| Literature DB >> 31433078 |
Diptavo Dutta1,2, Sarah A Gagliano Taliun1,2, Joshua S Weinstock1,2, Matthew Zawistowski1,2, Carlo Sidore3, Lars G Fritsche1,2, Francesco Cucca3,4, David Schlessinger5, Gonçalo R Abecasis1,2, Chad M Brummett6,7, Seunggeun Lee1,2.
Abstract
The power of genetic association analyses can be increased by jointly meta-analyzing multiple correlated phenotypes. Here, we develop a meta-analysis framework, Meta-MultiSKAT, that uses summary statistics to test for association between multiple continuous phenotypes and variants in a region of interest. Our approach models the heterogeneity of effects between studies through a kernel matrix and performs a variance component test for association. Using a genotype kernel, our approach can test for rare-variants and the combined effects of both common and rare-variants. To achieve robust power, within Meta-MultiSKAT, we developed fast and accurate omnibus tests combining different models of genetic effects, functional genomic annotations, multiple correlated phenotypes, and heterogeneity across studies. In addition, Meta-MultiSKAT accommodates situations where studies do not share exactly the same set of phenotypes or have differing correlation patterns among the phenotypes. Simulation studies confirm that Meta-MultiSKAT can maintain the type-I error rate at the exome-wide level of 2.5 × 10-6 . Further simulations under different models of association show that Meta-MultiSKAT can improve the power of detection from 23% to 38% on average over single phenotype-based meta-analysis approaches. We demonstrate the utility and improved power of Meta-MultiSKAT in the meta-analyses of four white blood cell subtype traits from the Michigan Genomics Initiative (MGI) and SardiNIA studies.Entities:
Keywords: kernel-regression; meta-analysis; multiple-phenotypes; rare-variant; region-based
Mesh:
Year: 2019 PMID: 31433078 PMCID: PMC7006736 DOI: 10.1002/gepi.22248
Source DB: PubMed Journal: Genet Epidemiol ISSN: 0741-0395 Impact factor: 2.135