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A new method for predicting essential proteins based on participation degree in protein complex and subgraph density

机译:基于蛋白质复合体参与度和子图密度的基本蛋白质预测新方法

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摘要

Essential proteins are crucial to living cells. Identification of essential proteins from protein-protein interaction (PPI) networks can be applied to pathway analysis and function prediction, furthermore, it can contribute to disease diagnosis and drug design. There have been some experimental and computational methods designed to identify essential proteins, however, the prediction precision remains to be improved. In this paper, we propose a new method for identifying essential proteins based on Participation degree of a protein in protein Complexes and Subgraph Density, named as PCSD. In order to test the performance of PCSD, four PPI datasets (DIP, Krogan, MIPS and Gavin) are used to conduct experiments. The experiment results have demonstrated that PCSD achieves a better performance for predicting essential proteins compared with some competing methods including DC, SC, EC, IC, LAC, NC, WDC, PeC, UDoNC, and compared with the most recent method LBCC, PCSD can correctly predict more essential proteins from certain numbers of top ranked proteins on the DIP dataset, which indicates that PCSD is very effective in discovering essential proteins in most case.
机译:必需蛋白质对活细胞至关重要。从蛋白质-蛋白质相互作用(PPI)网络中鉴定必需蛋白质可用于途径分析和功能预测,此外,还可有助于疾病诊断和药物设计。已经有一些设计用来鉴定必需蛋白质的实验和计算方法,但是,预测精度仍有待提高。在本文中,我们提出了一种基于蛋白质在蛋白质复合物中的参与度和子图密度的鉴定必需蛋白质的新方法,称为PCSD。为了测试PCSD的性能,使用了四个PPI数据集(DIP,Krogan,MIPS和Gavin)进行实验。实验结果表明,与某些竞争方法(包括DC,SC,EC,IC,LAC,NC,WDC,PeC和UDoNC)相比,PCSD在预测必需蛋白方面具有更好的性能,并且与最新的LBCC,PCSD方法相比从DIP数据集上一定数量的排名靠前的蛋白质正确预测出更多必需蛋白质,这表明PCSD在大多数情况下对发现必需蛋白质非常有效。

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