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首页> 外文期刊>Journal of chemical theory and computation: JCTC >Enhanced Modeling via Network Theory: Adaptive Sampling of Markov State Models
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Enhanced Modeling via Network Theory: Adaptive Sampling of Markov State Models

机译:通过网络理论增强建模:马尔可夫状态模型的自适应采样

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Computer simulations can complement experiments by providing insight into molecular kinetics with atomic resolution. Unfortunately, even the most powerful supercomputers can only simulate small systems for short time scales, leaving modeling of most biologically relevant systems and time scales intractable. In this work, however, we show that molecular simulations driven by adaptive sampling of networks called Markov State Models (MSMs) can yield tremendous time and resource savings, allowing previously intractable calculations to be performed on a routine basis on existing hardware. We also introduce a distance metric (based on the relative entropy) for comparing MSMs. We primarily employ this metric to judge the convergence of various sampling schemes but it could also be employed to assess the effects of perturbations to a system (e.g., determining how changing the temperature or making a mutation changes a system's dynamics).
机译:计算机模拟可以洞悉具有原子分辨率的分子动力学,从而可以补充实验。不幸的是,即使是功能最强大的超级计算机也只能在短时间范围内模拟小型系统,而使大多数与生物相关的系统和时间范围的建模变得难以处理。但是,在这项工作中,我们表明,由称为马尔可夫状态模型(MSM)的网络的自适应采样驱动的分子模拟可以节省大量时间和资源,从而可以在现有硬件上常规执行以前难以处理的计算。我们还介绍了一种距离度量(基于相对熵),用于比较MSM。我们主要使用此指标来判断各种采样方案的收敛性,但也可以将其用于评估系统扰动的影响(例如,确定温度变化或突变如何改变系统动力学)。

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