Multiscale Convergence Optimization in Constrained Molecular Dynamics Simulations

N. Nafati, S. Antonczak, J. Topin, J. Gołȩbiowski
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Abstract

The energy analysis is essential for studying chemical or biochemical reactions but also for characterizing interactions between two protagonists. Molecular Dynamics Simulations are well suited to sampling interaction structures but under minimum energy. To sample unstable or high energy structures, it is necessary to apply a bias-constraint in the simulation, in order to maintain the system in a stable energy state. In MD constrained simulations of ""Umbrella Sampling"" type, the phenomenon of ligand-receptor dissociation is divided into a series of windows (space sampling) in which the simulation time is fixed in advance. A step of de-biasing and statistical processing then allows accessing to the Potential Force Medium (PMF) of the studied process. In this context, we have developed an algorithm that optimizes the DM computation time regarding each reaction coordinate (distance between the ligand and the receptor); and thus can dynamically adjust the sampling time in each US-Window. The data processing consists in studying the convergence of the distributions of the coordinate constraint and its performance is tested on different ligand-receptor systems. Its originality lies in the used processing technique which combines wavelet thresholding with statistical-tests decision in relation to distribution convergence. In this paper, we briefly describe a Molecular Dynamic Simulation, then by assumption we consider that distribution data are series of random-variables vectors obeying to a normal probality law. These vectors are first analyzed by a wavelet technique, thresholded and in a second step, their law probability is computed for comparison in terms of convergence. In this context, we give the result of PMF and computation time according to statistic-tests convergence criteria, such as Kolmogorov Smirnov, Student tTest, and ANOVA Tests. We also compare these results with those obtained after a preprocessing with Gaussian low-pass filtering in order to follow the influence of thresholding. Finally, the results are discussed and analyzed regarding the contribution of the muli-scale processing and the more suited criteria for time optimization.
约束分子动力学模拟中的多尺度收敛优化
能量分析对于研究化学或生化反应是必不可少的,而且对于描述两个主角之间的相互作用也是必不可少的。分子动力学模拟非常适合于在最小能量条件下对相互作用结构进行采样。为了对不稳定或高能量结构进行采样,有必要在模拟中应用偏置约束,以保持系统处于稳定的能量状态。在“伞形采样”型MD约束模拟中,将配体-受体解离现象划分为一系列窗口(空间采样),在这些窗口中模拟时间是预先固定的。一个去偏和统计处理的步骤,然后允许访问研究过程的势力介质(PMF)。在这种情况下,我们开发了一种算法,可以优化每个反应坐标(配体和受体之间的距离)的DM计算时间;从而可以动态调整每个US-Window的采样时间。数据处理包括研究坐标约束分布的收敛性,并在不同的配体-受体体系上测试其性能。其独创性在于将小波阈值与分布收敛性的统计检验决策相结合的处理技术。本文简要地描述了分子动力学模拟,然后假定分布数据是服从正态概率律的随机变量向量序列。首先用小波技术对这些向量进行阈值分析,第二步,计算它们的律概率,以比较收敛性。在这种情况下,我们根据统计检验的收敛准则,如Kolmogorov Smirnov, Student tTest和ANOVA检验,给出PMF的结果和计算时间。为了跟踪阈值的影响,我们还将这些结果与高斯低通滤波预处理后得到的结果进行了比较。最后,就多尺度处理的贡献和更适合的时间优化准则进行了讨论和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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