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首页> 外文期刊>Interdisciplinary Sciences: Computational Life Sciences >Mining maximal cohesive induced subnetworks and patterns by integrating biological networks with gene profile data
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Mining maximal cohesive induced subnetworks and patterns by integrating biological networks with gene profile data

机译:通过将生物网络与基因概况数据整合来挖掘最大的内聚诱导子网络和模式

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摘要

With the availability of vast amounts of protein-protein, protein-DNA interactions, and genome-wide mRNA expression data for several organisms, identifying biological complexes has emerged as a major task in systems biology. Most of the existing approaches for complex identification have focused on utilizing one source of data. Recent research has shown that systematic integration of gene profile data with interaction data yields significant patterns. In this paper, we introduce the problem of mining maximal cohesive subnetworks that satisfy user-defined constraints defined over the gene profiles of the reported subnetworks. Moreover, we introduce the problem of finding maximal cohesive patterns which are sets of cohesive genes. Experiments on Yeast and Human datasets show the effectiveness of the proposed approach by assessing the overlap of the discovered subnetworks with known biological complexes. Moreover, GO enrichment analysis shows that the discovered subnetworks are biologically significant.
机译:随着多种生物的大量蛋白质-蛋白质,蛋白质-DNA相互作用以及全基因组范围的mRNA表达数据的可用性,鉴定生物复合物已成为系统生物学的一项主要任务。现有的大多数用于复杂识别的方法都集中在利用一种数据源上。最近的研究表明,基因概况数据与相互作用数据的系统整合产生了明显的模式。在本文中,我们介绍了挖掘满足用户自定义约束的最大内聚子网络的问题,这些自定义子项是在所报告子网络的基因配置文件中定义的。此外,我们介绍了寻找最大的内聚模式(即内聚基因集)的问题。酵母和人类数据集上的实验通过评估发现的子网络与已知生物复合物的重叠,证明了该方法的有效性。此外,GO富集分析表明,发现的子网具有生物学意义。

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