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首页> 外文期刊>Genetic epidemiology. >Using Bayes model averaging to leverage both gene main effectsand G x Einteractions to identifygenomicregions in genome-wide association studies
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Using Bayes model averaging to leverage both gene main effectsand G x Einteractions to identifygenomicregions in genome-wide association studies

机译:使用贝叶斯模型平均,利用基因主要效果和G X的核心基因组协会研究中的鉴定结果

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摘要

Genome-wide association studies typically search for marginal associations between a single-nucleotide polymorphism (SNP) and a disease trait while gene-environment (G x E) interactions remain generally unexplored. More powerful methods beyond the simple case-control (CC) approach leverage either marginal effects or CC ascertainment to increase power. However, these potential gains depend on assumptions whose aptness is often unclear a priori. Here, we review G x E methods and use simulations to highlight performance as a function of main and interaction effects and the association of the two factors in the source population. Substantial variation in performance between methods leads to uncertainty as to which approach is most appropriate for any given analysis. We present a framework that (a) balances the robustness of a CC approach with the power of the case-only (CO) approach; (b) incorporates main SNP effects; (c) allows for incorporation of prior information; and (d) allows the data to determine the most appropriate model. Our framework is based on Bayes model averaging, which provides a principled statistical method for incorporating model uncertainty. We average over inclusion of parameters corresponding to the main and G x E interaction effects and the G-E association in controls. The resulting method exploits the joint evidence for main and interaction effects while gaining power from a CO equivalent analysis. Through simulations, we demonstrate that our approach detects SNPs within a wide range of scenarios with increased power over current methods. We illustrate the approach on a gene-environment scan in the USC Children's Health Study.
机译:基因组 - 范围的协会研究通常在单核苷酸多态性(SNP)和疾病特征之间寻找边缘关联,而基因环境(G X E)相互作用仍然是未探索的。超出简单案例控制(CC)方法的更强大的方法利用边际效应或CC确定增加功率。然而,这些潜在的增益取决于其适当往往不清楚的假设。在这里,我们回顾G X E方法并使用模拟以突出显示性能作为主要和交互效应的函数,以及源群中的两个因素的关联。在方法之间的性能的大量变化导致不确定的方法对于任何给定分析的方法最适合。我们提出了一个框架(a)余额平衡CC方法的稳健性,才能使用案例(CO)方法; (b)包含主要的SNP效果; (c)允许纳入先前的信息; (d)允许数据确定最合适的模型。我们的框架是基于贝叶斯型号的平均,这提供了一种用于掺入模型不确定性的原则性的统计方法。我们平均包含对应于Main和G X E交互效应的参数和控制器中的G-E关联。由此产生的方法利用主要和相互作用效应的联合证据,同时从CO等效分析中获取功率。通过模拟,我们展示了我们的方法在各种场景中检测到SNP,随着当前方法的增加而增加。我们说明了USC儿童健康研究中基因环境扫描的方法。

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