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Statistical Analysis of Multiple Phenotypes in Genetic Epidemiologic Studies: From Cross-Phenotype Associations to Pleiotropy

机译:遗传流行病学研究中多种表型的统计分析:从交叉表型关联到肺炎

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摘要

In the context of genetics, pleiotropy refers to the phenomenon in which a single genetic locus affects more than 1 trait or disease. Genetic epidemiologic studies have identified loci associated with multiple phenotypes, and these cross-phenotype associations are often incorrectly interpreted as examples of pleiotropy. Pleiotropy is only one possible explanation for cross-phenotype associations. Cross-phenotype associations may also arise due to issues related to study design, confounder bias, or nongenetic causal links between the phenotypes under analysis. Therefore, it is necessary to dissect cross-phenotype associations carefully to uncover true pleiotropic loci. In this review, we describe statistical methods that can be used to identify robust statistical evidence of pleiotropy. First, we provide an overview of univariate and multivariate methods for discovery of cross-phenotype associations and highlight important considerations for choosing among available methods. Then, we describe how to dissect cross-phenotype associations by using mediation analysis. Pleiotropic loci provide insights into the mechanistic underpinnings of disease comorbidity, and they may serve as novel targets for interventions that simultaneously treat multiple diseases. Discerning between different types of cross-phenotype associations is necessary to realize the public health potential of pleiotropic loci.
机译:在遗传学的背景下,Pleiotropy是指单个遗传基因座影响超过1个特征或疾病的现象。遗传流行病学研究已经确定了与多种表型相关的基因座,并且这些交通表型关联通常被错误地解释为肺炎的实例。 Pleiotropy只是交叉表型关联的一个可能的解释。由于在分析中的表型与表型之间的表型之间的研究设计,混淆偏差或环境因果关系相关的问题,也可能出现交叉表型关联。因此,有必要仔细剖析交叉表型关联以发现真正的肺炎基因座。在本次审查中,我们描述了可用于识别Pleiotropy的强大统计证据的统计方法。首先,我们概述了用于发现交叉表型关联的单变量和多变量方法,并突出了用于在可用方法中选择的重要考虑因素。然后,我们描述如何通过使用中介分析来筛查交叉表型关联。 Pleiotropic Loci提供了进入疾病合并症的机制底划的洞察力,它们可以作为同时治疗多种疾病的干预措施的新靶点。在不同类型的交叉表型关联之间辨别是必要的,以实现Pleiotropic Loci的公共卫生潜力。

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