genotyping of the BRAP and PRMT8 polymorphisms

To assess genomic DNA precisely, a DNA quantification analysis was performed using Quanti-iT PicoGreen fluorescence dye (Molecular Probes, Eugene, OR, USA). The quantification reactions were performed according to the manufacturer’s instructions (Manual No: MP0758) and the concentration of each type of genomic DNA was measured with a Fluorescence Reader (VICTOR2 fluorometer; Perkin Elmer, CA, USA). Candidate single-nucleotide polymorphisms (SNPs) of BRAP and PRMT8 were selected from among Japanese and Han Chinese genotype data using the 1,000 Genomes database (http://browser.1000genomes.org/index.html) based on the following conditions: 1) minor allele frequency (MAF) >5%; 2) linkage disequilibrium (LD) status based on an LD coefficient (r2) >0.98; 3) positions within the gene; and 4) amino acid changes. A total of 58 SNPs (5 from BRAP and 53 from PRMT8) were genotyped in the 459 alcoholic subjects and 455 nonalcoholic subjects using the Illumina Golden Gate genotyping system at a multiplex level.24 The genotyping quality score for retaining data was set to 0.25 and SNPs that did not satisfy the following criteria were excluded: 1) a minimum call rate of 95% and 2) no duplicate errors.

Statistical analysis

The LD was obtained using Haploview v4.2 software (http://www.broadinstitute.org/mpg/haploview) based on assessments of Lewontin’s D′ (|D′|) and the r2 between all pairs of biallelic loci.25 Haplotypes were determined using PHASE v2.0 software26 and comparisons of the genotype distributions between alcoholic and nonalcoholic subjects were carried out with a logistic regression model adjusted for age (continuous value) and sex (male =0, female =1) using SAS, version 9.4 (SAS Institute Inc., Cary, NC, USA). Associations between SNPs and AUDIT scores were also calculated using a linear regression model adjusted for age and sex. Statistical power of single associations was calculated using the Power for Genetic Association Analyses software,27 with false positive rate of 5%, disease prevalence of 4%,28 given MAFs and sample sizes, and assuming a relative risk of 1.5. Corrected P-values for multiple testing were calculated using the Bonferroni correction method.

Results

The present study included a total of 914 subjects who were categorized as either AD (n=459, mean age =47.37 years, range =21–80 years, 410 males and 49 females) or non-AD (n=455, mean age =44.21 years, range =20–79 years, 351 males and 104 females; Table 1); there were no significant differences between the AD and non-AD subjects in terms of age or sex. The degree of AD risk was estimated using AUDIT scores.
Table 1

Clinical profiles of study subjects

DescriptionADNon-ADP-value

N459455
Age (year; mean-range)47.37 (21–80)44.21 (20–79)<0.001a
Gender (M/F)410/49351/104<0.001b
AUDIT
 Overall27.90±7.39 (0–40)8.58±6.36 (0–29)<0.001a
 Alcohol consumption10.23±2.10 (0–12)5.73±3.46 (0–12)<0.001a
 Alcohol dependence7.37±3.26 (0–12)0.99±1.50 (0–8)<0.001a
 Alcohol-related harm10.29±3.54 (0–16)1.85±2.58 (0–14)<0.001a

Notes:

P-value was calculated using t-test analysis.

P-value was calculated using chi-square analysis.

Abbreviations: AD, alcohol dependence; AUDIT, Alcohol Use Disorders Identification Test; F, female; M, male.

Genotyping and haplotype analyses of BRAP and PRMT8 SNPs

A total of 58 SNPs (5 from BRAP and 53 from PRMT8) were genotyped in all subjects. The position, LD, and haplotype information of the investigated SNPs are shown in Figure S1. The BRAP and PRMT8 polymorphisms investigated in the present study were parsed into 1 LD block and 11 LD blocks, respectively. Not all haplotypes were selected for subsequent analyses because some haplotypes were tagged by SNPs on each gene.

