Biomolecular Dynamics, Institute of Physics, Albert Ludwigs University, 79104 Freiburg, Germany.
J Chem Phys. 2019 Mar 7;150(9):094111. doi: 10.1063/1.5081767.
The accurate definition of suitable metastable conformational states is fundamental for the construction of a Markov state model describing biomolecular dynamics. Following the dimensionality reduction in a molecular dynamics trajectory, these microstates can be generated by a recently proposed density-based geometrical clustering algorithm [F. Sittel and G. Stock, J. Chem. Theory Comput. 12, 2426 (2016)], which by design cuts the resulting clusters at the energy barriers and allows for a data-based identification of all parameters. Nevertheless, projection artifacts due to the inevitable restriction to a low-dimensional space combined with insufficient sampling often leads to a misclassification of sampled points in the transition regions. This typically causes intrastate fluctuations to be mistaken as interstate transitions, which leads to artificially short life times of the metastable states. As a simple but effective remedy, dynamical coring requires that the trajectory spends a minimum time in the new state for the transition to be counted. Adopting molecular dynamics simulations of two well-established biomolecular systems (alanine dipeptide and villin headpiece), dynamical coring is shown to considerably improve the Markovianity of the resulting metastable states, which is demonstrated by Chapman-Kolmogorov tests and increased implied time scales of the Markov model. Providing high structural and temporal resolution, the combination of density-based clustering and dynamical coring is particularly suited to describe the complex structural dynamics of unfolded biomolecules.
适定的亚稳态构象态的精确定义是构建描述生物分子动力学的马科夫状态模型的基础。在分子动力学轨迹的降维之后,这些微态可以通过最近提出的基于密度的几何聚类算法[F. Sittel 和 G. Stock, J. Chem. Theory Comput. 12, 2426 (2016)]生成,该算法通过在能量势垒处切割生成的簇,并允许基于数据识别所有参数。然而,由于不可避免地限制在低维空间以及采样不足而导致的投影伪影,通常会导致在过渡区域中对采样点的错误分类。这通常会导致本征态波动被误认为是状态间跃迁,从而导致亚稳态的寿命人为地变短。作为一种简单但有效的补救措施,动力学核化要求轨迹在新状态中花费最小时间才能计数跃迁。采用两种成熟的生物分子体系(丙氨酸二肽和微丝头部片段)的分子动力学模拟,表明动力学核化可以显著提高所得亚稳态的马科夫性,这通过 Chapman-Kolmogorov 检验和增加马科夫模型的隐含时间尺度来证明。基于密度的聚类和动力学核化的组合提供了高的结构和时间分辨率,特别适合描述无规卷曲生物分子的复杂结构动力学。