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Analysis of heterogeneity and epistasis in physiological mixed populations by combined structural equation modelling and latent class analysis

机译:结合结构方程模型和隐性类分析分析生理混合种群的异质性和上位性

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Background Biological systems are interacting, molecular networks in which genetic variation contributes to phenotypic heterogeneity. This heterogeneity is traditionally modelled as a dichotomous trait (e.g. affected vs. non-affected). This is far too simplistic considering the complexity and genetic variations of such networks. Methods In this study on type 2 diabetes mellitus, heterogeneity was resolved in a latent class framework combined with structural equation modelling using phenotypic indicators of distinct physiological processes. We modelled the clinical condition "the metabolic syndrome", which is known to be a heterogeneous and polygenic condition with a clinical endpoint (type 2 diabetes mellitus). In the model presented here, genetic factors were not included and no genetic model is assumed except that genes operate in networks. The impact of stratification of the study population on genetic interaction was demonstrated by analysis of several genes previously associated with the metabolic syndrome and type 2 diabetes mellitus. Results The analysis revealed the existence of 19 distinct subpopulations with a different propensity to develop diabetes mellitus within a large healthy study population. The allocation of subjects into subpopulations was highly accurate with an entropy measure of nearly 0.9. Although very few gene variants were directly associated with metabolic syndrome in the total study sample, almost one third of all possible epistatic interactions were highly significant. In particular, the number of interactions increased after stratifying the study population, suggesting that interactions are masked in heterogenous populations. In addition, the genetic variance increased by an average of 35-fold when analysed in the subpopulations. Conclusion The major conclusions from this study are that the likelihood of detecting true association between genetic variants and complex traits increases tremendously when studied in physiological homogenous subpopulations and on inclusion of epistasis in the analysis, whereas epistasis (i.e. genetic networks) is ubiquitous and should be the basis in modelling any biological process.
机译:背景技术生物系统是相互作用的分子网络,其中遗传变异导致表型异质性。传统上,将这种异质性建模为二分性状(例如,受影响与不受影响)。考虑到这种网络的复杂性和遗传变异,这太简单了。方法在本项2型糖尿病研究中,使用潜在生理过程的表型指标,在潜在类别框架内结合结构方程模型解决了异质性问题。我们对“新陈代谢综合症”的临床状况进行了建模,这是一种具有临床终点(2型糖尿病)的异质多基因病。在此处介绍的模型中,不包括遗传因素,并且除了基因在网络中运行外,不假设任何遗传模型。通过分析先前与代谢综合征和2型糖尿病相关的几个基因,证明了研究人群分层对遗传相互作用的影响。结果分析结果表明,在一个健康的大型研究人群中,存在19个不同的亚群,它们具有不同的发展糖尿病倾向。受试者亚人群的分配非常准确,熵测度接近0.9。尽管在整个研究样本中很少有基因变异与代谢综合征直接相关,但几乎所有可能的上位性相互作用中有三分之一是非常显着的。尤其是,在对研究人群进行分层之后,相互作用的数量增加了,这表明在异质人群中相互作用被掩盖了。另外,当在亚群中进行分析时,遗传变异平均增加了35倍。结论这项研究的主要结论是,当在生理同质亚群中进行研究并在分析中包括上位性时,检测遗传变异与复杂性状之间真正关联的可能性大大增加,而上位性(即遗传网络)无处不在,应该是任何生物过程建模的基础。

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