Enlightening the molecular mechanisms of type 2 diabetes with a novel pathway clustering and pathway subnetwork approach.

Burcu Bakir-Gungor, Miray Ünlü Yazici, Gökhan Göy, Mustafa Temiz
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Abstract

Type 2 diabetes mellitus (T2D) constitutes 90% of the diabetes cases, and it is a complex multifactorial disease. In the last decade, genome-wide association studies (GWASs) for T2D successfully pinpointed the genetic variants (typically single nucleotide polymorphisms, SNPs) that associate with disease risk. In order to diminish the burden of multiple testing in GWAS, researchers attempted to evaluate the collective effects of interesting variants. In this regard, pathway-based analyses of GWAS became popular to discover novel multigenic functional associations. Still, to reveal the unaccounted 85 to 90% of T2D variation, which lies hidden in GWAS datasets, new post-GWAS strategies need to be developed. In this respect, here we reanalyze three metaanalysis data of GWAS in T2D, using the methodology that we have developed to identify disease-associated pathways by combining nominally significant evidence of genetic association with the known biochemical pathways, protein-protein interaction (PPI) networks, and the functional information of selected SNPs. In this research effort, to enlighten the molecular mechanisms underlying T2D development and progress, we integrated different in silico approaches that proceed in top-down manner and bottom-up manner, and presented a comprehensive analysis at protein subnetwork, pathway, and pathway subnetwork levels. Using the mutual information based on the shared genes, the identified protein subnetworks and the affected pathways of each dataset were compared. While most of the identified pathways recapitulate the pathophysiology of T2D, our results show that incorporating SNP functional properties, PPI networks into GWAS can dissect leading molecular pathways, and it could offer improvement over traditional enrichment strategies.

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用新的途径聚类和途径子网络方法揭示2型糖尿病的分子机制。
2型糖尿病(T2D)占糖尿病病例的90%,是一种复杂的多因素疾病。在过去的十年中,T2D的全基因组关联研究(GWASs)成功地确定了与疾病风险相关的遗传变异(通常是单核苷酸多态性,snp)。为了减轻GWAS中多重检测的负担,研究人员试图评估有趣变异的集体效应。在这方面,基于通路的GWAS分析开始流行,以发现新的多基因功能关联。尽管如此,为了揭示隐藏在GWAS数据集中的85 - 90%未被解释的T2D变异,需要开发新的后GWAS策略。在这方面,我们重新分析了T2D中GWAS的三个荟萃分析数据,使用我们开发的方法,通过结合已知生化途径、蛋白质-蛋白质相互作用(PPI)网络和选定snp的功能信息的名义上显著的遗传关联证据来识别疾病相关途径。在本研究中,为了揭示T2D发展和进展的分子机制,我们整合了自上而下和自下而上的不同计算机方法,并在蛋白质子网络、通路和通路子网络水平上进行了综合分析。利用基于共享基因的互信息,比较了每个数据集识别的蛋白质子网络和影响途径。虽然大多数已确定的途径概括了T2D的病理生理,但我们的研究结果表明,将SNP功能特性和PPI网络纳入GWAS可以剖析主要的分子途径,并且可以提供传统富集策略的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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