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A Fast and Accurate Algorithm to Test for Binary Phenotypes and Its Application to PheWAS

机译:快速准确的二元表型测试算法及其在PheWAS中的应用

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摘要

The availability of electronic health record (EHR)-based phenotypes allows for genome-wide association analyses in thousands of traits and has great potential to enable identification of genetic variants associated with clinical phenotypes. We can interpret the phenome-wide association study (PheWAS) result for a single genetic variant by observing its association across a landscape of phenotypes. Because a PheWAS can test thousands of binary phenotypes, and most of them have unbalanced or often extremely unbalanced case-control ratios (1:10 or 1:600, respectively), existing methods cannot provide an accurate and scalable way to test for associations. Here, we propose a computationally fast score-test-based method that estimates the distribution of the test statistic by using the saddlepoint approximation. Our method is much (∼100 times) faster than the state-of-the-art Firth’s test. It can also adjust for covariates and control type I error rates even when the case-control ratio is extremely unbalanced. Through application to PheWAS data from the Michigan Genomics Initiative, we show that the proposed method can control type I error rates while replicating previously known association signals even for traits with a very small number of cases and a large number of controls.
机译:基于电子健康记录(EHR)的表型的可用性允许对成千上万的性状进行全基因组关联分析,并且具有很大的潜力来鉴定与临床表型相关的遗传变异。我们可以通过观察整个表型之间的关联来解释单个基因变异的全表型关联研究(PheWAS)结果。因为PheWAS可以测试成千上万的二元表型,并且大多数都具有不平衡或常常非常不平衡的病例控制比率(分别为1:10或1:600),所以现有方法无法提供准确且可扩展的方式来测试关联。在这里,我们提出了一种基于计算快速得分测试的方法,该方法通过使用鞍点近似来估计测试统计量的分布。我们的方法比最新的Firth测试要快(约100倍)。即使案例控制比率极不平衡,它也可以调整协变量并控制I型错误率。通过将其应用于密歇根州基因组计划的PheWAS数据,我们证明了所提出的方法可以控制I型错误率,同时复制先前已知的关联信号,甚至对于数量很少且具有大量控制的特征。

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