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The relative vertex clustering value - a new criterion for the fast discovery of functional modules in protein interaction networks

机译:相对顶点聚类值-快速发现蛋白质相互作用网络中功能模块的新准则

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摘要

BackgroundCellular processes are known to be modular and are realized by groups of proteins implicated in common biological functions. Such groups of proteins are called functional modules, and many community detection methods have been devised for their discovery from protein interaction networks (PINs) data. In current agglomerative clustering approaches, vertices with just a very few neighbors are often classified as separate clusters, which does not make sense biologically. Also, a major limitation of agglomerative techniques is that their computational efficiency do not scale well to large PINs. Finally, PIN data obtained from large scale experiments generally contain many false positives, and this makes it hard for agglomerative clustering methods to find the correct clusters, since they are known to be sensitive to noisy data.
机译:背景技术已知细胞过程是模块化的,并且通过涉及共同生物学功能的蛋白质组来实现。这样的蛋白质组称为功能模块,并且已经为从蛋白质相互作用网络(PIN)数据中发现它们设计了许多社区检测方法。在当前的聚类聚类方法中,只有很少邻居的顶点经常被分类为单独的聚类,从生物学上讲是没有意义的。而且,凝聚技术的主要局限性在于它们的计算效率无法很好地适应大型PIN。最后,从大规模实验获得的PIN数据通常包含许多误报,这使凝聚聚类方法很难找到正确的聚类,因为已知聚类方法对噪声数据敏感。

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