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A new class of enhanced kinetic sampling methods for building Markov state models

机译:用于建立马尔可夫状态模型的一类新的增强动力学采样方法

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摘要

Markov state models (MSMs) and other related kinetic network models are frequently used to study the long-timescale dynamical behavior of biomolecular and materials systems. MSMs are often constructed bottom-up using brute-force molecular dynamics (MD) simulations when the model contains a large number of states and kinetic pathways that are not known a priori. However, the resulting network generally encompasses only parts of the configurational space, and regardless of any additional MD performed, several states and pathways will still remain missing. This implies that the duration for which the MSM can faithfully capture the true dynamics, which we term as the validity time for the MSM, is always finite and unfortunately much shorter than the MD time invested to construct the model. A general framework that relates the kinetic uncertainty in the model to the validity time, missing states and pathways, network topology, and statistical sampling is presented. Performing additional calculations for frequently-sampled states/pathways may not alter the MSM validity time. A new class of enhanced kinetic sampling techniques is introduced that aims at targeting rare states/pathways that contribute most to the uncertainty so that the validity time is boosted in an effective manner. Examples including straightforward 1D energy landscapes, lattice models, and biomolecular systems are provided to illustrate the application of the method. Developments presented here will be of interest to the kinetic Monte Carlo community as well.
机译:马尔可夫状态模型(MSM)和其他相关的动力学网络模型经常用于研究生物分子和材料系统的长期尺度动力学行为。当模型包含大量先验未知的状态和动力学路径时,MSM通常使用蛮力分子动力学(MD)模拟自下而上构造。但是,生成的网络通常仅包含配置空间的一部分,并且无论执行任何其他MD,都将仍然缺少几种状态和路径。这意味着,MSM可以如实地捕获真实动态的持续时间(我们称为MSM的有效时间)始终是有限的,并且不幸的是,它比用于构建模型的MD时间要短得多。提出了将模型中的动力学不确定性与有效时间,缺失状态和途径,网络拓扑和统计采样相关联的通用框架。对频繁采样的状态/路径执行其他计算可能不会更改MSM有效性时间。引入了新的一类增强的动力学采样技术,其目标是针对对不确定性影响最大的稀有状态/途径,从而有效地提高了有效时间。提供了包括简单的一维能量分布图,晶格模型和生物分子系统的示例,以说明该方法的应用。这里介绍的发展也将引起动力学蒙特卡洛社区的兴趣。

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