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A rapid method for combined analysis of common and rare variants at the level of a region, gene, or pathway

机译:在区域,基因或途径水平上对常见和罕见变体进行组合分析的快速方法

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Abstract: Previously described methods for the combined analysis of common and rare variants have disadvantages such as requiring an arbitrary classification of variants or permutation testing to assess statistical significance. Here we propose a novel method which implements a weighting scheme based on allele frequencies observed in both cases and controls. Because the test is unbiased, scores can be analyzed with a standard t-test. To test its validity we applied it to data for common, rare, and very rare variants simulated under the null hypothesis. To test its power we applied it to simulated data in which association was present, including data using the observed allele frequencies of common and rare variants in NOD2 previously reported in cases of Crohn’s disease and controls. The method produced results that conformed well to those expected under the null hypothesis. It demonstrated more power to detect association when rare and common variants were analyzed jointly, the power further increasing when rare variants were assigned higher weights. 20,000 analyses of a gene containing 62 variants could be performed in 80 minutes on a laptop. This approach shows promise for the analysis of data currently emerging from genome wide sequencing studies.
机译:摘要:先前描述的用于对常见和罕见变体进行组合分析的方法具有诸如需要对变体进行任意分类或进行排列检验以评估统计显着性的缺点。在这里,我们提出了一种新颖的方法,该方法基于在两种情况下和对照中观察到的等位基因频率来实现加权方案。由于测试是无偏的,因此可以使用标准t检验来分析分数。为了测试其有效性,我们将其应用于在原假设下模拟的常见,稀有和非常稀有变体的数据。为了测试其功效,我们将其应用于存在关联的模拟数据,包括使用先前在克罗恩病和对照病例中观察到的NOD2常见和稀有变异的等位基因频率的数据。该方法产生的结果与零假设下的预期结果非常吻合。联合分析稀有和常见变体时,它显示出更大的检测关联的能力,当稀有变体被赋予较高权重时,该能力会进一步增加。可以在80分钟内在笔记本电脑上对包含62个变体的基因进行20,000次分析。这种方法显示了对目前全基因组测序研究中出现的数据进行分析的希望。

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