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Competitive pathway analysis using Structural Equation Models (CPA-SEM) for gene expression data

机译:使用结构方程模型(CPA-SEM)进行基因表达数据的竞争途径分析

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There is an increasing interest in the pathway analysis of multiple genes and complex traits in association studies. Recently, a number of methods of pathway analysis have been developed to detect the novel pathways associated with human complex traits. In this paper, we propose a novel statistical approach for competitive pathway analysis based on Structural Equation Modeling (CPA-SEM), taking advantage of prior knowledge on existing relationships between genes in a pathway. Our CPA-SEM identifies pathways associated with traits of interest. The CPA-SEM approach is different from the previous SEM-based approaches in that it considers all possible sub-pathways into account and performs permutation based robust analysis. We applied the proposed CPA-SEM method to gene expression data of gastric cancer (GSE27342), and found that mTOR signaling pathway was significantly associated with gastric cancer. This pathway has previously been reported to be associated with gastric cancer. In conclusion, our CPA-SEM analysis provides a better understanding of biological mechanism by identifying pathways associated with a trait of interest.
机译:在关联研究中,对多种基因和复杂性状的途径分析越来越感兴趣。最近,已经开发了许多途径分析方法来检测与人类复杂性状相关的新途径。在本文中,我们提出了一种基于结构方程模型(CPA-SEM)的竞争路径分析的新统计方法,该方法利用了路径中基因之间现有关系的先验知识。我们的CPA-SEM可以确定与感兴趣的性状相关的途径。 CPA-SEM方法与以前的基于SEM的方法不同之处在于,它考虑了所有可能的子路径并执行基于置换的鲁棒性分析。我们将提出的CPA-SEM方法应用于胃癌(GSE27342)的基因表达数据,发现mTOR信号通路与胃癌显着相关。先前已报道该途径与胃癌有关。总之,我们的CPA-SEM分析通过识别与感兴趣特征相关的途径,提供了对生物学机制的更好理解。

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