纵向研究中基因-环境交互作用的集合检验方法

Set-Based Tests for the Gene–Environment Interaction in Longitudinal Studies

Journal of the American Statistical Association · 2016
被引 21
ABS 4

中文导读

提出一种广义得分型检验,用于纵向定量性状中基因-环境交互作用的集合推断,对受试者内相关结构误设稳健,且功效优于现有方法。

Abstract

We propose a generalized score type test for set-based inference for gene-environment interaction with longitudinally measured quantitative traits. The test is robust to misspecification of within subject correlation structure and has enhanced power compared to existing alternatives. Unlike tests for marginal genetic association, set-based tests for gene-environment interaction face the challenges of a potentially misspecified and high-dimensional main effect model under the null hypothesis. We show that our proposed test is robust to main effect misspecification of environmental exposure and genetic factors under the gene-environment independence condition. When genetic and environmental factors are dependent, the method of sieves is further proposed to eliminate potential bias due to a misspecified main effect of a continuous environmental exposure. A weighted principal component analysis approach is developed to perform dimension reduction when the number of genetic variants in the set is large relative to the sample size. The methods are motivated by an example from the Multi-Ethnic Study of Atherosclerosis (MESA), investigating interaction between measures of neighborhood environment and genetic regions on longitudinal measures of blood pressure over a study period of about seven years with 4 exams.

基因-环境交互作用纵向研究统计检验主成分分析