Liability to alcohol dependence (AD) is heritable, but little is known
about its complex polygenic architecture or its genetic relationship with other
disorders. To discover loci associated with AD and characterize the relationship
between AD and other psychiatric and behavioral outcomes, we carried out the
largest GWAS to date of DSM-IV diagnosed AD. Genome-wide data on 14,904
individuals with AD and 37,944 controls from 28 case/control and family-based
studies were meta-analyzed, stratified by genetic ancestry (European, N =
46,568; African; N = 6,280). Independent, genome-wide significant effects of
different ADH1B variants were identified in European
(rs1229984; p = 9.8E-13) and African ancestries (rs2066702; p = 2.2E-9).
Significant genetic correlations were observed with 17 phenotypes, including
schizophrenia, ADHD, depression, and use of cigarettes and cannabis. The genetic
underpinnings of AD only partially overlap with those for alcohol consumption,
underscoring the genetic distinction between pathological and non-pathological
drinking behaviors.
94 35 NIH/NIAAA, Office of the Clinical Director 95 ABSTRACT 180Liability to alcohol dependence (AD) is heritable, but little is known about its complex 181 polygenic architecture or its genetic relationship with other disorders. To discover loci 182 associated with AD and characterize the relationship between AD and other psychiatric 183 and behavioral outcomes, we carried out the largest GWAS to date of DSM-IV 184
BackgroundTraditional genome-wide association studies are generally limited in their ability explain a large portion of genetic risk for most common diseases. We sought to use both traditional GWAS methods, as well as more recently developed polygenic genome-wide analysis techniques to identify subsets of single-nucleotide polymorphisms (SNPs) that may be involved in risk of cardiovascular disease, as well as estimate the heritability explained by common SNPs.MethodsUsing data from the Framingham SNP Health Association Resource (SHARe), three complimentary methods were applied to examine the genetic factors associated with the Framingham Risk Score, a widely accepted indicator of underlying cardiovascular disease risk. The first method adopted a traditional GWAS approach - independently testing each SNP for association with the Framingham Risk Score. The second two approaches involved polygenic methods with the intention of providing estimates of aggregate genetic risk and heritability.ResultsWhile no SNPs were independently associated with the Framingham Risk Score based on the results of the traditional GWAS analysis, we were able to identify cardiovascular disease-related SNPs as reported by previous studies. A predictive polygenic analysis was only able to explain approximately 1% of the genetic variance when predicting the 10-year risk of general cardiovascular disease. However, 20% to 30% of the variation in the Framingham Risk Score was explained using a recently developed method that considers the joint effect of all SNPs simultaneously.ConclusionThe results of this study imply that common SNPs explain a large amount of the variation in the Framingham Risk Score and suggest that future, better-powered genome-wide association studies, possibly informed by knowledge of gene-pathways, will uncover more risk variants that will help to elucidate the genetic architecture of cardiovascular disease.
Eating disorders and substance use disorders frequently co-occur. Twin studies reveal shared genetic variance between liabilities to eating disorders and substance use, with the strongest associations between symptoms of bulimia nervosa and problem alcohol use (genetic correlation [r g ], twin-based = 0.23-0.53). We estimated the genetic correlation between eating disorder and substance use and disorder phenotypes using data from genome-wide association studies (GWAS). Four eating disorder phenotypes (anorexia nervosa [AN], AN with binge eating, AN without binge eating,
The health impairments derived from both alcoholism and obesity are well known. However, reports that relate increased alcohol use with increased measures of obesity have been mixed in their findings, especially with respect to genetic factors that could potentially link these two behaviors. Here, using a large sample of adults from the UK (n ≈ 113,000), we report both the observed and genetic correlations between BMI (kg/m2) and two measures of alcohol use: reported quantity (drinks per week) and frequency of use (from never to daily). Overall, both observationally and genetically, alcohol intake is negatively correlated with BMI. Phenotypic correlations ranged from −.01 to −.17, and genetic correlations ranged from −.1 to −.4. Genetic correlations tended to be stronger than the phenotypic correlations, and these correlations were stronger in females and between BMI and, specifically, frequency of use. Though the mechanisms driving these relationships are yet to be identified, we can conclude that the genetic factors related to drinking both more and more often are shared with those responsible for lower BMI.
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