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用于检测疾病相关罕见变异的似然比和得分负担检验。

Likelihood ratio and score burden tests for detecting disease-associated rare variants.

作者信息

Lee Woojoo, Lee Donghwan, Pawitan Yudi

出版信息

Stat Appl Genet Mol Biol. 2015 Nov;14(5):481-95. doi: 10.1515/sagmb-2014-0089.

Abstract

This paper presents two simple rare variant (RV) burden tests based on the likelihood ratio test (LRT) and score statistics. LRT is one of the commonly used tests in practical data analysis, and we show here that there is no reason to ignore it in testing RV associations. With the Bartlett correction, we have numerically shown that the LRT-based test can have a reliable distribution. Our simulation study indicates that if the non-null variants are as common as the null variants, then the LRT and score statistics have comparable performance to the C-alpha test, and if the former is rarer than the null variants, then they outperform the C-alpha test.

摘要

本文提出了两种基于似然比检验(LRT)和得分统计量的简单罕见变异(RV)负担检验方法。LRT是实际数据分析中常用的检验方法之一,我们在此表明,在检验RV关联时没有理由忽视它。通过Bartlett校正,我们通过数值计算表明基于LRT的检验可以具有可靠的分布。我们的模拟研究表明,如果非零变异与零变异一样常见,那么LRT和得分统计量与C-alpha检验具有可比的性能,并且如果前者比零变异更罕见,那么它们的性能优于C-alpha检验。

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