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Robust Joint Analysis with Data Fusion in Two-Stage Quantitative Trait Genome-Wide Association Studies

机译:两阶段定量性状全基因组关联研究中的稳健联合分析与数据融合

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摘要

Genome-wide association studies (GWASs) in identifying the disease-associated genetic variants have been proved to be a great pioneering work. Two-stage design and analysis are often adopted in GWASs. Considering the genetic model uncertainty, many robust procedures have been proposed and applied in GWASs. However, the existing approaches mostly focused on binary traits, and few work has been done on continuous (quantitative) traits, since the statistical significance of these robust tests is difficult to calculate. In this paper, we develop a powerful F-statistic-based robust joint analysis method for quantitative traits using the combined raw data from both stages in the framework of two-staged GWASs. Explicit expressions are obtained to calculate the statistical significance and power. We show using simulations that the proposed method is substantially more robust than the F-test based on the additive model when the underlying genetic model is unknown. An example for rheumatic arthritis (RA) is used for illustration.
机译:全基因组关联研究(GWAS)用于鉴定与疾病相关的遗传变异已被证明是一项伟大的开创性工作。 GWAS通常采用两阶段设计和分析。考虑到遗传模型的不确定性,已经提出了许多鲁棒的程序并将其应用于GWAS。但是,现有方法大多集中在二元性状上,而对连续性(定量)性状进行的工作很少,因为这些鲁棒性测试的统计显着性难以计算。在本文中,我们使用两阶段GWAS框架中两个阶段的组合原始数据,开发了一种功能强大的基于F统计量的鲁棒联合分析方法,用于定量性状。获得显式表达式以计算统计显着性和功效。我们使用模拟显示出,当基础遗传模型未知时,所提出的方法比基于加性模型的F检验更加健壮。以风湿性关节炎(RA)为例进行说明。

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