Association analyses of BRAP and PRMT8 SNPs with AD

Logistic regression analyses were conducted to investigate the associations between BRAP and PRMT8 genetic variants and the risk of AD. In the case–control analysis, three genetic variants of BRAP (rs847895, rs3782886, and rs3803171) were associated with the risk of AD (minimum P=1.29×10−16, OR =0.19 at rs3782886) under the codominant model (Table 2). Of the PRMT8 SNPs, one genetic variant (rs12581829) was marginally associated with the risk of AD under the codominant model (P=0.02, OR =0.72) and two SNPs (rs4766138 and rs4766139) showed nominal associations with the risk of AD under the recessive model (P=0.002, OR =0.33 and P=0.0005, OR =0.30, respectively; Table S1). However, the statistical significance of the PRMT8 SNPs disappeared after corrections for multiple analyses were performed.
Table 2

Follow-up analysis of BRAP polymorphisms with the risk of alcohol dependence in Korean subjects

LociAllelePosition (AA change)GWAS P-valueMAF
Codominant
Dominant
Recessive
Statistical power (%)
ADNon- ADOR (95% CI)P-valueaPcorrbOR (95% CI)P-valueaPcorrbOR (95% CI)P-valuea

rs847895A>GIntron 30.3360.3001.22 (1.00–1.50)0.05NS1.23 (0.94–1.60)0.131.47 (0.94–2.31)0.0998.6
rs3782886A>GExon 5 (R241R)5.0×10−60.0410.1590.19 (0.13–0.28)1.29×10167.74×10160.19 (0.13–0.28)9.84×10175.90×101625.2
rs3803171G>TIntron 50.4520.3931.28 (1.06–1.56)0.01NS1.31 (0.99–1.74)0.061.51 (1.06–2.15)0.0298.5
rs3742001A>GIntron 60.1210.0971.22 (0.89–1.67)0.211.23 (0.89–1.71)0.211.37 (0.25–7.58)0.7282.0
rs118186470T>CExon 11 (R472K)0.0050.0022.41 (0.43–13.46)0.322.41 (0.43–13.46)0.327.26

Frequency

ht10.5020.4441.29 (1.07–1.56)0.009NS1.34 (1.00–1.81)0.05NS1.48 (1.07–2.04)0.0297.32

Notes: Boldface indicates P-value ⩽0.05. P-values of GWAS represent the codominant model, which includes the additive model, adjusted for age and sex as covariates.

P-value of logistic analysis under additive model by adjusting for sex and age as covariates.

P-value after Bonferroni correction for multiple testing.

Abbreviations: AA, amino acid; AD, alcohol dependence; BRAP, BRCA1-associated protein; GWAS, genome-wide association study; MAF, minor allele frequency; ht, haplotype.

Associations of BRAP and PRMT8 SNPs with the degree of AD risk

To screen for the degree of risk of AD, additional association analyses between the AUDIT score and genetic variants of BRAP or PRMT8 that showed associations with the risk of AD were conducted. For BRAP, three SNPs (rs3803171, rs3782886, and rs847895) and one haplotype (ht1) were significantly associated with the overall AUDIT score (minimum P=9.94×10−31 and minimum P =5.96×10−30 at rs3782886) and three SNPs had significant association signals with alcohol use disorders (minimum P=3.30×10−46 and P =1.98×10−45 at rs3782886 for alcohol consumption, minimum P=1.95×10−17 and P =1.17×10−16 at rs3782886 for AD, and minimum P=3.89×10−22 and P =2.34×10−21 at rs3782886 for alcohol-related harm) based on the AUDIT scoring (Table 3). The strengths of the associations between the BRAP SNPs and alcohol use disorders were greater in non-AD subjects. Additionally, BRAP rs3782886 was strongly associated with the overall AUDIT score (P=1.40×10−24 and P =8.39×10−24) and the subcategories of the AUDIT (P=6.46×10−32 and P =3.87×10−31 for alcohol consumption, P=2.59×10−7 and P =1.56×10−6 for AD, and P=3.88×10−10, and P =2.32×10−9 for alcohol-related harm; Table 4).
Table 3

Association analysis of BRAP polymorphisms with the AUDIT and subcategorical scores in all study subjects (n=914)

