Biomedical Informatics Program, Department of Computer Science, Stanford University, Stanford, California 94305-9010, USA.
Proteins. 2012 Jan;80(1):25-43. doi: 10.1002/prot.23134. Epub 2011 Oct 4.
Flexibility is critical for a folded protein to bind to other molecules (ligands) and achieve its functions. The conformational selection theory suggests that a folded protein deforms continuously and its ligand selects the most favorable conformations to bind to. Therefore, one of the best options to study protein-ligand binding is to sample conformations broadly distributed over the protein-folded state. This article presents a new sampler, called kino-geometric sampler (KGS). This sampler encodes dominant energy terms implicitly by simple kinematic and geometric constraints. Two key technical contributions of KGS are (1) a robotics-inspired Jacobian-based method to simultaneously deform a large number of interdependent kinematic cycles without any significant break-up of the closure constraints, and (2) a diffusive strategy to generate conformation distributions that diffuse quickly throughout the protein folded state. Experiments on four very different test proteins demonstrate that KGS can efficiently compute distributions containing conformations close to target (e.g., functional) conformations. These targets are not given to KGS, hence are not used to bias the sampling process. In particular, for a lysine-binding protein, KGS was able to sample conformations in both the intermediate and functional states without the ligand, while previous work using molecular dynamics simulation had required the ligand to be taken into account in the potential function. Overall, KGS demonstrates that kino-geometric constraints characterize the folded subset of a protein conformation space and that this subset is small enough to be approximated by a relatively small distribution of conformations.
柔韧性对于折叠蛋白与其他分子(配体)结合并发挥其功能至关重要。构象选择理论表明,折叠蛋白会连续变形,其配体选择最有利的构象与之结合。因此,研究蛋白质-配体结合的最佳选择之一是广泛采样分布在折叠蛋白状态中的构象。本文提出了一种新的采样器,称为 kinogeometric sampler (KGS)。该采样器通过简单的运动学和几何约束隐式编码主要能量项。KGS 的两个关键技术贡献是:(1) 一种受机器人启发的基于雅可比的方法,可同时变形大量相互依赖的运动学循环,而不会对封闭约束造成任何显著破坏;(2) 一种扩散策略,可生成快速扩散到整个折叠蛋白状态的构象分布。在四个非常不同的测试蛋白上的实验表明,KGS 可以有效地计算包含接近目标(例如,功能)构象的分布。这些目标没有提供给 KGS,因此不会用于偏置采样过程。特别是对于赖氨酸结合蛋白,KGS 能够在没有配体的情况下采样中间和功能状态的构象,而以前使用分子动力学模拟的工作需要在势能函数中考虑配体。总体而言,KGS 表明 kinogeometric 约束可以描述蛋白质构象空间的折叠子集,而这个子集足够小,可以通过相对较小的构象分布来近似。