This study confirms that at least two independent variants in this nicotinic receptor gene cluster contribute to the development of habitual smoking in some populations, and it underscores the importance of multiple genetic variants contributing to the development of common diseases in various populations.
Tobacco use is a leading contributor to disability and death worldwide, and genetic factors contribute in part to the development of nicotine dependence. To identify novel genes for which natural variation contributes to the development of nicotine dependence, we performed a comprehensive genome wide association study using nicotine dependent smokers as cases and non-dependent smokers as controls. To allow the efficient, rapid, and cost effective screen of the genome, the study was carried out using a two-stage design. In the first stage, genotyping of over 2.4 million single nucleotide polymorphisms (SNPs) was completed in case and control pools. In the second stage, we selected SNPs for individual genotyping based on the most significant allele frequency differences between cases and controls from the pooled results. Individual genotyping was performed in 1050 cases and 879 controls using 31 960 selected SNPs. The primary analysis, a logistic regression model with covariates of age, gender, genotype and gender by genotype interaction, identified 35 SNPs with P-values less than 10(-4) (minimum P-value 1.53 x 10(-6)). Although none of the individual findings is statistically significant after correcting for multiple tests, additional statistical analyses support the existence of true findings in this group. Our study nominates several novel genes, such as Neurexin 1 (NRXN1), in the development of nicotine dependence while also identifying a known candidate gene, the beta3 nicotinic cholinergic receptor. This work anticipates the future directions of large-scale genome wide association studies with state-of-the-art methodological approaches and sharing of data with the scientific community.
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.
Excessive alcohol consumption is one of the leading causes of preventable death in the United States. Approximately 14% of those who use alcohol meet criteria during their lifetime for alcohol dependence, which is characterized by tolerance, withdrawal, inability to stop drinking, and continued drinking despite serious psychological or physiological problems. We explored genetic influences on alcohol dependence among 1,897 European-American and African-American subjects with alcohol dependence compared with 1,932 unrelated, alcohol-exposed, nondependent controls. Constitutional DNA of each subject was genotyped using the Illumina 1M beadchip. Fifteen SNPs yielded
P
< 10
−5
, but in two independent replication series, no SNP passed a replication threshold of
P
< 0.05. Candidate gene
GABRA2
, which encodes the GABA receptor α2 subunit, was evaluated independently. Five SNPs at
GABRA2
yielded nominal (uncorrected)
P
< 0.05, with odds ratios between 1.11 and 1.16. Further dissection of the alcoholism phenotype, to disentangle the influence of comorbid substance-use disorders, will be a next step in identifying genetic variants associated with alcohol dependence.
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