TY - JOUR
T1 - Exome chip meta-analysis elucidates the genetic architecture of rare coding variants in smoking and drinking behavior.
AU - CHD Exome+ Consortium
AU - Consortium for Genetics of Smoking Behaviour
AU - Liu, Dajiang J.
AU - Brazel, David M.
AU - Turcot, Valérie
AU - Zhan, Xiaowei
AU - Gong, Jian
AU - Barnes, Daniel R.
AU - Bertelsen, Sarah
AU - Chou, Yi Ling
AU - Erzurumluoglu, A. Mesut
AU - Faul, Jessica D.
AU - Haessler, Jeff
AU - Hammerschlag, Anke R.
AU - Hsu, Chris
AU - Kapoor, Manav
AU - Lai, Dongbing
AU - Le, Nhung
AU - de Leeuw, Christiaan A.
AU - Loukola, Anu
AU - Mangino, Massimo
AU - Melbourne, Carl A.
AU - Pistis, Giorgio
AU - Qaiser, Beenish
AU - Rohde, Rebecca
AU - Shao, Yaming
AU - Stringham, Heather
AU - Wetherill, Leah
AU - Zhao, Wei
AU - Agrawal, Arpana
AU - Bierut, Laura
AU - Chen, Chu
AU - Eaton, Charles B.
AU - Goate, Alison
AU - Haiman, Christopher
AU - Heath, Andrew
AU - Iacono, William G.
AU - Martin, Nicholas G.
AU - Polderman, Tinca J.
AU - Reiner, Alex
AU - Rice, John
AU - Schlessinger, David
AU - Scholte, H. Steven
AU - Smith, Jennifer A.
AU - Tardif, Jean Claude
AU - Tindle, Hilary A.
AU - van der Leij, Andreis R.
AU - Boehnke, Michael
AU - Chang-Claude, Jenny
AU - Cucca, Francesco
AU - David, Sean P.
AU - Foroud, Tatiana
N1 - Publisher Copyright:
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
Copyright:
Copyright 2020 Elsevier B.V., All rights reserved.
PY - 2017/9/12
Y1 - 2017/9/12
N2 - Background: Smoking and alcohol use behaviors in humans have been associated with common genetic variants within multiple genomic loci. Investigation of rare variation within these loci holds promise for identifying causal variants impacting biological mechanisms in the etiology of disordered behavior. Microarrays have been designed to genotype rare nonsynonymous and putative loss of function variants. Such variants are expected to have greater deleterious consequences on gene function than other variants, and significantly contribute to disease risk. Methods: In the present study, we analyzed ~250,000 rare variants from 17 independent studies. Each variant was tested for association with five addiction-related phenotypes: cigarettes per day, pack years, smoking initiation, age of smoking initiation, and alcoholic drinks per week. We conducted single variant tests of all variants, and gene-based burden tests of nonsynonymous or putative loss of function variants with minor allele frequency less than 1%. Results: Meta-analytic sample sizes ranged from 70,847 to 164,142 individuals, depending on the phenotype. Known loci tagged by common variants replicated, but there was no robust evidence for individually associated rare variants, either in gene based or single variant tests. Using a modified method-of-moment approach, we found that all low frequency coding variants, in aggregate, contributed 1.7% to 3.6% of the phenotypic variation for the five traits (p<.05). Conclusions: The findings indicate that rare coding variants contribute to phenotypic variation, but that much larger samples and/or denser genotyping of rare variants will be required to successfully identify associations with these phenotypes, whether individual variants or gene-based associations.
AB - Background: Smoking and alcohol use behaviors in humans have been associated with common genetic variants within multiple genomic loci. Investigation of rare variation within these loci holds promise for identifying causal variants impacting biological mechanisms in the etiology of disordered behavior. Microarrays have been designed to genotype rare nonsynonymous and putative loss of function variants. Such variants are expected to have greater deleterious consequences on gene function than other variants, and significantly contribute to disease risk. Methods: In the present study, we analyzed ~250,000 rare variants from 17 independent studies. Each variant was tested for association with five addiction-related phenotypes: cigarettes per day, pack years, smoking initiation, age of smoking initiation, and alcoholic drinks per week. We conducted single variant tests of all variants, and gene-based burden tests of nonsynonymous or putative loss of function variants with minor allele frequency less than 1%. Results: Meta-analytic sample sizes ranged from 70,847 to 164,142 individuals, depending on the phenotype. Known loci tagged by common variants replicated, but there was no robust evidence for individually associated rare variants, either in gene based or single variant tests. Using a modified method-of-moment approach, we found that all low frequency coding variants, in aggregate, contributed 1.7% to 3.6% of the phenotypic variation for the five traits (p<.05). Conclusions: The findings indicate that rare coding variants contribute to phenotypic variation, but that much larger samples and/or denser genotyping of rare variants will be required to successfully identify associations with these phenotypes, whether individual variants or gene-based associations.
KW - Addiction
KW - Alcohol
KW - Behavioral Genetics
KW - Exome
KW - GWAS
KW - Tobacco
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U2 - 10.1101/187658
DO - 10.1101/187658
M3 - Article
AN - SCOPUS:85095351700
JO - Seminars in Fetal and Neonatal Medicine
JF - Seminars in Fetal and Neonatal Medicine
SN - 1744-165X
ER -