Re-sequencing Expands Our Understanding of the Phenotypic Impact of Variants at GWAS Loci

Susan K. Service(University of California, Los Angeles), Tanya M. Teslovich(Michigan United), Christian Fuchsberger(Michigan United), Vasily Ramensky(University of California, Los Angeles), Pranav Yajnik(University of Michigan–Ann Arbor), Daniel C. Koboldt(Washington University in St. Louis), David E. Larson(Washington University in St. Louis), Qunyuan Zhang(Washington University in St. Louis), Ling Lin(Washington University in St. Louis), Ryan Welch(Michigan United), Li Ding(Washington University in St. Louis), Michael D. McLellan(Washington University in St. Louis), Michele O’Laughlin(Washington University in St. Louis), Catrina C. Fronick(Washington University in St. Louis), Lucinda Fulton(Washington University in St. Louis), Vincent Magrini(Washington University in St. Louis), Amy J. Swift(National Human Genome Research Institute), Paul Elliott(Imperial College London), Marjo‐Riitta Järvelin(Imperial College London), Marika Kaakinen(Imperial College London), Mark I. McCarthy(Oxford Centre for Diabetes, Endocrinology and Metabolism), Leena Peltonen(University of Helsinki), Anneli Pouta(University of Oulu), Lori L. Bonnycastle(National Human Genome Research Institute), Francis S. Collins(National Human Genome Research Institute), Narisu Narisu(National Human Genome Research Institute), Heather M. Stringham(Michigan United), Jaakko Tuomilehto(Finnish Institute for Health and Welfare), Samuli Ripatti(Wellcome Sanger Institute), Robert S. Fulton(Washington University in St. Louis), Chiara Sabatti(Stanford University), Richard K. Wilson(Washington University in St. Louis), Michael Boehnke(Michigan United), Nelson B. Freimer(University of California, Los Angeles)
PLoS Genetics
January 30, 2014
Cited by 55Open Access
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Abstract

Genome-wide association studies (GWAS) have identified >500 common variants associated with quantitative metabolic traits, but in aggregate such variants explain at most 20-30% of the heritable component of population variation in these traits. To further investigate the impact of genotypic variation on metabolic traits, we conducted re-sequencing studies in >6,000 members of a Finnish population cohort (The Northern Finland Birth Cohort of 1966 [NFBC]) and a type 2 diabetes case-control sample (The Finland-United States Investigation of NIDDM Genetics [FUSION] study). By sequencing the coding sequence and 5' and 3' untranslated regions of 78 genes at 17 GWAS loci associated with one or more of six metabolic traits (serum levels of fasting HDL-C, LDL-C, total cholesterol, triglycerides, plasma glucose, and insulin), and conducting both single-variant and gene-level association tests, we obtained a more complete understanding of phenotype-genotype associations at eight of these loci. At all eight of these loci, the identification of new associations provides significant evidence for multiple genetic signals to one or more phenotypes, and at two loci, in the genes ABCA1 and CETP, we found significant gene-level evidence of association to non-synonymous variants with MAF<1%. Additionally, two potentially deleterious variants that demonstrated significant associations (rs138726309, a missense variant in G6PC2, and rs28933094, a missense variant in LIPC) were considerably more common in these Finnish samples than in European reference populations, supporting our prior hypothesis that deleterious variants could attain high frequencies in this isolated population, likely due to the effects of population bottlenecks. Our results highlight the value of large, well-phenotyped samples for rare-variant association analysis, and the challenge of evaluating the phenotypic impact of such variants.


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