Stenzel Stephanie L, Ahn Jaeil, Boonstra Philip S, Gruber Stephen B, Mukherjee Bhramar
Department of Epidemiology, School of Public Health, University of Michigan, Ann Arbor, MI, USA,
Eur J Epidemiol. 2015 May;30(5):413-23. doi: 10.1007/s10654-014-9908-1. Epub 2014 Jun 4.
With limited funding and biological specimen availability, choosing an optimal sampling design to maximize power for detecting gene-by-environment (G-E) interactions is critical. Exposure-enriched sampling is often used to select subjects with rare exposures for genotyping to enhance power for tests of G-E effects. However, exposure misclassification (MC) combined with biased sampling can affect characteristics of tests for G-E interaction and joint tests for marginal association and G-E interaction. Here, we characterize the impact of exposure-biased sampling under conditions of perfect exposure information and exposure MC on properties of several methods for conducting inference. We assess the Type I error, power, bias, and mean squared error properties of case-only, case-control, and empirical Bayes methods for testing/estimating G-E interaction and a joint test for marginal G (or E) effect and G-E interaction across three biased sampling schemes. Properties are evaluated via empirical simulation studies. With perfect exposure information, exposure-enriched sampling schemes enhance power as compared to random selection of subjects irrespective of exposure prevalence but yield bias in estimation of the G-E interaction and marginal E parameters. Exposure MC modifies the relative performance of sampling designs when compared to the case of perfect exposure information. Those conducting G-E interaction studies should be aware of exposure MC properties and the prevalence of exposure when choosing an ideal sampling scheme and method for characterizing G-E interactions and joint effects.
在资金和生物样本有限的情况下,选择最佳抽样设计以最大限度地提高检测基因-环境(G-E)相互作用的效能至关重要。暴露富集抽样常用于选择具有罕见暴露的受试者进行基因分型,以提高G-E效应检验的效能。然而,暴露错误分类(MC)与有偏抽样相结合,可能会影响G-E相互作用检验以及边际关联和G-E相互作用联合检验的特征。在此,我们描述了在完美暴露信息和暴露MC条件下,暴露有偏抽样对几种推断方法性质的影响。我们评估了仅病例、病例对照和经验贝叶斯方法在三种有偏抽样方案下检验/估计G-E相互作用以及边际G(或E)效应和G-E相互作用联合检验的I型错误、效能、偏差和均方误差性质。通过实证模拟研究评估这些性质。在有完美暴露信息的情况下,与随机选择受试者相比,暴露富集抽样方案无论暴露患病率如何都能提高效能,但在估计G-E相互作用和边际E参数时会产生偏差。与完美暴露信息的情况相比,暴露MC会改变抽样设计的相对性能。进行G-E相互作用研究的人员在选择理想的抽样方案和方法来表征G-E相互作用和联合效应时,应了解暴露MC的性质和暴露患病率。