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Neighbor Affinity-Based Core-Attachment Method to Detect Protein Complexes in Dynamic PPI Networks

机译:基于邻居亲和力的核心附件法检测动态PPI网络中的蛋白质复合物

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摘要

Protein complexes play significant roles in cellular processes. Identifying protein complexes from protein-protein interaction (PPI) networks is an effective strategy to understand biological processes and cellular functions. A number of methods have recently been proposed to detect protein complexes. However, most of methods predict protein complexes from static PPI networks, and usually overlook the inherent dynamics and topological properties of protein complexes. In this paper, we proposed a novel method, called NABCAM (Neighbor Affinity-Based Core-Attachment Method), to identify protein complexes from dynamic PPI networks. Firstly, the centrality score of every protein is calculated. The proteins with the highest centrality scores are regarded as the seed proteins. Secondly, the seed proteins are expanded to complex cores by calculating the similarity values between the seed proteins and their neighboring proteins. Thirdly, the attachments are appended to their corresponding protein complex cores by comparing the affinity among neighbors inside the core, against that outside the core. Finally, filtering processes are carried out to obtain the final clustering result. The result in the DIP database shows that the NABCAM algorithm can predict protein complexes effectively in comparison with other state-of-the-art methods. Moreover, many protein complexes predicted by our method are biologically significant.
机译:蛋白质复合物在细胞过程中起重要作用。从蛋白质-蛋白质相互作用(PPI)网络中识别蛋白质复合物是了解生物学过程和细胞功能的有效策略。最近已经提出了许多检测蛋白质复合物的方法。但是,大多数方法都从静态PPI网络预测蛋白质复合物,并且通常会忽略蛋白质复合物的固有动力学和拓扑特性。在本文中,我们提出了一种新的方法,称为NABCAM(基于邻居亲和力的核心连接方法),用于从动态PPI网络中识别蛋白质复合物。首先,计算每种蛋白质的中心评分。具有最高中心评分的蛋白质被认为是种子蛋白质。其次,通过计算种子蛋白与其相邻蛋白之间的相似度值,将种子蛋白扩展为复杂的核心。第三,通过比较核心内部邻居之间的亲和力与核心外部邻居之间的亲和力,将附件附加到其相应的蛋白质复合物核心上。最后,进行滤波处理以获得最终的聚类结果。 DIP数据库中的结果表明,与其他最新方法相比,NABCAM算法可以有效地预测蛋白质复合物。此外,通过我们的方法预测的许多蛋白质复合物具有生物学意义。

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