| Literature DB >> 26740853 |
Eugene Urrutia1, Seunggeun Lee2, Arnab Maity3, Ni Zhao4, Judong Shen5, Yun Li6, Michael C Wu4.
Abstract
Analysis of rare genetic variants has focused on region-based analysis wherein a subset of the variants within a genomic region is tested for association with a complex trait. Two important practical challenges have emerged. First, it is difficult to choose which test to use. Second, it is unclear which group of variants within a region should be tested. Both depend on the unknown true state of nature. Therefore, we develop the Multi-Kernel SKAT (MK-SKAT) which tests across a range of rare variant tests and groupings. Specifically, we demonstrate that several popular rare variant tests are special cases of the sequence kernel association test which compares pair-wise similarity in trait value to similarity in the rare variant genotypes between subjects as measured through a kernel function. Choosing a particular test is equivalent to choosing a kernel. Similarly, choosing which group of variants to test also reduces to choosing a kernel. Thus, MK-SKAT uses perturbation to test across a range of kernels. Simulations and real data analyses show that our framework controls type I error while maintaining high power across settings: MK-SKAT loses power when compared to the kernel for a particular scenario but has much greater power than poor choices.Entities:
Keywords: Perturbation; Rare variants; Sequence kernel association test; Sequencing association studies
Year: 2015 PMID: 26740853 PMCID: PMC4698916 DOI: 10.4310/SII.2015.v8.n4.a8
Source DB: PubMed Journal: Stat Interface ISSN: 1938-7989 Impact factor: 0.582