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A density-based approach for detecting complexes in weighted PPI networks by semantic similarity

机译:基于语义相似度的加权PPI网络中基于复杂度的检测方法

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摘要

Protein complex detection in PPI networks plays an important role in analyzing biological processes. A new algorithm-DBGPWN-is proposed for predicting complexes in PPI networks. Firstly, a method based on gene ontology is used to measure semantic similarities between interacted proteins, and the similarity values are used as their weights. Then, a density-based graph partitioning algorithm is developed to find clusters in the weighted PPI networks, and the identified ones are considered to be dense and similar. Experimental results demonstrate that our approach achieves good performance as compared with such algorithms as MCL, CMC, MCODE, RNSC, CORE, ClusterOne and FGN.
机译:PPI网络中的蛋白质复合物检测在分析生物学过程中起着重要作用。提出了一种新的算法DBGPWN,用于预测PPI网络中的复杂度。首先,基于基因本体的方法用于测量相互作用蛋白之间的语义相似性,并将相似性值用作其权重。然后,开发了一种基于密度的图划分算法以在加权PPI网络中找到簇,并将识别出的簇视为密集且相似的。实验结果表明,与MCL,CMC,MCODE,RNSC,CORE,ClusterOne和FGN等算法相比,我们的方法具有良好的性能。

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