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Detection of protein complexes in protein interaction networks is improved through network-driven functional homogeneity analysis

机译:通过网络驱动的功能同质性分析可改善蛋白质相互作用网络中蛋白质复合物的检测

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The detection of biologically meaningful clusters in protein interaction networks is crucial in systems biology. Among its applications, it can enable the identification of protein complexes. Notwithstanding significant advances, the detection of meaningful clusters faces important challenges, including the need to aid researchers in the prioritization of hundreds or even thousands of clusters. To address this need, we developed a method for the prioritization of network clusters based on the analysis of their functional homogeneity, Horn. Based on Horn scores, clustering results can be statistically ranked and attention directed toward clusters that are more likely to be biologically meaningful. We tested it on a global human protein-protein interaction network and four network clustering algorithms. Our method substantially reduced the space of potentially spurious clusters. Furthermore, we evaluated its protein complex detection capability on an independent reference dataset of protein complexes. Irrespectively of clustering approach, our approach improved protein complex identification capacity.
机译:在蛋白质相互作用网络中检测具有生物学意义的簇对于系统生物学至关重要。在其应用中,它可以识别蛋白质复合物。尽管取得了重大进展,但有意义的簇的检测仍面临重大挑战,包括需要帮助研究人员确定数百个甚至数千个簇的优先级。为了满足这一需求,我们基于对网络群集功能同质性Horn的分析,开发了一种对网络群集进行优先级排序的方法。基于Horn得分,可以对聚类结果进行统计排名,并将注意力集中在更可能具有生物学意义的聚类上。我们在全球人类蛋白质-蛋白质相互作用网络和四种网络聚类算法上对其进行了测试。我们的方法大大减少了潜在的虚假簇的空间。此外,我们在蛋白质复合物的独立参考数据集上评估了其蛋白质复合物的检测能力。无论采用哪种聚类方法,我们的方法都可以提高蛋白质复合物的鉴定能力。

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