CategoryLociC/C
C/R
R/R
P-valueaPcorrb
NAUDIT scoreNAUDIT scoreNAUDIT score

AUDIT allrs84789542417.46±11.9639918.57±11.919120.85±10.960.01NS
rs378288673620.36±11.121739.94±11.0851.20±1.649.94×10−315.96×10−30
rs380317129916.81±11.8845518.46±12.1415820.37±10.690.0020.01
ht125016.54±11.9646318.43±12.2020120.09±10.710.00070.004
Alcohol consumptionrs8478954247.81±3.703998.02±3.68918.68±3.070.06
rs37828867368.73±3.151735.06±3.9150.40±0.553.30×10−461.98×10−45
rs38031712997.61±3.704558.00±3.771588.64±3.020.0050.02
ht12507.29±3.884637.98±3.732018.89±2.843.36×10−072.02×10−6
Alcohol dependencers8478954243.92±4.053994.36±4.13914.78±3.910.02NS
rs37828867364.74±4.061732.01±3.3550.00±0.001.95×10−171.17×10−16
rs38031712993.75±4.044554.33±4.101584.57±3.970.03NS
ht12503.64±3.944634.34±4.142014.57±4.060.009NS
Alcohol-related harmrs8478954245.73±5.293996.18±5.16917.38±5.220.007NS
rs37828867366.88±5.101732.87±4.5650.80±1.793.89×10−222.34×10−21
rs38031712995.45±5.164556.12±5.291587.16±5.070.0010.007
ht12505.61±5.304636.12±5.312016.63±4.980.03NS

Notes: C/C, C/R, and R/R mean major homozygote, heterozygote, and minor homozygote, respectively. AUDIT score is mean±SD. Boldface indicates P-value <0.05.

P-value of linear regression analysis under additive model by adjusting for sex and age as covariates.

P-value after Bonferroni correction for multiple testing.

Abbreviations: AUDIT, Alcohol Use Disorders Identification Test; BRAP, BRCA1-associated protein; ht, haplotype; NS, not significant.

Table 4

Association analysis of BRAP polymorphisms with the AUDIT and subcategorical scores in non-alcohol dependence subjects (n=455)

CategoryLociC/C
C/R
R/R
P-valueaPcorrb
NAUDIT scoreNAUDIT scoreNAUDIT score

AUDIT allrs8478952217.91±5.921959.00±6.833910.21±6.010.0070.04
rs378288631510.26±6.231354.91±4.8851.20±1.641.40×10−248.39×10−24
rs38031711637.87±5.942268.62±6.656610.17±6.150.0040.02
ht11387.44±6.352308.52±6.478710.53±5.650.00010.0006
Alcohol consumptionrs8478952215.57±3.431955.76±3.56396.49±3.050.11
rs37828863156.71±3.201353.64±2.9750.40±0.556.46×10−323.87×10−31
rs38031711635.49±3.372265.67±3.58666.53±3.170.02NS
ht11384.97±3.582305.61±3.42877.24±2.891.02×10−076.13×10−7
Alcohol dependencers8478952210.81±1.331951.14±1.62391.33±1.660.006NS
rs37828863151.22±1.591350.50±1.1150.00±0.002.59×10−071.56×10−6
rs38031711630.75±1.222261.10±1.62661.24±1.610.0040.02
ht11380.89±1.452301.06±1.60870.99±1.260.58
Alcohol-related harmrs8478952211.54±2.261952.10±2.87392.38±2.620.0080.04
rs37828863152.33±2.761350.77±1.7150.80±1.793.88×10−102.32×10−9
rs38031711631.63±2.382261.86±2.56662.39±3.040.03NS
ht11381.58±2.622301.85±2.53872.30±2.630.04NS

Notes: C/C, C/R, and R/R mean major homozygote, heterozygote, and minor homozygote, respectively. AUDIT score is mean±SD. Boldface indicates P-value <0.05.

P-value of linear regression analysis under additive model by adjusting for sex and age as covariates.

P-value after Bonferroni correction for multiple testing.

Abbreviations: AUDIT, Alcohol Use Disorders Identification Test; BRAP, BRCA1-associated protein; ht, haplotype; NS, not significant.

