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Detection of dynamic protein complexes through Markov Clustering based on Elephant Herd Optimization Approach

机译:基于大象群优化方法的马尔可夫聚类检测动态蛋白质复合物

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摘要

The accessibility of a huge amount of protein-protein interaction (PPI) data has allowed to do research on biological networks that reveal the structure of a protein complex, pathways and its cellular organization. A key demand in computational biology is to recognize the modular structure of such biological networks. The detection of protein complexes from the PPI network, is one of the most challenging and significant problems in the post-genomic era. In Bioinformatics, the frequently employed approach for clustering the networks is Markov Clustering (MCL). Many of the researches for protein complex detection were done on the static PPI network, which suffers from a few drawbacks. To resolve this problem, this paper proposes an approach to detect the dynamic protein complexes through Markov Clustering based on Elephant Herd Optimization Approach (DMCL-EHO). Initially, the proposed method divides the PPI network into a set of dynamic subnetworks under various time points by combining the gene expression data and secondly, it employs the clustering analysis on every subnetwork using the MCL along with Elephant Herd Optimization approach. The experimental analysis was employed on different PPI network datasets and the proposed method surpasses various existing approaches in terms of accuracy measures. This paper identifies the common protein complexes that are expressively enriched in gold-standard datasets and also the pathway annotations of the detected protein complexes using the KEGG database.
机译:大量蛋白质-蛋白质相互作用(PPI)数据的可访问性已使人们能够研究揭示蛋白质复合物的结构,途径及其细胞组织的生物学网络。计算生物学的关键需求是认识到这种生物学网络的模块化结构。从PPI网络检测蛋白质复合物,是后基因组时代最具挑战性和最重大的问题之一。在生物信息学中,用于群集网络的常用方法是马尔可夫群集(MCL)。蛋白质复合物检测的许多研究都是在静态PPI网络上进行的,这有一些缺点。为了解决这个问题,本文提出了一种基于大象群优化方法(DMCL-EHO)的马尔可夫聚类检测动态蛋白质复合物的方法。首先,通过结合基因表达数据,该方法将PPI网络在不同时间点划分为一组动态子网,其次,它使用MCL和Elephant Herd Optimization方法对每个子网进行聚类分析。在不同的PPI网络数据集上进行了实验分析,该方法在准确性方面超过了现有的各种方法。本文确定了在金标准数据集中表达丰富的常见蛋白质复合物,以及使用KEGG数据库检测到的蛋白质复合物的途径注释。

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