加权PPI网络中基于邻域密度的蛋白质复合物识别

Lizhen Liu, Miaomiao Cheng, Hanshi Wang, Wei Song, Chao Du
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引用次数: 0

摘要

大多数蛋白质形成大分子复合物来执行它们的生物学功能。随着大量高通量蛋白质-蛋白质相互作用(PPI)数据的不断增加,人们提出了大量用于检测蛋白质复合物的计算方法,以从PPI网络中发现蛋白质复合物。然而,这种方法还不够好,因为高通量PPI数据中的噪声率很高,包括虚假和缺失的相互作用。提出了一种基于邻域密度(CIND)的加权PPI网络复合体识别算法。首先,我们为每个二元蛋白质相互作用分配一个权重,以反映这种相互作用是真正的正相互作用的信心。然后利用拓扑学方法对基于邻域密度的复合体进行识别,不仅要注意邻域密度高的区域,还要注意邻域密度低的区域。我们在几个酵母PPI网络上实验评估了我们的算法CIND的性能,并表明我们的算法能够比现有的算法更准确地识别复合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying protein complexes based on neighborhood density in weighted PPI networks
Most proteins form macromolecular complexes to perform their biological functions. With the increasing availability of large amounts of high-throughput protein-protein interaction (PPI) data, a vast number of computational approaches for detecting protein complexes have been proposed to discover protein complexes from PPI networks. However, such approaches are not good enough since the high rate of noise in high-throughput PPI data, including spurious and missing interactions. In this paper, we present an algorithm for complexes identification based on neighborhood density (CIND) in weighted PPI networks. Firstly, we assigned each binary protein interaction a weight, reflecting the confidence that this interaction is a true positive interaction. Then we identify complexes based on neighborhood density using topological, and we should put attention to not only the very dense regions but also the regions with low neighborhood density. We experimentally evaluate the performance of our algorithm CIND on a few yeast PPI networks, and show that our algorithm is able to identify complexes more accurately than existing algorithms.
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