The association analysis of the PRMT8 SNPs revealed that individuals with three SNPs (rs4766138, rs4766139, and rs12581829) showed a marginal association signal with the overall AUDIT score (P=0.01, 0.01, and 0.008, respectively; Table S2). However, the statistical significance of these associations disappeared after corrections for multiple analyses were performed.

Discussion

AD is a distressing chronic disease that results in significant human, social, and economic burdens.29 Drinking alcohol influences brain function by affecting brain tissues, brain cells, and the central nervous system (CNS). Accordingly, excessive alcohol consumption may result in severe deficits in cognition and memory function that are highly correlated with activity in nerve pathways.30 In a previous GWAS from our research group,18 BRAP and PRMT8 affected neurodevelopment in brain regions that were identified as having potential susceptibility loci for AD (P=4.65×10−6 at BRAP rs3782886 and P=1.77×10−5 at PRMT8 rs876594). Thus, BRAP and PRMT8 were proposed as novel candidate genes for controlling the amount of alcohol consumption. BRAP is a regulatory protein that binds to several translocation signal proteins in the cytoplasm31 and, based on its functions, can modulate several intracellular signaling pathways. First, BRAP regulates the mitogen-activated protein kinase (MAPK) signaling pathway during CNS development through its function as a ubiquitin ligase.32 MAPK signaling is a known regulator of cell survival, proliferation, and differentiation as well as the production of proinflammatory cytokines. It has also been suggested that activation of the MAPK signaling pathway contributes to the neurotropic factor-mediated regulation of alcohol consumption.33 Second, BRAP acts as a primary mediator of inflammatory cascades by regulating the nuclear translocation of nuclear factor kappa B (NF-κB).34,35 A postmortem study in humans showed that NF-κB is downregulated in the brains of alcoholic patients.36 Similarly, other studies have shown that BRAP silencing via RNA interference inhibits NF-κB activation and that BRAP expression is ~twofold higher due to the genetic variant rs11066001, which is a tagging SNP of rs3782886 that has a high correlation value (r2=0.81).31,37,38 Taken together, these findings suggest that changes in BRAP expression induced by genetic variants might affect the NF-κB inflammatory cascade and may be a mechanism by which BRAP affects the risk level of AD. However, the direct and/or indirect functional impacts of BRAP on AD remain to be tested because the direct functional impacts of BRAP on several human disorders, including schizophrenia,31 myocardial infarction,39 carotid atherosclerosis,37 and metabolic syndrome,40 are not yet fully understood. However, the function of BRAP as a mediator of the translocation of signaling proteins might be a plausible explanation for the association between BRAP and human diseases with distinct pathophysiologies. Taken together, these data support the notion that BRAP has a genetic effect on alcohol-related disorders via the control of various signaling pathways. PRMT8 is a member of the arginine methyltransferase gene family that influences several cellular processes, such as DNA repair, RNA transcription, and signal transduction, by methylating target regions.41 Of this protein family, only PRMT8 has an expression that is highly restricted to the CNS.42 Several studies have reported that arginine methylation is important for neurogenesis, which is essential for neurologic function.41,43 Although PRMT8 genetic variants showed nominal association signals with the risk of AD, genetic variants of PRMT8 might be implicated in the neuronal differentiation in the brain region. Interestingly, the strength of the association between BRAP and alcohol use disorders was greater in nonalcoholic subjects than alcoholic subjects in the present study. BRAP is located a short distance from, and is affected by, the concomitant activity of ALDH2, which is highly related to AD. Thus, their association may be more prominent in nonalcoholic subjects because when ALDH2 induces lower rates of ALDH2 catalytic activity, even a small amount of alcohol consumption can cause a dramatic enhancement in acetaldehyde levels that triggers a highly aversion reaction. Therefore, these subjects may be classified as nonalcoholics even though there is an association between BRAP and alcohol use disorders. BRAP may also be a common gene associated with the characteristic patterns of alcohol use among nonalcoholic subjects. Taken together, these findings suggest that the effects of BRAP in nonalcoholics are very complicated and, as a result, interpretations of the present results should be made cautiously. Although some evidence supports an association between BRAP and AD, it is also important to discuss the independent effects of this gene. There are strong LD values between BRAP rs3782886 and ALDH2 rs67144 and it will be difficult to identify strong genetic influences on AD pathophysiology that arise from only a single or several genes. On the other hand, AD pathophysiology is associated with several unexplained effects from single or several genes, that is, the roles that ADH and ALDH2 play in alcohol metabolism. Despite the fact that these effects are relatively small, many genes with limited effects may be involved in the pathophysiology of AD. Based on the polygenic hypothesis of AD pathophysiology, it is possible that multiple genetic loci in genes related to neurobiologic pathways could be associated with the risk of AD. Although BRAP has fewer independent effects in AD pathophysiology than ALDH2, BRAP may be involved in this process via the summation of many genes with small effects. The present findings suggest that BRAP may contribute to AD pathophysiology via contributions following the summation of its effects with the well-known effects of ALDH2.

