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Genome metabolome integrated network analysis to uncover connections between genetic variants and complex traits: an application to obesity

机译:基因组代谢组集成网络分析揭示遗传变异与复杂性状之间的联系:肥胖的应用

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摘要

Current studies of phenotype diversity by genome-wide association studies (GWAS) are mainly focused on identifying genetic variants that influence level changes of individual traits without considering additional alterations at the system-level. However, in addition to level alterations of single phenotypes, differences in association between phenotype levels are observed across different physiological states. Such differences in molecular correlations between states can potentially reveal information about the system state beyond that reported by changes in mean levels alone. In this study, we describe a novel methodological approach, which we refer to as genome metabolome integrated network analysis (GEMINi) consisting of a combination of correlation network analysis and genome-wide correlation study. The proposed methodology exploits differences in molecular associations to uncover genetic variants involved in phenotype variation. We test the performance of the GEMINi approach in a simulation study and illustrate its use in the context of obesity and detailed quantitative metabolomics data on systemic metabolism. Application of GEMINi revealed a set of metabolic associations which differ between normal and obese individuals. While no significant associations were found between genetic variants and body mass index using a standard GWAS approach, further investigation of the identified differences in metabolic association revealed a number of loci, several of which have been previously implicated with obesity-related processes. This study highlights the advantage of using molecular associations as an alternative phenotype when studying the genetic basis of complex traits and diseases.
机译:目前,通过全基因组关联研究(GWAS)进行的表型多样性研究主要集中于确定影响单个性状水平变化的遗传变异,而无需考虑系统水平的其他变化。但是,除了单个表型的水平改变外,在不同的生理状态下观察到表型水平之间的关联差异。状态之间分子相关性的这种差异可能潜在地揭示有关系统状态的信息,而不仅仅是平均水平变化所报告的信息。在这项研究中,我们描述了一种新的方法论方法,我们将其称为基因组代谢组综合网络分析(GEMINi),由相关网络分析和全基因组相关研究组成。拟议的方法利用分子关联中的差异来揭示涉及表型变异的遗传变异。我们在模拟研究中测试了GEMINi方法的性能,并说明了其在肥胖症和系统代谢的详细定量代谢组学数据中的应用。 GEMINi的应用揭示了一组正常人和肥胖者之间不同的代谢联系。虽然使用标准GWAS方法在遗传变异与体重指数之间未发现显着关联,但对代谢关联中已识别差异的进一步调查显示了多个基因座,其中一些以前与肥胖相关的过程有关。这项研究强调了在研究复杂性状和疾病的遗传基础时,使用分子缔合作为替代表型的优势。

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