Zhang Yuan, Du Nan, Li Kang, Feng Jinchao, Jia Kebin, Zhang Aidong
College of Electronic Information and Control Engineering, Beijing University of Technology, Beijing 100124, China.
Department of Computer Science and Engineering, State University of New York at Buffalo, Buffalo, NY 14260, USA.
Biomed Res Int. 2014;2014:138410. doi: 10.1155/2014/138410. Epub 2014 Apr 2.
Dynamics of protein-protein interactions (PPIs) reveals the recondite principles of biological processes inside a cell. Shown in a wealth of study, just a small group of proteins, rather than the majority, play more essential roles at crucial points of biological processes. This present work focuses on identifying these critical proteins exhibiting dramatic structural changes in dynamic PPI networks. First, a comprehensive way of modeling the dynamic PPIs is presented which simultaneously analyzes the activity of proteins and assembles the dynamic coregulation correlation between proteins at each time point. Second, a novel method is proposed, named msiDBN, which models a common representation of multiple PPI networks using a deep belief network framework and analyzes the reconstruction errors and the variabilities across the time courses in the biological process. Experiments were implemented on data of yeast cell cycles. We evaluated our network construction method by comparing the functional representations of the derived networks with two other traditional construction methods. The ranking results of critical proteins in msiDBN were compared with the results from the baseline methods. The results of comparison showed that msiDBN had better reconstruction rate and identified more proteins of critical value to yeast cell cycle process.
蛋白质-蛋白质相互作用(PPI)的动力学揭示了细胞内生物过程的深奥原理。大量研究表明,在生物过程的关键点上,起更关键作用的是一小部分蛋白质,而非大多数蛋白质。本研究聚焦于识别在动态PPI网络中表现出显著结构变化的关键蛋白质。首先,提出了一种全面的动态PPI建模方法,该方法同时分析蛋白质的活性,并在每个时间点组装蛋白质之间的动态共调控相关性。其次,提出了一种名为msiDBN的新方法,该方法使用深度信念网络框架对多个PPI网络的共同表示进行建模,并分析生物过程中时间进程的重建误差和变异性。在酵母细胞周期的数据上进行了实验。通过将推导网络的功能表示与其他两种传统构建方法进行比较,评估了我们的网络构建方法。将msiDBN中关键蛋白质的排名结果与基线方法的结果进行了比较。比较结果表明,msiDBN具有更好的重建率,并且识别出更多对酵母细胞周期过程具有关键价值的蛋白质。