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Gene-Environment Interactions in Genome-Wide Association Studies: A Comparative Study of Tests Applied to Empirical Studies of Type 2 Diabetes

机译:全基因组关联研究中的基因-环境相互作用:用于2型糖尿病经验研究的测试的比较研究

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摘要

The question of which statistical approach is the most effective for investigating gene-environment (G-E) interactions in the context of genome-wide association studies (GWAS) remains unresolved. By using 2 case-control GWAS (the Nurses’ Health Study, 1976–2006, and the Health Professionals Follow-up Study, 1986–2006) of type 2 diabetes, the authors compared 5 tests for interactions: standard logistic regression-based case-control; case-only; semiparametric maximum-likelihood estimation of an empirical-Bayes shrinkage estimator; and 2-stage tests. The authors also compared 2 joint tests of genetic main effects and G-E interaction. Elevated body mass index was the exposure of interest and was modeled as a binary trait to avoid an inflated type I error rate that the authors observed when the main effect of continuous body mass index was misspecified. Although both the case-only and the semiparametric maximum-likelihood estimation approaches assume that the tested markers are independent of exposure in the general population, the authors did not observe any evidence of inflated type I error for these tests in their studies with 2,199 cases and 3,044 controls. Both joint tests detected markers with known marginal effects. Loci with the most significant G-E interactions using the standard, empirical-Bayes, and 2-stage tests were strongly correlated with the exposure among controls. Study findings suggest that methods exploiting G-E independence can be efficient and valid options for investigating G-E interactions in GWAS.
机译:在全基因组关联研究(GWAS)的背景下,哪种统计方法最有效的研究基因-环境(G-E)相互作用的问题尚未解决。通过使用2个2型糖尿病的病例对照GWAS(1976-2006年的Nurses's Health Study和1986-2006年的Health Professionals跟进研究),作者比较了5种相互作用的测试:基于标准logistic回归的病例-控制;仅大小写;经验贝叶斯收缩估计量的半参数最大似然估计;和两阶段测试。作者还比较了2种基因主要作用和G-E相互作用的联合测试。高体重指数是关注的暴露对象,被建模为一种二元特征,以避免作者错误地估计连续体重指数的主要作用时所观察到的I型错误率过高。尽管仅基于案例的估计和基于半参数的最大似然估计方法均假设被测标记物与一般人群的暴露无关,但在研究2199例病例和研究的过程中,作者并未观察到任何I型膨胀错误的证据。 3044个控件。两项联合测试均检测到具有已知边缘效应的标记。使用标准,经验贝叶斯和两阶段试验,具有最显着的G-E相互作用的基因座与对照组之间的接触密切相关。研究结果表明,利用G-E独立性的方法可能是研究GWAS中G-E相互作用的有效方法。

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