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Fine Mapping Causal Variants with an Approximate Bayesian Method Using Marginal Test Statistics

机译:使用边际检验统计量的近似贝叶斯方法精细映射因果变量

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摘要

Two recently developed fine-mapping methods, CAVIAR and PAINTOR, demonstrate better performance over other fine-mapping methods. They also have the advantage of using only the marginal test statistics and the correlation among SNPs. Both methods leverage the fact that the marginal test statistics asymptotically follow a multivariate normal distribution and are likelihood based. However, their relationship with Bayesian fine mapping, such as BIMBAM, is not clear. In this study, we first show that CAVIAR and BIMBAM are actually approximately equivalent to each other. This leads to a fine-mapping method using marginal test statistics in the Bayesian framework, which we call CAVIAR Bayes factor (CAVIARBF). Another advantage of the Bayesian framework is that it can answer both association and fine-mapping questions. We also used simulations to compare CAVIARBF with other methods under different numbers of causal variants. The results showed that both CAVIARBF and BIMBAM have better performance than PAINTOR and other methods. Compared to BIMBAM, CAVIARBF has the advantage of using only marginal test statistics and takes about one-quarter to one-fifth of the running time. We applied different methods on two independent cohorts of the same phenotype. Results showed that CAVIARBF, BIMBAM, and PAINTOR selected the same top 3 SNPs; however, CAVIARBF and BIMBAM had better consistency in selecting the top 10 ranked SNPs between the two cohorts. Software is available at .
机译:与其他精细映射方法相比,最近开发的两种精细映射方法CAVIAR和PAINTOR表现出更好的性能。它们还具有仅使用边际检验统计量和SNP之间的相关性的优势。两种方法都利用了边际检验统计量渐近遵循多元正态分布并且基于似然性这一事实。但是,它们与贝叶斯精细映射(例如BIMBAM)的关系尚不清楚。在这项研究中,我们首先证明CAVIAR和BIMBAM实际上彼此近似相等。这导致在贝叶斯框架中使用边际检验统计信息的精细映射方法,我们将其称为CAVIAR贝叶斯因子(CAVIARBF)。贝叶斯框架的另一个优点是它可以回答关联和精细映射问题。我们还使用模拟将CAVIARBF与其他方法在不同数量的因果变量下进行了比较。结果表明,CAVIARBF和BIMBAM均比PAINTOR等方法具有更好的性能。与BIMBAM相比,CAVIARBF的优势在于仅使用边际测试统计数据,并且仅占用运行时间的四分之一到五分之一。我们对相同表型的两个独立队列应用了不同的方法。结果表明,CAVIARBF,BIMBAM和PAINTOR选择了相同的前3个SNP。但是,CAVIARBF和BIMBAM在选择两个队列中排名前10位的SNP时具有更好的一致性。可从下载软件。

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