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Signaling pathway prediction by path frequency in protein-protein interaction networks

机译:蛋白质-蛋白质相互作用网络中的路径频率预测信号通路

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A signaling pathway, which is represented as a chain of interacting proteins for a biological process, can be predicted from protein-protein interaction (PPI) networks. However, pathway prediction is computationally challenging because of (1) inefficiency in searching all possible paths from the large-scale PPI networks and (2) unreliability of current PPI data generated by automated high-throughput methods. In this paper, we propose a novel approach to efficiently predict signaling pathways from PPI networks when a starting protein (source) and an ending protein (target) are given. Our approach is a combination of topological analysis of the networks and ontological analysis of interacting proteins. Starting from the source, this method repeatedly extends the list of proteins to form a pathway based on the improved support model (iSup). This model integrates (1) the frequency of the paths towards the target and (2) the semantic similarity between each adjacent pair in a pathway. The path frequency is computed by a heuristic data-mining technique to determine the most frequent paths towards the target in a PPI network. The semantic similarity is measured by the distance of the information contents of Gene Ontology (GO) terms annotating interacting proteins. To further improve computational efficiency, we propose two additional strategies: filtering the PPI networks and precomputing approximate path frequency. The experiment with the yeast PPI data demonstrates that our approach predicted MAPK signaling pathways with higher accuracy and efficiency than other existing methods.
机译:可以从蛋白质 - 蛋白质相互作用(PPI)网络中预测作为生物学过程的相互作用蛋白链的信号通路。然而,途径预测是计算性地具有挑战性的,因为(1)低效率地搜索来自大规模PPI网络的所有可能的路径和由自动高吞吐量方法产生的当前PPI数据的不可靠性。在本文中,我们提出了一种新的方法,以在给出起始蛋白(源)和结束蛋白(靶)时从PPI网络有效地预测信号传导途径。我们的方法是对交互蛋白的网络拓扑分析的组合和本体分析。从源开始,该方法重复扩展蛋白质列表以形成基于改进的支持模型(ISUP)的路径。该模型集成了(1)朝向目标的路径的频率和(2)在路径中的每个相邻对之间的语义相似性。路径频率由启发式数据挖掘技术计算,以确定PPI网络中目标的最常用路径。通过基因本体(GO)术语的信息含量的距离来测量语义相似度,注释相互作用蛋白。为了进一步提高计算效率,我们提出了两种额外的策略:过滤PPI网络并预先计算近似路径频率。酵母PPI数据的实验表明,我们的方法预测了MAPK信号传导途径,比其他现有方法更高,效率更高。

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