Conclusion

Based on findings from a GWAS and a replication study of a Korean AD cohort, the present study was the first to propose that a BRAP SNP (rs3782886) was associated with AD. A future follow-up replication study using an independent sample may strengthen the present results and provide substantiation of the proposed polygenetic influences. Nevertheless, these novel findings provide important evidence that will contribute to the current understanding of the genetic etiology of AD as well as the development of assessments of AD risk that can be used in conjunction with conventional causal markers. Haplotypes and LD structures of BRAP and PRMT8. Notes: (A) Haplotypes of and (B) LDs among BRAP polymorphisms. (C) Haplotypes of and (D) LDs among PRMT8 polymorphisms. Abbreviations: BRAP, BRCA1-associated protein; LD, linkage disequilibrium; PRMT8, protein arginine methyltransferase. Association analysis between PRMT8 SNPS and alcohol dependence subjects (n=914) Notes: Boldface indicates P-value <0.05. P-values of GWAS represent the codominant model, which includes the additive model, adjusted for age and sex as covariates. P-value of logistic analysis under additive model by adjusting for sex and age as covariates. Abbreviations: AA, amino acid; AL, alcoholic subjects; GWAS, genome-wide association study; ht, haplotype; MAF, minor allele frequency; PRMT8, protein arginine methyltransferase. Association analysis of PRMT8 SNPs with the AUDIT score in all study subjects (n=914) Notes: C/C, C/R, and R/R mean major homozygote, heterozygote, and minor homozygote, respectively. AUDIT score is mean±SD. P-value of linear regression analysis under additive model by adjusting for sex and age as covariates. Boldface indicates P-value <0.05. Abbreviations: AUDIT, Alcohol Use Disorders Identification Test; PRMT8, protein arginine methyltransferase.
Table S1

Association analysis between PRMT8 SNPS and alcohol dependence subjects (n=914)

LociAllelePositionGWAS P-valueMAF
Codominant
Dominant
Recessive
Statistical power (%)
ALNon-ALOR (95% CI)P-value*OR (95% CI)P-value*OR (95% CI)P-value*

