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False Discovery Rates for Rare Variants From Sequenced Data

机译:序列数据中稀有变体的错误发现率

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The detection of rare deleterious variants is the preeminent current technical challenge in statistical genetics. Sorting the deleterious from neutral variants at a disease locus is challenging because of the sparseness of the evidence for each individual variant. Hierarchical modeling and Bayesian model uncertainty are two techniques that have been shown to be promising in pinpointing individual rare variants that may be driving the association. Interpreting the results from these techniques from the perspective of multiple testing is a challenge and the goal of this article is to better understand their false discovery properties. Using simulations, we conclude that accurate false discovery control cannot be achieved in this framework unless the magnitude of the variants' risk is large and the hierarchical characteristics have high accuracy in distinguishing deleterious from neutral variants.
机译:稀有有害变异的检测是统计遗传学目前的主要技术挑战。由于每个个体变体的证据稀少,因此在疾病位点对有害变体与中性变体进行分类具有挑战性。层次建模和贝叶斯模型不确定性是在确定可能导致关联的单个稀有变体方面被证明很有前途的两种技术。从多重测试的角度来解释这些技术的结果是一个挑战,本文的目的是更好地了解它们的错误发现属性。使用模拟得出的结论是,除非变体的风险程度大且分级特征在区分有害变体和中性变体方面具有很高的准确性,否则无法在此框架中实现准确的错误发现控制。

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