用结构方程模型模拟生物系统中的遗传和环境因素:在能量平衡中的应用。

Nora L Nock, Li Li, Robert C Elston
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引用次数: 3

摘要

为了提高我们对基因和环境因素在复杂疾病中所起作用的理解,我们需要统计方法,以分层方式同时对多个因素进行建模,旨在反映潜在的生物系统。我们提出了一种方法,将基因建模为潜在结构,由每个基因内的多个变体(单核苷酸多态性,snp)定义,使用结构方程建模(SEM)的多元统计框架来建模涉及能量失衡(“肥胖”)的多个假定遗传和环境因素,使用来自结肠息肉病例对照研究的受试者。我们发现,瘦素受体(LEPR)基因(由SNPs rs1137100、rs1137101、rs1805096、rs6588147定义)和脂肪质量与肥胖相关(FTO)基因(由SNPs rs9939609、rs1421085、rs8044769定义)以及人口统计学(年龄、种族、性别)、体育活动、饮食和睡眠变量构建的模型增加了两者之间的关联强度(β(std)=-0.13±0.06;p=0.03),与仅FTO和LEPR结构和人口统计学变量的简化模型相比(β(std)=-0.05±0.03;p = 0.08)。几种间接途径,包括LEPR与身体活动结构之间的关联(β(std)=-0.15±0.04;P =0.01)。有趣的是,去除FTO显示LEPR与肥胖结构之间存在边际关联(β(std)=0.24±0.14;p=0.09),而FTO在模型中不存在。这些结果说明了在同一模型中建模多个相关基因和其他因素的重要性,这是该方法的主要优势。此外,我们的潜在基因构建方法利用了SNP之间的相关结构,同时捕获了该基因变异的总体效应,这将更好地利用候选基因和全基因组SNP阵列数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Genetic and Environmental Factors in Biological Systems Using Structural Equation Modeling: An Application to Energy Balance.

To improve our understanding of the role(s) that genes and environmental factors play in a complex disease, we need statistical approaches that model multiple factors simultaneously in a hierarchical manner that aims to reflect the underlying biological system(s). We present an approach that models genes as latent constructs, defined by multiple variants (single nucleotide polymorphisms, SNPs) within each gene, using the multivariate statistical framework of structural equation modeling (SEM) to model multiple, putative genetic and environmental factors involved in energy imbalance ('obesity') using subjects from a colon polyp case-control study. We found that modeling constructs for the leptin receptor (LEPR) gene (defined by SNPs rs1137100, rs1137101, rs1805096, rs6588147) and the fat mass-and-obesity-associated (FTO) gene (defined by SNPs rs9939609, rs1421085, rs8044769) together with demographic (age, race, gender), physical activity, diet and sleep variables increased the strength of the association (β(std)=-0.13 ± 0.06; p=0.03) between the FTO and obesity constructs compared to that observed in a reduced model with only the FTO and LEPR constructs and demographic variables (β(std)=-0.05 ± 0.03; p=0.08). Several indirect paths, including an association between the LEPR and physical activity constructs (β(std)=-0.15 ± 0.04; p=0.01), were found. Interestingly, removing FTO revealed a marginal association between the LEPR and obesity constructs (β(std)=0.24 ± 0.14; p=0.09), which was not present when FTO was in the model. These results illustrate the importance of modeling multiple relevant genes and other factors in the same model, which is a major strength of this approach. Moreover, our latent gene construct approach exploits the correlation structure between SNPs while capturing overall effects of variation in that gene, which will enable better utilization of candidate gene and genome-wide SNP array data.

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