Chung Ren-Hua, Kang Chen-Yu
Division of Biostatistics and Bioinformatics, Institute of Population Health Sciences, National Health Research Institutes, Zhunan, Taiwan.
Front Genet. 2018 Jan 8;8:228. doi: 10.3389/fgene.2017.00228. eCollection 2017.
Next-generation sequencing (NGS) has been widely used in genetic association studies to identify both common and rare variants associated with complex diseases. Various statistical association tests have been developed to analyze NGS data; however, most focus on identifying the marginal effects of a set of genetic variants on the disease. Only a few association tests for NGS data analysis have considered the interaction effects between genes. We developed three powerful gene-based gene-gene interaction tests for testing both the main effects and the interaction effects of common, low-frequency, and common with low-frequency variant pairs between two genes (the IGOF tests) in case-control studies using NGS data. We performed a comprehensive simulation study to verify that the proposed tests had appropriate type I error rates and significantly higher power than did other interaction tests for analyzing NGS data. The tests were applied to a whole-exome sequencing dataset for autism spectrum disorder (ASD) and the significant results were evaluated in another independent ASD cohort. The IGOF tests were implemented in C++ and are available at http://igof.sourceforge.net.
下一代测序(NGS)已广泛应用于基因关联研究,以识别与复杂疾病相关的常见和罕见变异。为分析NGS数据,已开发出各种统计关联检验;然而,大多数检验侧重于识别一组基因变异对疾病的边际效应。在NGS数据分析中,只有少数关联检验考虑了基因之间的相互作用效应。我们开发了三种强大的基于基因的基因-基因相互作用检验,用于在使用NGS数据的病例对照研究中检验两个基因之间常见、低频以及常见与低频变异对的主效应和相互作用效应(IGOF检验)。我们进行了全面的模拟研究,以验证所提出的检验具有适当的I型错误率,并且在分析NGS数据时比其他相互作用检验具有显著更高的检验效能。这些检验应用于一个自闭症谱系障碍(ASD)的全外显子测序数据集,并在另一个独立的ASD队列中对显著结果进行了评估。IGOF检验用C++实现,可从http://igof.sourceforge.net获取。