4.4 Article

Identifying Causal Variants at Loci with Multiple Signals of Association

Journal

GENETICS
Volume 198, Issue 2, Pages 497-U84

Publisher

GENETICS SOCIETY AMERICA
DOI: 10.1534/genetics.114.167908

Keywords

association studies; causal variants; fine mapping

Funding

  1. National Science Foundation [0513612, 0731455, 0729049, 0916676, 1065276, 1302448, 1320589]
  2. National Institutes of Health (NIH) [K25-HL080079, U01-DA024417, P01-HL30568, P01-HL28481, R01-GM083198, R01-MH101782, R01-ES022282, R03 CA162200, R01 GM053275]
  3. National Institute of Neurological Disorders and Stroke Informatics Center for Neurogenetics and Neurogenomics [P30 NS062691]
  4. Div Of Information & Intelligent Systems
  5. Direct For Computer & Info Scie & Enginr [1320589] Funding Source: National Science Foundation

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Although genome-wide association studies have successfully identified thousands of risk loci for complex traits, only a handful of the biologically causal variants, responsible for association at these loci, have been successfully identified. Current statistical methods for identifying causal variants at risk loci either use the strength of the association signal in an iterative conditioning framework or estimate probabilities for variants to be causal. A main drawback of existing methods is that they rely on the simplifying assumption of a single causal variant at each risk locus, which is typically invalid at many risk loci. In this work, we propose a new statistical framework that allows for the possibility of an arbitrary number of causal variants when estimating the posterior probability of a variant being causal. A direct benefit of our approach is that we predict a set of variants for each locus that under reasonable assumptions will contain all of the true causal variants with a high confidence level (e.g., 95%) even when the locus contains multiple causal variants. We use simulations to show that our approach provides 20-50% improvement in our ability to identify the causal variants compared to the existing methods at loci harboring multiple causal variants. We validate our approach using empirical data from an expression QTL study of CHI3L2 to identify new causal variants that affect gene expression at this locus. CAVIAR is publicly available online at http://genetics.cs.ucla.edu/caviar/.

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