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High-order interaction analysis in genome-wide association studies using multifactor dimensionality reduction

机译:使用多因素维数减少基因组关联研究中的高阶相互作用分析

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Gene-gene interaction (GGI) plays an important role in the causation of complex diseases, and its importance has now been well recognized through the findings of many successful genome-wide association studies (GWAS). Although many statistical methods have been introduced to address GGI analysis in GWAS, these methods have mainly focused on two-way interactions, rather than on high-order interactions. In addition, rapid advancement of biotechnology has significantly increased the number of genetic variants that are detectable, which makes an exhaustive approach unfeasible. In order to overcome the computational challenge of high-order GGI analysis using statistical approach, we develop a novel and efficient strategy called Hi-Mise; a high-order interaction analysis using the Multifactor Dimensionality Reduction (MDR) method with Interaction Set Expansion, for simultaneous identification of high-order interactions. Hi-Mise consists of second-order interaction scanning step, interaction seed initialization step, and interaction set expansion step. These steps have been computationally optimized for detection of high-order interactions. Through simulation studies using real GWAS data, Hi-Mise was shown to be capable of detecting high-order interactions with high testing balance accuracies (BAs). In addition, the application of real GWAS data showed that Hi-Mise could successfully identify multiple high-order interactions simultaneously for cases with and without marginal effects.
机译:基因 - 基因相互作用(GGI)在复杂疾病的原因起着重要作用,现在通过许多成功的基因组关联研究(GWAS)的研究结果表明其重要性得到了很好的认可。虽然已经引入了许多统计方法来解决GWAS中的GGI分析,但这些方法主要集中在双向相互作用上,而不是高阶相互作用。此外,生物技术的快速进步显着增加了可检测到的遗传变异的数量,这使得一种令人遗憾的方法不可行。为了克服使用统计方法的高阶GGI分析的计算挑战,我们开发了一种名为Hi-Mise的新颖有效的策略;使用相互作用集扩展的多因素维数减少(MDR)方法的高阶交互分析,用于同时识别高阶相互作用。 Hi-Mise由二阶交互扫描步骤,交互种子初始化步骤和交互集扩展步骤组成。这些步骤已被计算地优化以检测高阶交互。通过使用真实GWAS数据的仿真研究,Hi-Mise被证明能够检测高阶相互作用,高测试平衡精度(BAS)。此外,实际GWAS数据的应用表明,Hi-Mise可以同时成功识别多个高阶相互作用,以便在没有边缘效应的情况下同时识别多个高阶相互作用。

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