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Identification of Essential Proteins by Using Complexes and Interaction Network

机译:使用复合物和相互作用网络鉴定必需蛋白

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Essential proteins are indispensable in maintaining the cellular life. Identification of essential proteins can provide basis for drug target design, disease treatment as well as synthetic biology minimal genome. However, it is still time-consuming and expensive to identify essential protein based on experimental approaches. With the development of high-throughput experimental techniques in the post-genome era, a large number of PPI data and gene expression data can be obtained, which provide an unprecedented opportunity to study essential proteins at the network level. So far, many network topological methods have been proposed to identify the essential proteins. In this paper, we propose a new method, United complex Centrality(UC), to identify essential proteins by integrating protein complexes information and topological features of PPI network. By analysis of the relationship between protein complexes and essential proteins, we find that proteins appeared in multiple complexes axe more inclined to be essential compared to these only appeared in a single complex. The experiment results show that protein complex information can help identify the essential proteins more accurate. Our method UC is obviously better than traditional centrality methods(DC, IC, EC, SC, BC, CC, NC) for identifying essential proteins. In addition, even compared with Harmonic Centricity which also used protein complexes information, it still has a great advantage.
机译:必需蛋白在维持细胞生命中必不可少。必需蛋白质的鉴定可以为药物靶标设计,疾病治疗以及合成生物学最小基因组提供基础。然而,基于实验方法鉴定必需蛋白仍然是耗时且昂贵的。随着后基因组时代高通量实验技术的发展,可以获得大量的PPI数据和基因表达数据,这为在网络水平上研究必需蛋白提供了前所未有的机会。迄今为止,已经提出了许多网络拓扑方法来鉴定必需蛋白。在本文中,我们提出了一种新方法,即联合复合物中心度(UC),它通过整合蛋白质复合物信息和PPI网络的拓扑特征来识别必需蛋白质。通过分析蛋白质复合物和必需蛋白质之间的关系,我们发现与仅在单一复合物中出现的蛋白质相比,蛋白质在多种复合物中的出现更倾向于必需。实验结果表明,蛋白质复合信息可以帮助更准确地鉴定必需蛋白质。鉴定必需蛋白质的方法UC明显优于传统的中心化方法(DC,IC,EC,SC,BC,CC,NC)。另外,即使与也使用蛋白质复合物信息的谐波中心相比,它仍然具有很大的优势。

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