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首页> 外文期刊>The Journal of Chemical Physics >Optimized parameter selection reveals trends in Markov state models for protein folding
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Optimized parameter selection reveals trends in Markov state models for protein folding

机译:优化的参数选择揭示了蛋白质折叠的马尔可夫状态模型的趋势

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摘要

As molecular dynamics simulations access increasingly longer time scales, complementary advances in the analysis of biomolecular time-series data are necessary. Markov state models offer a powerful framework for this analysis by describing a system's states and the transitions between them. A recently established variational theorem for Markov state models now enables modelers to systematically determine the best way to describe a system's dynamics. In the context of the variational theorem, we analyze ultra-long folding simulations for a canonical set of twelve proteins [K. Lindorff-Larsen et al., Science 334, 517 (2011)] by creating and evaluating many types of Markov state models. We present a set of guidelines for constructing Markov state models of protein folding; namely, we recommend the use of cross-validation and a kinetically motivated dimensionality reduction step for improved descriptions of folding dynamics. We also warn that precise kinetics predictions rely on the features chosen to describe the system and pose the description of kinetic uncertainty across ensembles of models as an open issue. Published by AIP Publishing.
机译:随着分子动力学模拟越来越多地使用更长的时间尺度,在生物分子时间序列数据分析中必须有互补的进步。马尔可夫状态模型通过描述系统的状态及其之间的转换,为分析提供了强大的框架。最近建立的用于马尔可夫状态模型的变分定理使建模人员能够系统地确定描述系统动力学的最佳方法。在变分定理的背景下,我们分析了十二种蛋白质[K]的典型集合的超长折叠模拟。 Lindorff-Larsen et al。,Science 334,517(2011)]通过创建和评估许多类型的马尔可夫状态模型。我们提出了一套构建蛋白质折叠的马尔可夫状态模型的指导方针;也就是说,我们建议使用交叉验证和动力学上的降维步骤,以更好地描述折叠动力学。我们还警告说,精确的动力学预测依赖于用来描述系统的特征,并且对整个模型集合的动力学不确定性的描述是一个开放的问题。由AIP Publishing发布。

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