Center for Computational Sciences, University of Tsukuba, 1-1-1 Tennodai, Ibaraki 305-8577, Japan.
Phys Chem Chem Phys. 2018 Jul 4;20(26):17790-17798. doi: 10.1039/c8cp02246a.
Parallel cascade selection molecular dynamics (PaCS-MD) is a conformational sampling method for generating transition pathways between a given reactant and a product. PaCS-MD repeats the following two steps: (1) selections of initial structures relevant to transitions and (2) their conformational resampling. When selecting the initial structures, several measures are utilized to identify their potential to undergo transitions. In the present study, low-resolution structural data obtained from small angle scattering (SAXS) and cryo-electron microscopy (EM) are adopted as the measures in PaCS-MD to promote the conformational transitions of proteins, which is defined as SAXS-/EM-driven targeted PaCS-MD. By selecting the essential structures that have high correlations with the low-resolution structural data, the SAXS-/EM-driven targeted PaCS-MD identifies a set of transition pathways between the reactant and the product. As a demonstration, the present method successfully predicted the open-closed transition pathway of the lysine-, arginine-, ornithine-binding protein with a ns-order simulation time, indicating that the data-driven PaCS-MD simulation might work to promote the conformational transitions of proteins efficiently.
平行级联选择分子动力学 (PaCS-MD) 是一种用于生成给定反应物和产物之间转变途径的构象采样方法。PaCS-MD 重复以下两个步骤:(1) 选择与转变相关的初始结构,(2) 对其构象进行重采样。在选择初始结构时,利用几种措施来识别其发生转变的潜力。在本研究中,采用小角散射 (SAXS) 和冷冻电子显微镜 (EM) 获得的低分辨率结构数据作为 PaCS-MD 中的措施,以促进蛋白质的构象转变,这被定义为 SAXS-/EM 驱动的靶向 PaCS-MD。通过选择与低分辨率结构数据具有高度相关性的基本结构,SAXS-/EM 驱动的靶向 PaCS-MD 确定了反应物和产物之间的一组转变途径。作为演示,本方法成功预测了赖氨酸、精氨酸、鸟氨酸结合蛋白的开闭转变途径,模拟时间达到纳秒级,表明数据驱动的 PaCS-MD 模拟可能有助于有效地促进蛋白质的构象转变。