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dmGWAS: dense module searching for genome-wide association studies in protein-protein interaction networks

机译:dmGWAS:在蛋白质-蛋白质相互作用网络中进行全基因组关联研究的密集模块搜索

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Motivation: An important question that has emerged from the recent success of genome-wide association studies (GWAS) is how to detect genetic signals beyond single markers/genes in order to explore their combined effects on mediating complex diseases and traits. Integrative testing of GWAS association data with that from prior-knowledge databases and proteome studies has recently gained attention. These methodologies may hold promise for comprehensively examining the interactions between genes underlying the pathogenesis of complex diseases.Methods: Here, we present a dense module searching (DMS) method to identify candidate subnetworks or genes for complex diseases by integrating the association signal from GWAS datasets into the human protein-protein interaction (PPI) network. The DMS method extensively searches for subnetworks enriched with low P-value genes in GWAS datasets. Compared with pathway-based approaches, this method introduces flexibility in defining a gene set and can effectively utilize local PPI information.Results: We implemented the DMS method in an R package, which can also evaluate and graphically represent the results. We demonstrated DMS in two GWAS datasets for complex diseases, i.e. breast cancer and pancreatic cancer. For each disease, the DMS method successfully identified a set of significant modules and candidate genes, including some well-studied genes not detected in the single-marker analysis of GWA studies. Functional enrichment analysis and comparison with previously published methods showed that the genes we identified by DMS have higher association signal.
机译:动机:从全基因组关联研究(GWAS)的近期成功中出现的一个重要问题是,如何检测超出单个标记/基因的遗传信号,以探索它们对介导复杂疾病和性状的综合影响。 GWAS关联数据与先前知识数据库和蛋白质组学研究的集成测试最近受到关注。这些方法学可能为全面检查复杂疾病发病机理的基因之间的相互作用提供希望。进入人类蛋白质间相互作用(PPI)网络。 DMS方法广泛地搜索了GWAS数据集中富含低P值基因的子网。与基于途径的方法相比,该方法在定义基因集方面具有灵活性,并且可以有效地利用本地PPI信息。结果:我们在R包中实施了DMS方法,该方法还可以评估并以图形方式表示结果。我们在两个GWAS数据集中证明了DMS,这些数据用于复杂疾病即乳腺癌和胰腺癌。对于每种疾病,DMS方法成功鉴定出一组重要的模块和候选基因,包括一些在GWA研究的单标记分析中未检测到的经过充分研究的基因。功能富集分析和与以前发表的方法的比较表明,我们通过DMS鉴定的基因具有更高的缔合信号。

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