首页> 外文期刊>Journal of chemical theory and computation: JCTC >Generalized Markov State Modeling Method for Nonequilibrium Biomolecular Dynamics: Exemplified on Amyloid beta Conformational Dynamics Driven by an Oscillating Electric Field
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Generalized Markov State Modeling Method for Nonequilibrium Biomolecular Dynamics: Exemplified on Amyloid beta Conformational Dynamics Driven by an Oscillating Electric Field

机译:非醌生物分子动力学的广义马尔可夫国家建模方法:振动电场驱动的淀粉样蛋白β构象动态的举例说明

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摘要

Markov state models (MSMs) have received an unabated increase in popularity in recent years, as they are very well suited for the identification and analysis of metastable states and related kinetics. However, the state-of-the-art Markov state modeling methods and tools enforce the fulfillment of a detailed balance condition, restricting their applicability to equilibrium MSMs. To date, they are unsuitable to deal with general dominant data structures including cyclic processes, which are essentially associated with nonequilibrium systems. To overcome this limitation, we developed a generalization of the common robust Pen-on Cluster Cluster Analysis (PCCA+) method, termed generalized PCCA (G-PCCA). This method handles equilibrium and nonequilibrium simulation data, utilizing Schur vectors instead of eigenvectors. G-PCCA is not limited to the detection of metastable states but enables the identification of dominant structures in a general sense, unraveling cyclic processes. This is exemplified by application of G-PCCA on nonequilibrium molecular dynamics data of the Amyloid beta (1-40) peptide, periodically driven by an oscillating electric field.
机译:马尔可夫国家模型(MSMS)近年来收到了普及的普及增长,因为它们非常适合识别和分析亚稳态和相关动力学。然而,最先进的马尔可夫国家建模方法和工具强制实现详细的平衡条件,限制了它们对平衡MSM的适用性。迄今为止,它们不适合处理包括循环过程的一般主导数据结构,这些结构基本上与非纤维系统相关联。为了克服这种限制,我们开发了普通鲁棒笔集群聚类分析(PCCA +)方法的概括,称为广义PCCA(G-PCCA)。该方法处理平衡和非预测模拟数据,利用Schur向量而不是特征向量。 G-PCCA不限于检测亚稳态,但能够以一般意义,揭示循环过程识别主导结构。这通过G-PCCA在淀粉样蛋白β(1-40)肽的非QuiLibiBiRiblium分子动力学数据上施加,通过振荡电场定期驱动。

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