| Literature DB >> 29038595 |
Hugues Aschard1,2,3, Vincent Guillemot1, Bjarni Vilhjalmsson4, Chirag J Patel5, David Skurnik6,7,8,9, Chun J Ye10, Brian Wolpin11, Peter Kraft2,3,12, Noah Zaitlen13.
Abstract
Testing for associations in big data faces the problem of multiple comparisons, wherein true signals are difficult to detect on the background of all associations queried. This difficulty is particularly salient in human genetic association studies, in which phenotypic variation is often driven by numerous variants of small effect. The current strategy to improve power to identify these weak associations consists of applying standard marginal statistical approaches and increasing study sample sizes. Although successful, this approach does not leverage the environmental and genetic factors shared among the multiple phenotypes collected in contemporary cohorts. Here we developed covariates for multiphenotype studies (CMS), an approach that improves power when correlated phenotypes are measured on the same samples. Our analyses of real and simulated data provide direct evidence that correlated phenotypes can be used to achieve increases in power to levels often surpassing the power gained by a twofold increase in sample size.Entities:
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Year: 2017 PMID: 29038595 PMCID: PMC5797835 DOI: 10.1038/ng.3975
Source DB: PubMed Journal: Nat Genet ISSN: 1061-4036 Impact factor: 38.330