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Epistatic Module Detection for Case-Control Studies: A Bayesian Model with a Gibbs Sampling Strategy

机译:用于病例对照研究的上位模块检测:具有Gibbs抽样策略的贝叶斯模型

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摘要

The detection of epistatic interactive effects of multiple genetic variants on the susceptibility of human complex diseases is a great challenge in genome-wide association studies (GWAS). Although methods have been proposed to identify such interactions, the lack of an explicit definition of epistatic effects, together with computational difficulties, makes the development of new methods indispensable. In this paper, we introduce epistatic modules to describe epistatic interactive effects of multiple loci on diseases. On the basis of this notion, we put forward a Bayesian marker partition model to explain observed case-control data, and we develop a Gibbs sampling strategy to facilitate the detection of epistatic modules. Comparisons of the proposed approach with three existing methods on seven simulated disease models demonstrate the superior performance of our approach. When applied to a genome-wide case-control data set for Age-related Macular Degeneration (AMD), the proposed approach successfully identifies two known susceptible loci and suggests that a combination of two other loci—one in the gene SGCD and the other in SCAPER—is associated with the disease. Further functional analysis supports the speculation that the interaction of these two genetic variants may be responsible for the susceptibility of AMD. When applied to a genome-wide case-control data set for Parkinson's disease, the proposed method identifies seven suspicious loci that may contribute independently to the disease.
机译:在全基因组关联研究(GWAS)中,检测多种遗传变异对人类复杂疾病易感性的上位交互作用是一项巨大的挑战。尽管已经提出了识别这种相互作用的方法,但是缺乏对上位性作用的明确定义以及计算上的困难,使得新方法的开发必不可少。在本文中,我们介绍了上位模块,以描述多个基因座对疾病的上位相互作用。在此概念的基础上,我们提出了贝叶斯标记划分模型来解释观察到的病例对照数据,并开发了吉布斯采样策略以促进上位模块的检测。所提出的方法与三种模拟方法在七个模拟疾病模型上的比较表明了我们方法的优越性能。当将其应用于年龄相关性黄斑变性(AMD)的全基因组病例对照数据集时,所提出的方法成功地鉴定了两个已知的易感基因座,并提出了另外两个基因座的组合,一个是基因SGCD,另一个是基因SCAPER-与疾病有关。进一步的功能分析支持推测这两个遗传变异的相互作用可能是AMD易感性的原因。当将其应用于帕金森氏病的全基因组病例对照数据集时,所提出的方法可识别出七个可疑位点,这些位点可能独立于该疾病。

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