rs34596546T>CIntron0.0380.0321.17 (0.70–1.97)0.551.17 (0.70–1.97)0.5543.6
rs7303822T>GIntron0.0900.0920.96 (0.69–1.33)0.800.93 (0.66–1.32)0.681.51 (0.35–6.52)0.5878.8
rs16930545C>TIntron0.1700.1661.05 (0.81–1.35)0.721.08 (0.81–1.43)0.620.90 (0.38–2.12)0.8094.3
rs7972007T>CIntron0.1720.1661.07 (0.83–1.38)0.611.10 (0.83–1.46)0.510.89 (0.38–2.11)0.7994.4
rs7972248C>TIntron0.020.3880.4070.93 (0.76–1.13)0.450.90 (0.69–1.19)0.480.91 (0.62–1.34)0.6499.1
rs7969082G>AIntron0.530.2520.2650.98 (0.79–1.21)0.840.95 (0.73–1.24)0.711.06 (0.63–1.79)0.8397.9
rs758612A>CIntron0.610.2000.1871.13 (0.88–1.43)0.341.14 (0.86–1.50)0.371.23 (0.58–2.61)0.5895.9
rs11062694T>CIntron0.030.1910.1930.96 (0.75–1.21)0.700.93 (0.71–1.23)0.611.06 (0.52–2.13)0.8896.0
rs11062697C>AIntron0.100.2830.2671.06 (0.86–1.30)0.581.08 (0.82–1.40)0.591.08 (0.67–1.74)0.7498.3
rs11062708A>CIntron0.0600.0680.95 (0.64–1.40)0.781.00 (0.67–1.50)161.6
rs10848873A>CIntron0.530.0750.0930.82 (0.58–1.17)0.280.85 (0.60–1.22)0.3968.3
rs11062709G>AIntron0.1760.1780.98 (0.77–1.24)0.840.97 (0.73–1.29)0.860.95 (0.46–1.96)0.8995.0
rs12581198G>AIntron0.4590.4471.02 (0.85–1.23)0.831.06 (0.79–1.42)0.690.99 (0.71–1.37)0.9499.2
rs10848876T>CIntron0.4800.4930.94 (0.77–1.13)0.501.12 (0.83–1.52)0.460.74 (0.54–1.01)0.0699.2
rs3741938T>CIntron0.00060.4610.4621.01 (0.83–1.22)0.951.14 (0.85–1.53)0.380.86 (0.62–1.20)0.3899.3
rs3759363A>GIntron0.0060.2120.1891.18 (0.93–1.51)0.181.20 (0.91–1.59)0.191.24 (0.57–2.70)0.5896.0
rs3759362T>CIntron0.00050.4660.4691.00 (0.82–1.21)0.971.06 (0.79–1.43)0.700.92 (0.67–1.28)0.6399.3
rs11062713C>TIntron0.2660.2401.18 (0.94–1.47)0.151.19 (0.91–1.56)0.201.35 (0.76–2.40)0.3197.7
rs12423006T>CIntron0.4060.4001.01 (0.83–1.24)0.891.11 (0.84–1.47)0.470.88 (0.60–1.27)0.4899.3
rs4766138G>AIntron0.020.1980.2260.84 (0.67–1.06)0.140.96 (0.73–1.26)0.740.33 (0.17–0.66)0.00295.2
rs7960599A>GIntron0.1080.1021.09 (0.80–1.48)0.591.03 (0.74–1.44)0.843.64 (0.70–18.83)0.1283.8
rs2159404T>CIntron0.4730.4601.03 (0.85–1.25)0.761.04 (0.77–1.39)0.811.04 (0.76–1.44)0.7999.2
rs876594C>TIntron0.000020.3620.3730.96 (0.78–1.16)0.641.03 (0.78–1.35)0.850.79 (0.53–1.17)0.2399.1
rs4766139C>TIntron0.030.2050.2340.84 (0.67–1.05)0.130.98 (0.74–1.28)0.860.30 (0.15–0.59)0.000595.7
rs10848881A>CIntron0.0590.0650.96 (0.65–1.41)0.820.97 (0.64–1.45)0.860.64 (0.06–7.10)0.7161.5
rs10774155C>TIntron0.1790.1771.04 (0.81–1.33)0.771.15 (0.87–1.52)0.340.50 (0.22–1.13)0.1095.2
rs10774156C>AIntron0.0050.4510.4341.05 (0.87–1.28)0.601.13 (0.84–1.50)0.421.00 (0.71–1.40)0.9999.2
