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Sample size and power analysis for sparse signal recovery in genome-wide association studies

机译:全基因组关联研究中稀疏信号恢复的样本量和功效分析

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摘要

Genome-wide association studies have successfully identified hundreds of novel genetic variants associated with many complex human diseases. However, there is a lack of rigorous work on evaluating the statistical power for identifying these variants. In this paper, we consider sparse signal identification in genome-wide association studies and present two analytical frameworks for detailed analysis of the statistical power for detecting and identifying the disease-associated variants. We present an explicit sample size formula for achieving a given false non-discovery rate while controlling the false discovery rate based on an optimal procedure. Sparse genetic variant recovery is also considered and a boundary condition is established in terms of sparsity and signal strength for almost exact recovery of both disease-associated variants and nondisease-associated variants. A data-adaptive procedure is proposed to achieve this bound. The analytical results are illustrated with a genome-wide association study of neuroblastoma.
机译:全基因组关联研究已成功鉴定出数百种与许多复杂人类疾病相关的新型遗传变异。但是,在评估用于识别这些变体的统计能力方面缺乏严格的工作。在本文中,我们考虑了全基因组关联研究中的稀疏信号识别,并提出了两个分析框架来详细分析用于检测和识别与疾病相关的变异的统计能力。我们提出了一个明确的样本量公式,以实现给定的错误未发现率,同时基于最佳过程控制错误发现率。还考虑了稀疏的遗传变异恢复,并根据稀疏性和信号强度建立了一个边界条件,以几乎精确地恢复与疾病相关的变异和与非疾病相关的变异。提出了一种数据自适应程序来实现此限制。用神经母细胞瘤的全基因组关联研究说明了分析结果。

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