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首页> 外文期刊>BMC Bioinformatics >Construction of dynamic probabilistic protein interaction networks for protein complex identification
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Construction of dynamic probabilistic protein interaction networks for protein complex identification

机译:用于蛋白质复合物鉴定的动态概率蛋白质相互作用网络的构建

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Background Recently, high-throughput experimental techniques have generated a large amount of protein-protein interaction (PPI) data which can construct large complex PPI networks for numerous organisms. System biology attempts to understand cellular organization and function by analyzing these PPI networks. However, most studies still focus on static PPI networks which neglect the dynamic information of PPI. Results The gene expression data under different time points and conditions can reveal the dynamic information of proteins. In this study, we used an active probability-based method to distinguish the active level of proteins at different active time points. We constructed dynamic probabilistic protein networks (DPPN) to integrate dynamic information of protein into static PPI networks. Based on DPPN, we subsequently proposed a novel method to identify protein complexes, which could effectively exploit topological structure as well as dynamic information of DPPN. We used three different yeast PPI datasets and gene expression data to construct three DPPNs. When applied to three DPPNs, many well-characterized protein complexes were accurately identified by this method. Conclusion The shift from static PPI networks to dynamic PPI networks is essential to accurately identify protein complex. This method not only can be applied to identify protein complex, but also establish a framework to integrate dynamic information into static networks for other applications, such as pathway analysis.
机译:背景技术最近,高通量实验技术已经产生了大量的蛋白质-蛋白质相互作用(PPI)数据,可以为许多生物构建大型的复杂PPI网络。系统生物学试图通过分析这些PPI网络来了解细胞的组织和功能。但是,大多数研究仍集中在静态PPI网络上,而忽略了PPI的动态信息。结果不同时间点和条件下的基因表达数据可以揭示蛋白质的动态信息。在这项研究中,我们使用基于活动概率的方法来区分蛋白质在不同活动时间点的活动水平。我们构建了动态概率蛋白质网络(DPPN),以将蛋白质的动态信息整合到静态PPI网络中。基于DPPN,我们随后提出了一种识别蛋白质复合物的新方法,该方法可以有效地利用DPPN的拓扑结构和动态信息。我们使用了三个不同的酵母PPI数据集和基因表达数据来构建三个DPPN。当应用于三个DPPN时,通过此方法可以准确鉴定出许多特征明确的蛋白质复合物。结论从静态PPI网络向动态PPI网络的转变对于准确识别蛋白质复合物至关重要。该方法不仅可以用于鉴定蛋白质复合物,而且可以建立一个框架,将动态信息整合到静态网络中,以用于其他应用,例如途径分析。

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