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Discovering Genetic Interactions in Large-Scale Association Studies by Stage-wise Likelihood Ratio Tests

机译:通过阶段似然比检验发现大规模关联研究中的遗传相互作用

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摘要

Despite the success of genome-wide association studies in medical genetics, the underlying genetics of many complex diseases remains enigmatic. One plausible reason for this could be the failure to account for the presence of genetic interactions in current analyses. Exhaustive investigations of interactions are typically infeasible because the vast number of possible interactions impose hard statistical and computational challenges. There is, therefore, a need for computationally efficient methods that build on models appropriately capturing interaction. We introduce a new methodology where we augment the interaction hypothesis with a set of simpler hypotheses that are tested, in order of their complexity, against a saturated alternative hypothesis representing interaction. This sequential testing provides an efficient way to reduce the number of non-interacting variant pairs before the final interaction test. We devise two different methods, one that relies on a priori estimated numbers of marginally associated variants to correct for multiple tests, and a second that does this adaptively. We show that our methodology in general has an improved statistical power in comparison to seven other methods, and, using the idea of closed testing, that it controls the family-wise error rate. We apply our methodology to genetic data from the PROCARDIS coronary artery disease case/control cohort and discover three distinct interactions. While analyses on simulated data suggest that the statistical power may suffice for an exhaustive search of all variant pairs in ideal cases, we explore strategies for a priori selecting subsets of variant pairs to test. Our new methodology facilitates identification of new disease-relevant interactions from existing and future genome-wide association data, which may involve genes with previously unknown association to the disease. Moreover, it enables construction of interaction networks that provide a systems biology view of complex diseases, serving as a basis for more comprehensive understanding of disease pathophysiology and its clinical consequences.
机译:尽管全基因组关联研究在医学遗传学中取得了成功,但许多复杂疾病的潜在遗传学仍然是个谜。一个合理的原因可能是在当前的分析中未能考虑到遗传相互作用的存在。通常无法进行详尽的交互研究,因为大量可能的交互作用给统计和计算带来了挑战。因此,需要在适当捕获交互作用的模型上建立的计算有效方法。我们引入了一种新的方法,在该方法中,我们使用一组较简单的假设来扩展交互作用假设,这些假设按照其复杂性顺序针对表示交互作用的饱和替代假设进行了测试。此顺序测试提供了一种有效的方法,可以在最终交互测试之前减少非交互变异对的数量。我们设计了两种不同的方法,一种依靠先验估计的边缘关联变体的数量来校正多个测试,另一种则自适应地进行。我们证明,与其他七个方法相比,我们的方法通常具有改进的统计能力,并且使用封闭测试的思想,它可以控制按族分类的错误率。我们将我们的方法应用于来自PROCARDIS冠心病病例/对照队列的遗传数据,并发现了三种截然不同的相互作用。虽然对模拟数据的分析表明,在理想情况下,统计功效可能足以详尽搜索所有变体对,但我们探索了先验选择变体对子集进行测试的策略。我们的新方法有助于从现有和将来的全基因组关联数据中识别与疾病相关的新相互作用,其中可能涉及与该疾病先前未知关联的基因。而且,它使构建相互作用网络成为可能,该相互作用网络提供了复杂疾病的系统生物学观点,可作为更全面了解疾病病理生理及其临床后果的基础。

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