一种评价蛋白质相互作用网络簇的新方法

Min Li, Xuehong Wu, Jianxin Wang, Yi Pan
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引用次数: 2

摘要

蛋白质-蛋白质相互作用网络聚类是鉴定蛋白质复合物和功能模块的最常用方法之一,对于理解细胞组织原理和预测蛋白质功能至关重要。在过去的几年中,已经提出了许多计算方法。然而,评估如何很好地识别集群总是一项具有挑战性的任务。即使对于最流行的测量方法,f值和p值,在评估已识别的集群时也存在偏差。在本文中,我们提出了一种新的度量,称为高频度量,以更精细、更清晰地评价聚类。首先定义了层次一致性和层次相似性。然后,我们提出了一种考虑功能注释的层次组织和蛋白质之间的功能相似性的层次化度量方法。新的测量方法hF-measure可以区分F-measure不能区分的不同类型的误差。基于基因本体(GO)和酵母功能模块的实验结果表明,与F-measure相比,hF-measure对聚类的评估更准确。
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A New Measurement for Evaluating Clusters in Protein Interaction Networks
Clustering of protein-protein interaction networks is one of the most prevalent methods for identifying protein complexes and functional modules, which is crucial to understanding the principles of cellular organization and prediction of protein functions. In the past few years, many computational methods have been proposed. However, it is always a challenging task to evaluate how well the clusters are identified. Even for the most popular measurements, F-measure and Pvalue, bias exists for evaluating the identified clusters. In this paper, we propose a new measurement, named hF-measure, to evaluate clusters more finely and distinctly. First, we defined the hierarchical consistency and the hierarchical similarity. Then, we propose a new hierarchical measurement of hF-measure by taking into account the hierarchical organization of functional annotations and the functional similarities among proteins. The new measurement hF-measure can discriminate between different types of errors which cannot be distinguished by F-measure. The experimental results based on Gene Ontology (GO) and yeast functional modules show that hF-measure evaluates clusters more accurately when compared to F-measure.
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