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Local Network Topology in Human Protein Interaction Data Predicts Functional Association

机译:人类蛋白质相互作用数据中的本地网络拓扑预测功能关联。

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摘要

The use of high-throughput techniques to generate large volumes of protein-protein interaction (PPI) data has increased the need for methods that systematically and automatically suggest functional relationships among proteins. In a yeast PPI network, previous work has shown that the local connection topology, particularly for two proteins sharing an unusually large number of neighbors, can predict functional association. In this study we improved the prediction scheme by developing a new algorithm and applied it on a human PPI network to make a genome-wide functional inference. We used the new algorithm to measure and reduce the influence of hub proteins on detecting function-associated protein pairs. We used the annotations of the Gene Ontology (GO) and the Kyoto Encyclopedia of Genes and Genomes (KEGG) as benchmarks to compare and evaluate the function relevance. The application of our algorithms to human PPI data yielded 4,233 significant functional associations among 1,754 proteins. Further functional comparisons between them allowed us to assign 466 KEGG pathway annotations to 274 proteins and 123 GO annotations to 114 proteins with estimated false discovery rates of <21% for KEGG and <30% for GO. We clustered 1,729 proteins by their functional associations and made functional inferences from detailed analysis on one subcluster highly enriched in the TGF-β signaling pathway (P<10−50). Analysis of another four subclusters also suggested potential new players in six signaling pathways worthy of further experimental investigations. Our study gives clear insight into the common neighbor-based prediction scheme and provides a reliable method for large-scale functional annotation in this post-genomic era.
机译:使用高通量技术来生成大量蛋白质-蛋白质相互作用(PPI)数据,对系统地自动提示蛋白质之间功能关系的方法的需求日益增加。在酵母PPI网络中,先前的工作表明,本地连接拓扑结构(尤其是对于共享异常大量邻居的两种蛋白质而言)可以预测功能关联。在这项研究中,我们通过开发一种新算法改进了预测方案,并将其应用于人类PPI网络以进行全基因组功能推断。我们使用新算法来测量和减少中枢蛋白对检测功能相关蛋白对的影响。我们使用基因本体论(GO)和《京都基因与基因组百科全书》(KEGG)的注释作为基准来比较和评估功能的相关性。我们的算法在人类PPI数据中的应用在1,754种蛋白质之间产生了4,233个重要的功能关联。它们之间的进一步功能比较使我们能够为274个蛋白质分配466个KEGG途径注释,为114个蛋白质分配123个GO注释,估计的错误发现率对于KEGG来说<21%,对于GO来说<30%。我们通过其功能关联对1729种蛋白质进行了聚类,并通过详细分析对高度富含TGF-β信号通路(P <10 −50 )的一个亚簇进行了功能推断。对另外四个子类的分析也表明了六个信号通路中潜在的新参与者,值得进一步的实验研究。我们的研究清楚地了解了基于常见邻居的预测方案,并为后基因组时代的大规模功能注释提供了可靠的方法。

著录项

  • 期刊名称 PLoS Clinical Trials
  • 作者

    Hua Li; Shoudan Liang;

  • 作者单位
  • 年(卷),期 2009(4),7
  • 年度 2009
  • 页码 e6410
  • 总页数 11
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

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