Van 't Hoff Institute for Molecular Sciences, Universiteit van Amsterdam, Science Park 904, 1098 XH Amsterdam, The Netherlands.
J Chem Phys. 2018 Aug 21;149(7):072320. doi: 10.1063/1.5027392.
Study of complex activated molecular transitions by molecular dynamics (MD) simulation can be a daunting task, especially when little knowledge is available on the reaction coordinate describing the mechanism of the process. Here, we assess the path-metadynamics enhanced sampling approach in combination with force field and [density functional theory (DFT)] MD simulations of conformational and chemical transitions that require three or more collective variables (CVs) to describe the processes. We show that the method efficiently localizes the average transition path of each process and simultaneously obtains the free energy profile along the path. The new multiple-walker implementation greatly speeds-up the calculation, with an almost trivial scaling of the number of parallel replicas. Increasing the dimensionality by expanding the set of CVs leads to a less than linear increase in the computational cost, as shown by applying the method to a conformational change in increasingly longer polyproline peptides. Combined with DFT-MD to model acid (de-)protonation in explicit water solvent, the transition path and associated free energy profile were obtained in less than 100 ps of simulation. A final application to hydrogen fuel production catalyzed by a hydrogenase enzyme showcases the unique mechanistic insight and chemical understanding that can be obtained from the average transition path.
通过分子动力学(MD)模拟研究复杂的激活分子转变可能是一项艰巨的任务,尤其是在缺乏描述反应坐标的机制知识时。在这里,我们评估了路径元动力学增强采样方法与力场和 [密度泛函理论 (DFT)] MD 模拟的结合,这些模拟需要三个或更多的集体变量 (CVs) 来描述过程。我们表明,该方法有效地定位了每个过程的平均转变路径,并同时获得了沿路径的自由能分布。新的多步实现大大加快了计算速度,并行副本数量的扩展几乎没有带来计算成本的增加。通过将 CVs 集扩展到更高维度,计算成本的增加小于线性增加,如通过将该方法应用于越来越长的聚脯氨酸肽中的构象变化所示。与 DFT-MD 相结合,在显式水溶剂中模拟酸(去)质子化,在不到 100 ps 的模拟时间内获得了转变路径和相关的自由能分布。最后,将其应用于由氢化酶酶催化的氢燃料生产,展示了从平均转变路径中获得的独特的机理见解和化学理解。