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Integrating network topology, gene expression data and GO annotation information for protein complex prediction

机译:集成网络拓扑,基因表达数据和蛋白质复杂预测的推荐信息

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摘要

The prediction of protein complexes based on the protein interaction network is a fundamental task for the understanding of cellular life as well as the mechanisms underlying complex disease. A great number of methods have been developed to predict protein complexes based on protein protein interaction (PPI) networks in recent years. However, because the high throughput data obtained from experimental biotechnology are incomplete, and usually contain a large number of spurious interactions, most of the network-based protein complex identification methods are sensitive to the reliability of the PPI network. In this paper, we propose a new method, Identification of Protein Complex based on Refined Protein Interaction Network (IPC-RPIN), which integrates the topology, gene expression profiles and GO functional annotation information to predict protein complexes from the reconstructed networks. To demonstrate the performance of the IPC-RPIN method, we evaluated the IPC-RPIN on three PPI networks of Saccharomycescerevisiae and compared it with four state-of-the-art methods. The simulation results show that the IPC-RPIN achieved a better result than the other methods on most of the measurements and is able to discover small protein complexes which have traditionally been neglected.
机译:基于蛋白质相互作用网络的蛋白质复合物的预测是了解细胞生命的基本任务以及复杂疾病的基础机制。已经开发出大量方法以预测近年来基于蛋白质蛋白质相互作用(PPI)网络的蛋白质复合物。然而,由于从实验生物技术获得的高吞吐量数据不完整,并且通常含有大量的杂散相互作用,因此大多数基于网络的蛋白质复杂识别方法对PPI网络的可靠性敏感。在本文中,我们提出了一种新方法,基于精制蛋白质相互作用网络(IPC-RPIN)的蛋白质复合物的鉴定,其集成了拓扑,基因表达谱和去功能注释信息,以预测来自重建网络的蛋白质复合物。为了证明IPC-RPIN方法的性能,我们评估了SaccharomycesceReiae的三个PPI网络上的IPC-RPIN,并将其与四种最先进的方法进行比较。仿真结果表明,IPC-RPIN达到了比大多数测量的其他方法更好的结果,并且能够发现传统上被忽视的小蛋白质复合物。

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