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Identification of protein complexes and functional modules in integrated PPI networks

机译:集成PPI网络中蛋白质复合物和功能模块的鉴定

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Mining the protein complexes and functional modules from protein-protein interaction (PPI) networks is vital to understand the mechanism of cellular components and protein functions. Most of the proposed methods had solely focused on static properties of the PPI networks since the available PPI data are static. However, cellular systems are highly dynamic. That is, the interactions of proteins are responsive to environmental cues to accomplish diverse cellular functions. It is important to consider the dynamic inherent within the PPI networks to identify protein complexes and functional modules. In addition, most computational methods did not distinguish between protein complexes and functional modules. It is important to distinguish between them since they are different protein organizations. In this paper, we propose a novel framework to analyze the PPI networks in dynamic conditions by integrating time-series gene expression profiles data and subcelluar localization data. The algorithm, CBMI, is developed to identify protein complexes in integrated PPI networks. By investigating multiple perspectives of proteins in the PPI networks, we identify the “dynamic” hubs in the PPI networks, and then present a new method to discover the functional modules in the PPI networks. The experimental results show that the integration of temporal gene expression data and subcelluar localization data with PPI data contributes to extracting the protein complexes more precisely. Comprehensive evaluations based on f-measure and functional annotations in MIPS database reveal that our algorithm, CBMI, outperforms other previous algorithms in identifying protein complexes, and the detected functional modules are statistically significant in terms of functional annotations. The proposed framework provides a new clue to distinguish between protein complexes and functional modules, and the developed algorithms can be an effective technique for the identification of them.
机译:从蛋白质-蛋白质相互作用(PPI)网络中挖掘蛋白质复合物和功能模块对于理解细胞成分和蛋白质功能的机制至关重要。由于可用的PPI数据是静态的,因此大多数建议的方法仅专注于PPI网络的静态属性。但是,蜂窝系统是高度动态的。即,蛋白质的相互作用对环境线索有响应,以完成多种细胞功能。重要的是要考虑PPI网络内部的动态固有特性,以识别蛋白质复合物和功能模块。此外,大多数计算方法无法区分蛋白质复合物和功能模块。区分它们很重要,因为它们是不同的蛋白质组织。在本文中,我们提出了一个新颖的框架,通过整合时序基因表达谱数据和亚细胞定位数据来分析动态条件下的PPI网络。开发了CBMI算法,以识别集成PPI网络中的蛋白质复合物。通过研究PPI网络中蛋白质的多种观点,我们确定了PPI网络中的“动态”集线器,然后提出了一种发现PPI网络中功能模块的新方法。实验结果表明,时间基因表达数据和亚细胞定位数据与PPI数据的整合有助于更精确地提取蛋白质复合物。基于f-measure和MIPS数据库中功能注释的综合评估表明,我们的算法CBMI在识别蛋白质复合物方面优于其他先前的算法,并且检测到的功能模块在功能注释方面具有统计学意义。所提出的框架为区分蛋白质复合物和功能模块提供了新的线索,并且所开发的算法可以作为识别它们的有效技术。

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