Barradas-Bautista Didier, Moal Iain H, Fernández-Recio Juan
Life Sciences Department, Barcelona Supercomputing Center (BSC), Joint BSC-CRG-IRB Research Program in Computational Biology, Barcelona, 08034, Spain.
European Molecular Biology Laboratory, European Bioinformatics Institute, Wellcome Trust Genome Campus, Hinxton, Cambridge, CB10 1SD, United Kingdom.
Proteins. 2017 Jul;85(7):1287-1297. doi: 10.1002/prot.25289. Epub 2017 Apr 12.
Protein-protein interactions play fundamental roles in biological processes including signaling, metabolism, and trafficking. While the structure of a protein complex reveals crucial details about the interaction, it is often difficult to acquire this information experimentally. As the number of interactions discovered increases faster than they can be characterized, protein-protein docking calculations may be able to reduce this disparity by providing models of the interacting proteins. Rigid-body docking is a widely used docking approach, and is often capable of generating a pool of models within which a near-native structure can be found. These models need to be scored in order to select the acceptable ones from the set of poses. Recently, more than 100 scoring functions from the CCharPPI server were evaluated for this task using decoy structures generated with SwarmDock. Here, we extend this analysis to identify the predictive success rates of the scoring functions on decoys from three rigid-body docking programs, ZDOCK, FTDock, and SDOCK, allowing us to assess the transferability of the functions. We also apply set-theoretic measure to test whether the scoring functions are capable of identifying near-native poses within different subsets of the benchmark. This information can provide guides for the use of the most efficient scoring function for each docking method, as well as instruct future scoring functions development efforts. Proteins 2017; 85:1287-1297. © 2017 Wiley Periodicals, Inc.
蛋白质-蛋白质相互作用在包括信号传导、新陈代谢和运输等生物学过程中发挥着基本作用。虽然蛋白质复合物的结构揭示了有关相互作用的关键细节,但通过实验获取这些信息往往很困难。随着发现的相互作用数量的增长速度超过了对其进行表征的速度,蛋白质-蛋白质对接计算或许能够通过提供相互作用蛋白质的模型来缩小这一差距。刚体对接是一种广泛使用的对接方法,通常能够生成一系列模型,从中可以找到接近天然的结构。为了从一组构象中选择可接受的模型,需要对这些模型进行评分。最近,利用SwarmDock生成的诱饵结构,对来自CCharPPI服务器的100多种评分函数进行了此项任务的评估。在此,我们扩展了这一分析,以确定评分函数对来自三种刚体对接程序ZDOCK、FTDock和SDOCK的诱饵的预测成功率,从而使我们能够评估这些函数的可转移性。我们还应用集合论测度来测试评分函数是否能够在基准的不同子集中识别接近天然的构象。这些信息可为每种对接方法使用最有效的评分函数提供指导,也可为未来评分函数的开发工作提供指导。《蛋白质》2017年;85:1287 - 1297。©2017威利期刊公司。