Department of Physics and Astronomy, Rutgers, The State University of New Jersey, 136 Frelinghuysen Road, Piscataway, New Jersey 08854, USA.
J Phys Chem B. 2009 Aug 27;113(34):11702-9. doi: 10.1021/jp900445t.
We present an approach to recover kinetics from a simplified protein folding model at different temperatures using the combined power of replica exchange (RE), a kinetic network, and effective stochastic dynamics. While RE simulations generate a large set of discrete states with the correct thermodynamics, kinetic information is lost due to the random exchange of temperatures. We show how we can recover the kinetics of a 2D continuous potential with an entropic barrier by using RE-generated discrete states as nodes of a kinetic network. By choosing the neighbors and the microscopic rates between the neighbors appropriately, the correct kinetics of the system can be recovered by running a kinetic simulation on the network. We fine-tune the parameters of the network by comparison with the effective drift velocities and diffusion coefficients of the system determined from short-time stochastic trajectories. One of the advantages of the kinetic network model is that the network can be built on a high-dimensional discretized state space, which can consist of multiple paths not consistent with a single reaction coordinate.
我们提出了一种从简化的蛋白质折叠模型在不同温度下恢复动力学的方法,该方法结合了 replica exchange(RE)、动力学网络和有效随机动力学的优势。虽然 RE 模拟可以生成具有正确热力学性质的大量离散状态,但由于温度的随机交换,动力学信息会丢失。我们展示了如何使用 RE 生成的离散状态作为动力学网络的节点来恢复具有熵障碍的 2D 连续势的动力学。通过适当选择邻居和邻居之间的微观速率,可以通过在网络上运行动力学模拟来恢复系统的正确动力学。我们通过与从短时间随机轨迹确定的系统的有效漂移速度和扩散系数进行比较,来微调网络的参数。动力学网络模型的一个优点是网络可以构建在高维离散状态空间上,该空间可以由多个与单个反应坐标不一致的路径组成。