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Protein Complexes Prediction Method Based on Core—Attachment Structure and Functional Annotations

机译:基于核心-附件结构和功能注释的蛋白质复合物预测方法

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摘要

Recent advances in high-throughput laboratory techniques captured large-scale protein–protein interaction (PPI) data, making it possible to create a detailed map of protein interaction networks, and thus enable us to detect protein complexes from these PPI networks. However, most of the current state-of-the-art studies still have some problems, for instance, incapability of identifying overlapping clusters, without considering the inherent organization within protein complexes, and overlooking the biological meaning of complexes. Therefore, we present a novel overlapping protein complexes prediction method based on core–attachment structure and function annotations (CFOCM), which performs in two stages: first, it detects protein complex cores with the maximum value of our defined cluster closeness function, in which the proteins are also closely related to at least one common function. Then it appends attach proteins into these detected cores to form the returned complexes. For performance evaluation, CFOCM and six classical methods have been used to identify protein complexes on three different yeast PPI networks, and three sets of real complexes including the Munich Information Center for Protein Sequences (MIPS), the Saccharomyces Genome Database (SGD) and the Catalogues of Yeast protein Complexes (CYC2008) are selected as benchmark sets, and the results show that CFOCM is indeed effective and robust for achieving the highest F-measure values in all tests.
机译:高通量实验室技术的最新进展捕获了大规模的蛋白质-蛋白质相互作用(PPI)数据,这使得创建详细的蛋白质相互作用网络图成为可能,从而使我们能够从这些PPI网络中检测蛋白质复合物。但是,当前大多数最新研究仍存在一些问题,例如,无法识别重叠的簇,而无需考虑蛋白质复合物内部的固有组织,并且忽略了复合物的生物学意义。因此,我们提出了一种基于核心-附着结构和功能注释(CFOCM)的新颖的重叠蛋白质复合物预测方法,该方法分两个阶段执行:首先,它检测具有我们定义的簇紧密度函数最大值的蛋白质复合物核心,其中这些蛋白质也与至少一种共同功能密切相关。然后,它将附着蛋白附加到这些检测到的核心中,以形成返回的复合物。为了进行性能评估,已使用CFOCM和六种经典方法来鉴定三种不同酵母PPI网络和三组实际复合物上的蛋白质复合物,包括慕尼黑蛋白质序列信息中心(MIPS),酿酒酵母基因组数据库(SGD)和选择酵母蛋白复合物目录(CYC2008)作为基准集,结果表明CFOCM对于在所有测试中实现最高的F值确实是有效且强大的。

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