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基因病例对照研究中多个单核苷酸多态性的联合关联检验。

A joint association test for multiple SNPs in genetic case-control studies.

作者信息

Wang Tao, Jacob Howard, Ghosh Soumitra, Wang Xujing, Zeng Zhao-Bang

机构信息

Division of Biostatistics, Department of Population Health, Medical College of Wisconsin, Milwaukee, Wisconsin 53226-0509, USA.

出版信息

Genet Epidemiol. 2009 Feb;33(2):151-63. doi: 10.1002/gepi.20368.

Abstract

For a dense set of genetic markers such as single nucleotide polymorphisms (SNPs) on high linkage disequilibrium within a small candidate region, a haplotype-based approach for testing association between a disease phenotype and the set of markers is attractive in reducing the data complexity and increasing the statistical power. However, due to unknown status of the underlying disease variant, a comprehensive association test may require consideration of various combinations of the SNPs, which often leads to severe multiple testing problems. In this paper, we propose a latent variable approach to test for association of multiple tightly linked SNPs in case-control studies. First, we introduce a latent variable into the penetrance model to characterize a putative disease susceptible locus (DSL) that may consist of a marker allele, a haplotype from a subset of the markers, or an allele at a putative locus between the markers. Next, through using of a retrospective likelihood to adjust for the case-control sampling ascertainment and appropriately handle the Hardy-Weinberg equilibrium constraint, we develop an expectation-maximization (EM)-based algorithm to fit the penetrance model and estimate the joint haplotype frequencies of the DSL and markers simultaneously. With the latent variable to describe a flexible role of the DSL, the likelihood ratio statistic can then provide a joint association test for the set of markers without requiring an adjustment for testing of multiple haplotypes. Our simulation results also reveal that the latent variable approach may have improved power under certain scenarios comparing with classical haplotype association methods.

摘要

对于一组密集的遗传标记,如在一个小的候选区域内处于高连锁不平衡状态的单核苷酸多态性(SNP),基于单倍型的方法用于检验疾病表型与标记集之间的关联,在降低数据复杂性和提高统计功效方面具有吸引力。然而,由于潜在疾病变异的状态未知,全面的关联检验可能需要考虑SNP的各种组合,这往往会导致严重的多重检验问题。在本文中,我们提出一种潜在变量方法,用于在病例对照研究中检验多个紧密连锁的SNP的关联性。首先,我们在外显率模型中引入一个潜在变量,以表征一个假定的疾病易感位点(DSL),它可能由一个标记等位基因、来自标记子集的一个单倍型或标记之间假定位点的一个等位基因组成。接下来,通过使用回顾性似然来调整病例对照抽样确定,并适当处理哈迪-温伯格平衡约束,我们开发一种基于期望最大化(EM)的算法来拟合外显率模型,并同时估计DSL和标记的联合单倍型频率。有了潜在变量来描述DSL的灵活作用,似然比统计量就可以为标记集提供联合关联检验,而无需对多个单倍型的检验进行调整。我们的模拟结果还表明,与经典的单倍型关联方法相比,潜在变量方法在某些情况下可能具有更高的功效。

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Evaluating associations of haplotypes with traits.评估单倍型与性状之间的关联。
Genet Epidemiol. 2004 Dec;27(4):348-64. doi: 10.1002/gepi.20037.
7
The role of haplotypes in candidate gene studies.单倍型在候选基因研究中的作用。
Genet Epidemiol. 2004 Dec;27(4):321-33. doi: 10.1002/gepi.20025.

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