rs11614792T>CIntron0.4920.5010.96 (0.80–1.17)0.711.07 (0.79–1.46)0.660.85 (0.62–1.16)0.2999.2
rs9669266A>GIntron0.3690.3900.91 (0.75–1.10)0.330.98 (0.75–1.29)0.910.71 (0.48–1.04)0.0899.0
rs12581829A>CIntron0.1050.1370.72 (0.54–0.96)0.020.71 (0.51–0.97)0.030.52 (0.20–1.36)0.1879.1
rs10774158G>AIntron0.090.1790.1791.02 (0.80–1.31)0.851.14 (0.86–1.52)0.360.46 (0.20–1.04)0.0695.3
rs4766141C>GIntron0.2100.1871.16 (0.91–1.47)0.241.16 (0.88–1.53)0.301.39 (0.68–2.87)0.3795.9
rs3782749T>GIntron0.0540.0640.90 (0.60–1.34)0.600.90 (0.59–1.37)0.630.64 (0.06–7.08)0.7156.6
rs11062723G>AIntron0.4090.3931.07 (0.88–1.30)0.521.12 (0.85–1.48)0.411.03 (0.71–1.48)0.9099.2
rs3825339A>GIntron0.2240.2101.10 (0.88–1.39)0.401.13 (0.86–1.48)0.401.12 (0.59–2.12)0.7496.9
rs3741936G>AIntron0.140.2720.2850.93 (0.75–1.15)0.490.92 (0.70–1.20)0.520.90 (0.53–1.53)0.6998.3
rs917602G>AIntron0.280.2640.2531.05 (0.85–1.31)0.631.11 (0.85–1.45)0.440.92 (0.55–1.55)0.7598.1
rs7966000A>GIntron0.1360.1560.82 (0.63–1.08)0.160.81 (0.60–1.09)0.160.76 (0.28–2.11)0.6088.8
rs7957814G.AIntron0.150.1110.1130.98 (0.73–1.32)0.890.97 (0.70–1.34)0.851.14 (0.30–4.36)0.8485.5
rs6489480A.GIntron0.1110.1140.97 (0.72–1.31)0.840.96 (0.69–1.32)0.791.14 (0.30–4.36)0.8485.2
rs3782745A.CIntron0.0530.0451.17 (0.76–1.79)0.481.10 (0.70–1.72)0.6855.7
rs7307502A.GIntron0.1760.1760.97 (0.76–1.24)0.820.94 (0.70–1.24)0.651.23 (0.57–2.65)0.6195.1
rs3782744G.AIntron0.440.4790.4641.09 (0.91–1.32)0.340.98 (0.74–1.32)0.911.33 (0.97–1.82)0.0899.2
rs7976970A.GIntron0.140.1150.1151.00 (0.74–1.35)0.990.99 (0.72–1.37)0.971.14 (0.30–4.36)0.8486.7
rs16930578G.AIntron0.110.0830.0771.07 (0.75–1.52)0.721.10 (0.76–1.58)0.620.42 (0.04–4.69)0.4874.7
rs758637G.AIntron0.930.3810.3820.98 (0.81–1.18)0.800.89 (0.68–1.17)0.411.13 (0.78–1.63)0.5399.2
rs7137875A.GIntron0.340.1370.1490.89 (0.68–1.16)0.380.88 (0.66–1.19)0.410.76 (0.28–2.11)0.6089.7
rs11062731G.CIntron0.1290.1380.90 (0.68–1.20)0.470.90 (0.66–1.22)0.500.81 (0.27–2.50)0.7288.7
rs11062733C.TIntron0.220.0990.1020.94 (0.68–1.29)0.690.94 (0.68–1.32)0.730.69 (0.11–4.31)0.6981.7
rs4765741G.AIntron0.470.4790.4661.08 (0.90–1.30)0.420.99 (0.74–1.32)0.921.27 (0.93–1.74)0.1499.2
rs11830814G.CIntergenic0.0820.0781.06 (0.74–1.50)0.761.08 (0.75–1.56)0.670.42 (0.04–4.69)0.4874.8
rs2159347C.TIntergenic0.1170.0911.31 (0.96–1.78)0.091.35 (0.97–1.88)0.081.21 (0.31–4.65)0.7982.5
rs1029766G.AIntergenic0.770.4020.4070.97 (0.80–1.17)0.720.86 (0.65–1.13)0.281.14 (0.80–1.62)0.4799.3

