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Genome-wide meta-regression of gene-environment interaction

机译:基因组环境与基因相互作用的全基因组回归

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Understanding the effects of gene-environment interaction on complex human diseases or traits in genome-wide association studies (GWAS) can help uncover novel genes and identify environmental hazards that influence only certain genetically susceptible groups. Thus there is a pressing need to develop efficient and powerful interaction analysis methods. In this paper, we propose a novel meta-analysis method of gene-environment interaction, based on meta-regression (MR-M&I). Compared with existing meta-analysis methods, MR-M&I allows for heterogeneity in the environmental factor (E) by dividing the subjects in each study into groups according to the distribution of E. Moreover, it can readily estimate linear or non-linear interactions, and thus it is more generally applicable to different scenarios. We use numerical examples to demonstrate the performance of MR-M&I and compare it with two commonly used methods in current GWAS. The results show that MR-M&I is more powerful than the other methods.
机译:在全基因组关联研究(GWAS)中了解基因-环境相互作用对复杂人类疾病或性状的影响可以帮助发现新基因,并确定仅影响某些遗传易感人群的环境危害。因此,迫切需要开发有效且强大的交互分析方法。在本文中,我们提出了一种基于元回归(MR-M&I)的新型的基因-环境相互作用的元分析方法。与现有的荟萃分析方法相比,MR-M&I通过根据E的分布将每个研究中的受试者分为几组来考虑环境因子(E)的异质性。此外,它可以轻松估算线性或非线性相互作用,因此,它更普遍地适用于不同的场景。我们使用数值示例来证明MR-M&I的性能,并将其与当前GWAS中的两种常用方法进行比较。结果表明,MR-M&I比其他方法功能强大。

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