Estimating Missing Heritability for Disease from Genome-wide Association Studies
✍ Scribed by Sang Hong Lee; Naomi R. Wray; Michael E. Goddard; Peter M. Visscher
- Book ID
- 113423001
- Publisher
- American Society of Human Genetics
- Year
- 2011
- Tongue
- English
- Weight
- 183 KB
- Volume
- 88
- Category
- Article
- ISSN
- 0002-9297
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✦ Synopsis
Genome-wide association studies are designed to discover SNPs that are associated with a complex trait. Employing strict significance thresholds when testing individual SNPs avoids false positives at the expense of increasing false negatives. Recently, we developed a method for quantitative traits that estimates the variation accounted for when fitting all SNPs simultaneously. Here we develop this method further for case-control studies. We use a linear mixed model for analysis of binary traits and transform the estimates to a liability scale by adjusting both for scale and for ascertainment of the case samples. We show by theory and simulation that the method is unbiased. We apply the method to data from the Wellcome Trust Case Control Consortium and show that a substantial proportion of variation in liability for Crohn disease, bipolar disorder, and type I diabetes is tagged by common SNPs.
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Genome-wide association studies (GWAS) are conducted with the promise to discover novel genetic variants associated with diverse traits. For most traits, associated markers individually explain just a modest fraction of the phenotypic variation, but their number can well be in the hundreds. We devel