Frequency

BL1_ht10.4410.4291.03 (0.85–1.25)0.741.10 (0.82–1.46)0.530.97 (0.69–1.37)0.8899.1
BL1_ht40.0810.0741.19 (0.82–1.72)0.351.19 (0.82–1.72)0.3571.3
BL2_ht10.4610.4551.03 (0.85–1.25)0.761.13 (0.85–1.52)0.400.93 (0.67–1.30)0.6999.2
BL3_ht30.0620.0551.12 (0.75–1.66)0.591.19 (0.78–1.82)0.410.27 (0.03–2.68)0.2759.8
BL4_ht30.1580.1381.19 (0.91–1.56)0.201.16 (0.86–1.56)0.322.14 (0.72–6.34)0.1789.3
BL4_ht50.0650.0601.04 (0.71–1.54)0.841.09 (0.72–1.63)0.690.29 (0.03–3.29)0.3263.4
BL4_ht60.0560.0640.92 (0.62–1.38)0.700.96 (0.63–1.44)0.8356.3
BL5_ht20.3700.3890.93 (0.76–1.13)0.441.01 (0.77–1.33)0.940.73 (0.49–1.07)0.1098.8
BL5_ht30.1210.1121.09 (0.81–1.47)0.571.09 (0.80–1.50)0.591.21 (0.33–4.40)0.7785.1
BL6_ht20.2650.2531.08 (0.87–1.35)0.481.09 (0.84–1.43)0.511.13 (0.62–2.05)0.6997.8
BL6_ht30.1250.1161.09 (0.82–1.46)0.551.11 (0.81–1.53)0.500.94 (0.27–3.23)0.9286.1
BL7_ht20.2050.2410.81 (0.65–1.02)0.070.94 (0.72–1.24)0.680.28 (0.14–0.55)0.000293.6
BL7_ht40.1230.1151.08 (0.81–1.45)0.601.10 (0.80–1.51)0.550.94 (0.27–3.23)0.9285.9
BL8_ht10.4670.4661.02 (0.85–1.22)0.850.91 (0.68–1.21)0.511.18 (0.86–1.61)0.3199.3
BL10_ht20.3410.3560.92 (0.76–1.12)0.410.83 (0.63–1.08)0.161.09 (0.73–1.64)0.6898.8
BL11_ht20.2880.3190.85 (0.69–1.04)0.120.82 (0.63–1.06)0.130.81 (0.51–1.30)0.3897.5

Notes: Boldface indicates P-value <0.05. P-values of GWAS represent the codominant model, which includes the additive model, adjusted for age and sex as covariates.

P-value of logistic analysis under additive model by adjusting for sex and age as covariates.

Abbreviations: AA, amino acid; AL, alcoholic subjects; GWAS, genome-wide association study; ht, haplotype; MAF, minor allele frequency; PRMT8, protein arginine methyltransferase.

Table S2

Association analysis of PRMT8 SNPs with the AUDIT score in all study subjects (n=914)

CategoryLociC/C
C/R
R/R
P-value*
NAUDIT scoreNAUDIT scoreNAUDIT score

AUDIT allrs476613857218.77±11.7929618.20±11.814612.65±12.100.01
rs476613956218.75±11.7930318.36±11.824912.33±11.800.01
rs1258182971118.81±11.7618316.34±12.011916.21±13.060.008
Alcohol consumptionrs47661385728.12±3.582967.98±3.61466.48±4.250.04
rs47661395628.12±3.583038.01±3.61496.43±4.130.03
rs125818297118.13±3.561837.45±3.88197.74±3.860.03
Alcohol dependencers47661385724.31±4.102964.21±4.02462.74±3.870.08
rs47661395624.28±4.093034.30±4.05492.59±3.800.09
rs125818297114.30±4.081833.83±4.03193.53±4.360.09
Alcohol-related harmrs47661385726.34±5.222966.02±5.21463.43±4.960.005
rs47661395626.35±5.233036.06±5.20493.31±4.860.003
rs125818297116.38±5.231835.07±5.11194.95±5.710.001

Notes: C/C, C/R, and R/R mean major homozygote, heterozygote, and minor homozygote, respectively. AUDIT score is mean±SD.

P-value of linear regression analysis under additive model by adjusting for sex and age as covariates. Boldface indicates P-value <0.05.

Abbreviations: AUDIT, Alcohol Use Disorders Identification Test; PRMT8, protein arginine methyltransferase.

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