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C-element: A New Clustering Algorithm to Find High Quality Functional Modules in PPI Networks

机译:C元素:一种新的聚类算法可在PPI网络中查找高质量的功能模块

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摘要

Graph clustering algorithms are widely used in the analysis of biological networks. Extracting functional modules in protein-protein interaction (PPI) networks is one such use. Most clustering algorithms whose focuses are on finding functional modules try either to find a clique like sub networks or to grow clusters starting from vertices with high degrees as seeds. These algorithms do not make any difference between a biological network and any other networks. In the current research, we present a new procedure to find functional modules in PPI networks. Our main idea is to model a biological concept and to use this concept for finding good functional modules in PPI networks. In order to evaluate the quality of the obtained clusters, we compared the results of our algorithm with those of some other widely used clustering algorithms on three high throughput PPI networks from Sacchromyces Cerevisiae, Homo sapiens and Caenorhabditis elegans as well as on some tissue specific networks. Gene Ontology (GO) analyses were used to compare the results of different algorithms. Each algorithm's result was then compared with GO-term derived functional modules. We also analyzed the effect of using tissue specific networks on the quality of the obtained clusters. The experimental results indicate that the new algorithm outperforms most of the others, and this improvement is more significant when tissue specific networks are used.
机译:图聚类算法被广泛用于生物网络的分析。在蛋白质-蛋白质相互作用(PPI)网络中提取功能模块就是这样一种用途。大多数着重于寻找功能模块的聚类算法都试图找到像子网这样的集团,或者从具有高度种子的顶点开始生长聚类。这些算法在生物网络和任何其他网络之间没有任何区别。在当前的研究中,我们提出了一种在PPI网络中查找功能模块的新程序。我们的主要思想是对生物学概念进行建模,并将其用于在PPI网络中寻找良好的功能模块。为了评估获得的簇的质量,我们将我们的算法的结果与其他广泛使用的聚类算法的结果在酿酒酵母,智人和秀丽隐杆线虫的三个高通量PPI网络上以及在某些组织特定网络上进行了比较。基因本体论(GO)分析用于比较不同算法的结果。然后将每种算法的结果与GO项派生的功能模块进行比较。我们还分析了使用组织特异性网络对获得的簇的质量的影响。实验结果表明,该新算法优于其他大多数算法,并且在使用组织特定网络时这种改进更为显着。

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