Detection of common single nucleotide polymorphisms synthesizing quantitative trait association of rarer causal variants

  1. Norihiro Kato1
  1. 1Department of Gene Diagnostics and Therapeutics, Research Institute, National Center for Global Health and Medicine, Tokyo 162-8655, Japan;
  2. 2Pathogen Genomics Center, National Institute of Infectious Diseases, Tokyo 162-8640, Japan;
  3. 3Shimane University Hospital, Izumo 693-8501, Japan;
  4. 4Department of Geriatric Medicine and Nephrology, Osaka University Graduate School of Medicine, Suita 565-0871, Japan;
  5. 5Amagasaki Health Medical Foundation, Amagasaki 661-0012, Japan

    Abstract

    Genome-wide association (GWA) studies have identified hundreds of common (minor allele frequency ≥5%) single nucleotide polymorphisms (SNPs) associated with phenotype traits or diseases, yet causal variants accounting for the association signals have rarely been determined. A question then raised is whether a GWA signal represents an “indirect association” as a proxy of a strongly correlated causal variant with similar frequency, or a “synthetic association” of one or more rarer causal variants in linkage disequilibrium (D′ ≈ 1, but r2 not large); answering the question generally requires extensive resequencing and association analysis. Instead, we propose to test statistically whether a quantitative trait (QT) association of an SNP represents a synthetic association or not by inspecting the QT distribution at each genotype, not requiring the causal variant(s) to be known. We devised two test statistics and assessed the power by mathematical analysis and simulation. Testing the heterogeneity of variance was powerful when low-frequency causal alleles are linked mostly to one SNP allele, while testing the skewness outperformed when the causal alleles are linked evenly to either of the SNP alleles. By testing a statistic combining these two in 5000 individuals, we could detect synthetic association of a GWA signal when causal alleles sum up to 3% in frequency. Such signal only partially explains the heritability contributed by the whole locus. The proposed test is useful for designing fine mapping after studying association of common SNPs exhaustively; we can prioritize which GWA signal and which individuals to be resequenced, and identify the causal variants efficiently.

    Footnotes

    • Received September 24, 2010.
    • Accepted March 9, 2011.

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