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Detecting protein complexes using gene expression biclusters

机译:使用基因表达双链体检测蛋白质复合物

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摘要

The importance of detecting protein complexes in protein interaction networks originates from the fact that they are key players in most cellular processes. The more complexes we identify, the better we can understand normal as well as abnormal molecular events. Despite the notable performance of the current computational methods for detecting protein complexes, questions arise regarding potential ways to improve them, in addition to ameliorative guidelines to introduce novel approaches. A close interpretation leads to the assent that the way in which protein interaction networks are initially viewed should be adjusted. These networks are dynamic in reality and it is necessary to consider this fact to enhance the detection of complexes. In this paper, we present “DyCluster”, a framework to model dynamic aspect of protein interaction networks by incorporating gene expression data, through biclustering techniques, prior to applying complex-detection algorithms. The experimental results show that DyCluster leads to higher numbers of correctly-detected complexes with better evaluation scores.
机译:在蛋白质相互作用网络中检测蛋白质复合物的重要性源于以下事实:它们是大多数细胞过程中的关键角色。我们发现的复合物越多,我们就可以更好地理解正常和异常分子事件。尽管当前用于检测蛋白质复合物的计算方法表现出显着的性能,但除了引入新颖方法的改良性指南外,还出现了有关改善复合物的潜在方法的问题。仔细的解释导致同意应该调整最初观察蛋白质相互作用网络的方式。这些网络实际上是动态的,有必要考虑这一事实以增强对复合物的检测。在本文中,我们提出了“ DyCluster”,该框架可通过应用二元聚类技术,在应用复杂检测算法之前,通过整合基因表达数据,对蛋白质相互作用网络的动态方面进行建模。实验结果表明,DyCluster导致正确检测的复合物数量更高,评估得分更高。

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