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Efficient Estimation of Rare-Event Kinetics

机译:稀有事件动力学的有效估计

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The efficient calculation of rare-event kinetics in complex dynamical systems, such as the rate and pathways of ligand dissociation from a protein, is a generally unsolved problem. Markov state models can systematically integrate ensembles of short simulations and thus effectively parallelize the computational effort, but the rare events of interest still need to be spontaneously sampled in the data. Enhanced sampling approaches, such as parallel tempering or umbrella sampling, can accelerate the computation of equilibrium expectations massively, but sacrifice the ability to compute dynamical expectations. In this work we establish a principle to combine knowledge of the equilibrium distribution with kinetics from fast “downhill” relaxation trajectories using reversible Markov models. This approach is general, as it does not invoke any specific dynamical model and can provide accurate estimates of the rare-event kinetics. Large gains in sampling efficiency can be achieved whenever one direction of the process occurs more rapidly than its reverse, making the approach especially attractive for downhill processes such as folding and binding in biomolecules. Our method is implemented in the PyEMMA software.
机译:通常无法解决复杂动力学系统中稀有动力学的有效计算,例如配体从蛋白质解离的速率和途径。马尔可夫状态模型可以系统地集成短模拟的集合,从而有效地并行化计算工作,但是仍然需要自发地在数据中采样感兴趣的稀有事件。诸如平行回火或伞式采样之类的增强采样方法可以大大加速平衡期望的计算,但会牺牲计算动态期望的能力。在这项工作中,我们建立了一个原理,使用可逆的马尔可夫模型将平衡分布的知识与快速“下坡”松弛轨迹的动力学相结合。这种方法是通用的,因为它不调用任何特定的动力学模型,并且可以提供罕见事件动力学的准确估计。只要过程的一个方向发生的速度快于其反向发生的速度,就可以大大提高采样效率,这使得该方法特别适用于下坡过程,例如生物分子中的折叠和结合。我们的方法在PyEMMA软件中实现。

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