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Application of Structural Equation Models to Genome-wide Association Analysis.

机译:结构方程模型在全基因组关联分析中的应用。

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Genome-wise association studies (GWASs) have become popular approaches to identify genetic variants associated with human biological traits. In this study, we applied Structural Equation Models (SEMs) in order to model complex relationships between genetic networks and traits as risk factors. SEMs allow us to achieve a better understanding of biological mechanisms through identifying greater numbers of genes and pathways that are associated with a set of traits and the relationship among them. For efficient SEM analysis for GWASs, we developed a procedure, comprised of four stages. In the first stage, we conducted single-SNP analysis using regression models, where age, sex, and recruited area were included as adjusting covariates. In the second stage, Fisher's combination test was conducted for each gene to detect significant genes using p-values obtained from the single-SNP analysis. In the third stage, Fisher's exact test was adopted to determine which biological pathways were enriched with significant SNPs. Finally, based on a pathway that was associated with the four traits in common, a SEM was fit to model a causal relationship among the genetic factors and traits. We applied our SEM model to GWAS data with four central obesity related traits: suprailiac and subscapular measures for upper body fat, BMI, and hypertension. Study subjects were collected from two Korean cohort regions. After quality control, 327,872 SNPs for 8842 individuals were included in the analysis. After comparing two SEMs, we concluded that suprailiac and subscapular measures may indirectly affect hypertension susceptibility by influencing BMI. In conclusion, our analysis demonstrates that SEMs provide a better understanding of biological mechanisms by identifying greater numbers of genes and pathways.
机译:基因组关联研究(GWAS)已成为识别与人类生物学特征相关的遗传变异的流行方法。在这项研究中,我们应用结构方程模型(SEM)来建模遗传网络和性状之间的复杂关系作为风险因素。 SEM使我们能够通过识别与一组特征及其之间的关系相关的更多基因和途径来更好地了解生物学机制。为了对GWAS进行有效的SEM分析,我们开发了一个程序,该程序包括四个阶段。在第一阶段,我们使用回归模型进行了单SNP分析,其中包括年龄,性别和募集面积作为调整协变量。在第二阶段,对每个基因进行Fisher组合测试,以使用从单SNP分析获得的p值检测重要基因。在第三阶段,采用Fisher精确检验来确定哪些生物途径富含重要的SNP。最后,基于与四个特质相关的途径,SEM适合于模拟遗传因素与特质之间的因果关系。我们将SEM模型应用于GWAS数据,该数据具有四个与肥胖相关的特征:上体脂肪和肩cap下度量上体脂肪,BMI和高血压。研究对象来自两个韩国队列地区。经过质量控制后,分析中包括了8842个个体的327,872个SNP。比较两个SEM后,我们得出结论,上轨和肩s下措施可能会通过影响BMI间接影响高血压易感性。总之,我们的分析表明,通过确定更多的基因和途径,SEM可更好地理解生物学机制。

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