Matsuzaki Yuri, Ohue Masahito, Uchikoga Nobuyuki, Akiyama Yutaka
Graduate School of Information Science and Engineering, Tokyo Institute of Technology, 2-12-1 Ookayama, Meguro-ku, Tokyo 152-8550, Japan.
Protein Pept Lett. 2014;21(8):790-8. doi: 10.2174/09298665113209990066.
Core elements of cell regulation are made up of protein-protein interaction (PPI) networks. However, many parts of the cell regulatory systems include unknown PPIs. To approach this problem, we have developed a computational method of high-throughput PPI network prediction based on all-to-all rigid-body docking of protein tertiary structures. The prediction system accepts a set of data comprising protein tertiary structures as input and generates a list of possible interacting pairs from all the combinations as output. A crucial advantage of this docking based method is in providing predictions of protein pairs that increases our understanding of biological pathways by analyzing the structures of candidate complex structures, which gives insight into novel interaction mechanisms. Although such exhaustive docking calculation requires massive computational resources, recent advancements in the computational sciences have made such large-scale calculations feasible. In this study we applied our prediction method to a pathway reconstruction problem of bacterial chemotaxis by using two different rigid-body docking tools with different scoring models. We found that the predicted interactions were different between the results from the two tools. When the positive predictions from both of the docking tools were combined, all the core signaling interactions were correctly predicted with the exception of interactions activated by protein phosphorylation. Large-scale PPI prediction using tertiary structures is an effective approach that has a wide range of potential applications. This method is especially useful for identifying novel PPIs of new pathways that control cellular behavior.
细胞调控的核心要素由蛋白质-蛋白质相互作用(PPI)网络组成。然而,细胞调控系统的许多部分包含未知的PPI。为了解决这个问题,我们基于蛋白质三级结构的全对全刚体对接,开发了一种高通量PPI网络预测的计算方法。该预测系统接受一组包含蛋白质三级结构的数据作为输入,并从所有组合中生成可能的相互作用对列表作为输出。这种基于对接的方法的一个关键优势在于,通过分析候选复合物结构的结构,提供蛋白质对的预测,从而增加我们对生物途径的理解,进而深入了解新的相互作用机制。尽管这种详尽的对接计算需要大量的计算资源,但计算科学的最新进展使得这种大规模计算成为可能。在本研究中,我们使用两种具有不同评分模型的不同刚体对接工具,将我们的预测方法应用于细菌趋化性的途径重建问题。我们发现两种工具的结果之间预测的相互作用不同。当将两种对接工具的阳性预测结果结合起来时,除了由蛋白质磷酸化激活的相互作用外,所有核心信号相互作用都被正确预测。使用三级结构进行大规模PPI预测是一种有效的方法,具有广泛的潜在应用。该方法对于识别控制细胞行为的新途径中的新型PPI特别有用。