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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >Predicting Protein Functions by Using Unbalanced Random Walk Algorithm on Three Biological Networks
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Predicting Protein Functions by Using Unbalanced Random Walk Algorithm on Three Biological Networks

机译:在三个生物网络上使用不平衡随机游走算法预测蛋白质功能

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摘要

With the gap between the sequence data and their functional annotations becomes increasing wider, many computational methods have been proposed to annotate functions for unknown proteins. However, designing effective methods to make good use of various biological resources is still a big challenge for researchers due to function diversity of proteins. In this work, we propose a new method named ThrRW, which takes several steps of random walking on three different biological networks: protein interaction network (PIN), domain co-occurrence network (DCN), and functional interrelationship network (FIN), respectively, so as to infer functional information from neighbors in the corresponding networks. With respect to the topological and structural differences of the three networks, the number of walking steps in the three networks will be different. In the course of working, the functional information will be transferred from one network to another according to the associations between the nodes in different networks. The results of experiment on S. cerevisiae data show that our method achieves better prediction performance not only than the methods that consider both PIN data and GO term similarities, but also than the methods using both PIN data and protein domain information, which verifies the effectiveness of our method on integrating multiple biological data sources.
机译:随着序列数据与其功能注释之间的距离越来越大,已提出了许多计算方法来注释未知蛋白质的功能。然而,由于蛋白质功能的多样性,设计有效利用各种生物资源的方法仍然是研究人员面临的巨大挑战。在这项工作中,我们提出了一种名为ThrRW的新方法,该方法需要在三个不同的生物网络上随机行走几个步骤:蛋白质相互作用网络(PIN),域共生网络(DCN)和功能相互关系网络(FIN) ,以便从相应网络中的邻居推断功能信息。关于这三个网络的拓扑和结构差异,这三个网络中的步行步骤数将有所不同。在工作过程中,功能信息将根据不同网络中节点之间的关联从一个网络传输到另一个网络。酿酒酵母数据的实验结果表明,我们的方法不仅比同时考虑PIN数据和GO术语相似性的方法,而且比同时使用PIN数据和蛋白质结构域信息的方法,都具有更好的预测性能,从而验证了有效性。整合多个生物数据源的方法

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