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Compairing quantitative trait analysis to qualitative trait analysis for complex traits disease: A genome wide association study for hyperlipidemia

机译:比较复杂性状疾病定量特征分析的定量特征分析:一种高脂血症基因组宽协会研究

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Current standard genome-wide association studies (GWAS) have relied on the simple analysis by focusing on the association between single genetic factor and one single common complex trait. However, since most common complex traits are associated with multiple genetic factors and their epistasis, this simple analysis is not powerful enough to detect multiple genetic factors. Furthermore, in many GWAS, one binary trait is commonly used and it is usually a summary trait derived from several quantitative traits. For example, a binary trait representing hyperlipidemia status is defined by combining four quantitative traits: Total cholesterol (Tchl), High density lipoprotein (HDL) cholesterol, Low density lipoprotein (LDL), and cholesterol and Triglycerides (TG). More information can be extracted from these quantitative traits than from one summary binary trait. However, not many methods have been proposed to account for the multiple traits simultaneously. In this study, we propose the following simple stepwise strategy to increase the power of detecting multiple genetic factors jointly for the multiple traits: (1) prescreening, (2) joint identification of putative SNPs based on elastic-net (EN) variable selection, and (3) collapsing. Joint identification of multiple genetic factors would be more powerful and provide better prediction on complex traits. We illustrated our approach with a large scale genome-wide dataset from a Korean population and identified the genetic factors associated with lipid-related traits.
机译:目前标准的基因组 - 宽协会研究(GWAS)通过专注于单一遗传因子和一个常见的复杂性质之间的关联来依赖于简单的分析。然而,由于大多数常见的复杂性状与多种遗传因子及其外观相关,因此这种简单的分析不足以检测多种遗传因素。此外,在许多GWA中,通常使用一个二进制特征,通常是衍生自几种定量性状的概要性状。例如,代表高脂血症状态的二进制特征是通过组合四种定量特征来定义:总胆固醇(TCH1),高密度脂蛋白(HDL)胆固醇,低密度脂蛋白(LDL)和胆固醇和甘油三酯(TG)。可以从这些定量性状中提取更多信息而不是一个摘要二进制特征。但是,已经提出了同时对多个特征进行了许多方法。在这项研究中,我们提出了以下简单的逐步策略来增加用于多个特征的多种遗传因素的力量:(1)预筛选,(2)基于弹性网(EN)变量选择的推定SNP的联合识别, (3)崩溃。多种遗传因素的联合识别将更强大,并为复杂性状提供更好的预测。我们用来自韩国人群的大规模基因组数据集进行了阐述了我们的方法,并确定了与脂质相关性状相关的遗传因素。

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