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首页> 外文期刊>Annals of Human Genetics >Joint analysis of multiple phenotypes in association studies using allele‐based clustering approach for non‐normal distributions
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Joint analysis of multiple phenotypes in association studies using allele‐based clustering approach for non‐normal distributions

机译:基于等基于等级的聚类方法对非正常分布的多种表型的联合分析

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摘要

Abstract In the study of complex diseases, several correlated phenotypes are usually measured. There is also increasing evidence showing that testing the association between a single‐nucleotide polymorphism (SNP) and multiple‐dependent phenotypes jointly is often more powerful than analyzing only one phenotype at a time. Therefore, developing statistical methods to test for genetic association with multiple phenotypes has become increasingly important. In this paper, we develop an Allele‐based Clustering Approach (ACA) for the joint analysis of multiple non‐normal phenotypes in association studies. In ACA, we consider the alleles at a SNP of interest as a dependent variable with two classes, and the correlated phenotypes as predictors to predict the alleles at the SNP of interest. We perform extensive simulation studies to evaluate the performance of ACA and compare the power of ACA with the powers of Adaptive Fisher's Combination test, Trait‐based Association Test that uses Extended Simes procedure, Fisher's Combination test, the standard MANOVA, and the joint model of Multiple Phenotypes. Our simulation studies show that the proposed method has correct type I error rates and is much more powerful than other methods for some non‐normal distributions.
机译:摘要在复杂疾病的研究中,通常测量几种相关表型。还有越来越多的证据表明,测试单核苷酸多态性(SNP)和多种依赖表型之间的关联往往比一次只分析一种表型更强大。因此,制定与多种表型的遗传关联试验的统计方法已经变得越来越重要。在本文中,我们开发了一种基于等位基因的聚类方法(ACA),用于关联研究中多种非正常表型的联合分析。在ACA中,我们将兴趣SNP的等位基因视为具有两类的依赖变量,以及相关表型作为预测因子,以预测感兴趣的SNP的等位基因。我们进行广泛的模拟研究,以评估ACA的性能,并将ACA的功率与自适应渔民的组合测试的权力进行比较,采用基于特性的协会测试,使用扩展SIMES程序,Fisher的组合测试,标准Manova和联合模型多种表型。我们的仿真研究表明,该方法具有正确的I型错误率,并且比其他非正常发行版的其他方法更强大。

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