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A Seed Expansion Graph Clustering Method for Protein Complexes Detection in Protein Interaction Networks

机译:蛋白质相互作用网络中蛋白质复合物检测的种子扩展图聚类方法

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Most proteins perform their biological functions while interacting as complexes. The detection of protein complexes is an important task not only for understanding the relationship between functions and structures of biological network, but also for predicting the function of unknown proteins. We present a new nodal metric by integrating its local topological information. The metric reflects its representability in a larger local neighborhood to a cluster of a protein interaction (PPI) network. Based on the metric, we propose a seed-expansion graph clustering algorithm (SEGC) for protein complexes detection in PPI networks. A roulette wheel strategy is used in the selection of the seed to enhance the diversity of clustering. For a candidate node u, we define its closeness to a cluster C, denoted as NC(u, C), by combing the density of a cluster C and the connection between a node u and C. In SEGC, a cluster which initially consists of only a seed node, is extended by adding nodes recursively from its neighbors according to the closeness, until all neighbors fail the process of expansion. We compare the F-measure and accuracy of the proposed SEGC algorithm with other algorithms on Saccharomyces cerevisiae protein interaction networks. The experimental results show that SEGC outperforms other algorithms under full coverage. View Full-Text
机译:大多数蛋白质在作为复合物相互作用时执行其生物学功能。蛋白质复合物的检测不仅是了解生物学网络功能与结构之间关系的重要任务,而且对于预测未知蛋白质的功能也是一项重要的任务。通过集成其本地拓扑信息,我们提出了一种新的节点度量。该度量标准反映了其在较大局部邻域中对蛋白质相互作用(PPI)网络群集的可表示性。基于该指标,我们提出了一种用于PPI网络中蛋白质复合物检测的种子展开图聚类算法(SEGC)。在选择种子时使用轮盘策略,以增强群集的多样性。对于候选节点u,我们通过组合簇C的密度以及节点u和C之间的连接来定义其与簇C的接近度,表示为NC(u,C)。在SEGC中,最初由簇组成的簇通过仅根据种子节点的邻居递归地添加节点来扩展种子节点的扩展,直到所有邻居都无法完成扩展过程。我们在酿酒酵母蛋白质相互作用网络上比较了所提出的SEGC算法与其他算法的F度量和准确性。实验结果表明SEGC在完全覆盖的情况下优于其他算法。查看全文

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