| Literature DB >> 26058849 |
Ruzong Fan1, Yifan Wang2, Michael Boehnke3, Wei Chen4, Yun Li5, Haobo Ren6, Iryna Lobach7, Momiao Xiong8.
Abstract
Meta-analysis of genetic data must account for differences among studies including study designs, markers genotyped, and covariates. The effects of genetic variants may differ from population to population, i.e., heterogeneity. Thus, meta-analysis of combining data of multiple studies is difficult. Novel statistical methods for meta-analysis are needed. In this article, functional linear models are developed for meta-analyses that connect genetic data to quantitative traits, adjusting for covariates. The models can be used to analyze rare variants, common variants, or a combination of the two. Both likelihood-ratio test (LRT) and F-distributed statistics are introduced to test association between quantitative traits and multiple variants in one genetic region. Extensive simulations are performed to evaluate empirical type I error rates and power performance of the proposed tests. The proposed LRT and F-distributed statistics control the type I error very well and have higher power than the existing methods of the meta-analysis sequence kernel association test (MetaSKAT). We analyze four blood lipid levels in data from a meta-analysis of eight European studies. The proposed methods detect more significant associations than MetaSKAT and the P-values of the proposed LRT and F-distributed statistics are usually much smaller than those of MetaSKAT. The functional linear models and related test statistics can be useful in whole-genome and whole-exome association studies.Entities:
Keywords: association mapping; common variants; complex traits; functional data analysis; meta-analysis; quantitative trait loci; rare variants
Mesh:
Year: 2015 PMID: 26058849 PMCID: PMC4574252 DOI: 10.1534/genetics.115.178343
Source DB: PubMed Journal: Genetics ISSN: 0016-6731 Impact factor: 4.562