利用多尺度熵动力学揭示蛋白质相互作用网络中的重叠群落

Hanzhou Liu, Jia Chen
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引用次数: 0

摘要

大多数现有的聚类方法需要完整的图信息,这对于大规模的蛋白质-蛋白质相互作用网络来说往往是不切实际的。我们提出了一种新的算法,它不采用通用方法,而是试图关注局部联系,并对这些网络中生物相互作用的多尺度进行建模。它使用本地信息识别职能领导和围绕这些领导的模块。它通过将每个节点与描述其参与每个社区的成员向量相关联,自然地支持重叠信息。除了发现重叠的群落外,我们还可以描述不同的多尺度分区,从而调整具有生物学意义的模块的特征大小。该算法具有较高的效率和准确性,可用于真实生物分子网络中群落结构的准确检测
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reveal Overlapping Communities in Protein Interaction Network Using Multi-Scale Entropy Dynamic
Most existing clustering approaches require the complete graph information, which is often impractical for large-scale protein-protein interaction networks. We proposed a novel algorithm which does not embrace the universal approach but instead tries to focus on local ties and model multiscales of biological interactions in these networks. It identifies functional leaders and modules around these leaders using local information. It naturally supports overlapping information by associating each node with a membership vector that describes its involvement of each community. In addition to uncover overlapping communities, we can describe different multi-scale partitions allowing to tune the characteristic size of biologically meaningful modules. The high efficiency and accuracy of the proposed algorithm make it feasible to be used for accurately detecting community structure in real biomolecular networks
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