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Identifying essential proteins from active PPI networks constructed with dynamic gene expression

机译:从动态PPI构建的主动PPI网络中识别必需蛋白

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摘要

Essential proteins are vitally important for cellular survival and development, and identifying essential proteins is very meaningful research work in the post-genome era. Rapid increase of available protein-protein interaction (PPI) data has made it possible to detect protein essentiality at the network level. A series of centrality measures have been proposed to discover essential proteins based on the PPI networks. However, the PPI data obtained from large scale, high-throughput experiments generally contain false positives. It is insufficient to use original PPI data to identify essential proteins. How to improve the accuracy, has become the focus of identifying essential proteins. In this paper, we proposed a framework for identifying essential proteins from active PPI networks constructed with dynamic gene expression. Firstly, we process the dynamic gene expression profiles by using time-dependent model and time-independent model. Secondly, we construct an active PPI network based on co-expressed genes. Lastly, we apply six classical centrality measures in the active PPI network. For the purpose of comparison, other prediction methods are also performed to identify essential proteins based on the active PPI network. The experimental results on yeast network show that identifying essential proteins based on the active PPI network can improve the performance of centrality measures considerably in terms of the number of identified essential proteins and identification accuracy. At the same time, the results also indicate that most of essential proteins are active.
机译:必需蛋白对于细胞存活和发育至关重要,而鉴定必需蛋白在后基因组时代是非常有意义的研究工作。可用的蛋白质-蛋白质相互作用(PPI)数据的迅速增加使得在网络级别检测蛋白质的必要性成为可能。已经提出了一系列集中性措施来发现基于PPI网络的必需蛋白质。但是,从大规模,高通量实验获得的PPI数据通常包含假阳性。仅使用原始PPI数据来识别必需蛋白质是不够的。如何提高准确性,已成为鉴定必需蛋白质的重点。在本文中,我们提出了一个框架,该框架可从以动态基因表达构建的活性PPI网络中鉴定必需蛋白质。首先,我们使用时间依赖性模型和时间依赖性模型来处理动态基因表达谱。其次,我们基于共表达的基因构建了一个主动的PPI网络。最后,我们在主动的PPI网络中应用了六个经典的中心度度量。为了进行比较,还基于活性PPI网络执行了其他预测方法来鉴定必需蛋白。酵母网络上的实验结果表明,基于活性PPI网络鉴定必需蛋白质可以在鉴定的必需蛋白质数量和鉴定准确性方面显着提高集中度测量的性能。同时,结果还表明大多数必需蛋白质具有活性。

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