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首页> 外文期刊>Journal of chemical theory and computation: JCTC >Defining an Optimal Metric for the Path Collective Variables
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Defining an Optimal Metric for the Path Collective Variables

机译:定义路径集体变量的最佳度量

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摘要

Path Collective Variables (PCVs) are a set of path-like variables that have been successfully used to investigate complex chemical and biological processes and compute their associated free energy surfaces and kinetics. Their current implementation relies on general, but at times inefficient, metrics (such as RMSD or DRMSD) to evaluate the distance between the instantaneous conformational state during the simulation and the reference coordinates defining the path. In this work, we present a new algorithm to construct optimal PCVs metrics as linear combinations of different CVs weighted through a spectral gap optimization procedure. The method was tested first on a simple model, trialanine peptide, in vacuo and then on a more complex path of an anticancer inhibitor binding to its pharmacological target. We also compared the results to those obtained with other path-based algorithms. We find that not only our proposed approach is able to automatically select relevant CVs for the PCVs metric but also that the resulting PCVs allow for reconstructing the associated free energy very efficiently. What is more, at difference with other path-based methods, our algorithm is able to explore nonlocally the reaction path space.
机译:路径集体变量(PCV)是一组类似路径的变量,已成功地用于调查复杂的化学和生物过程,并计算其相关的自由能表面和动力学。他们目前的实现依赖于一般,但有时效率低下,度量(例如RMSD或DRMSD)来评估仿真期间瞬时构象状态与定义路径的参考坐标之间的距离。在这项工作中,我们提出了一种新的算法来构造最佳PCVS度量作为通过光谱间隙优化过程加权的不同CV的线性组合。首先在一个简单的模型中,真空测试方法,然后在真空中测试,然后在抗癌剂抑制剂与其药理靶标结合的更复杂路径上。我们还将结果与其他基于路径的算法获得的结果进行了比较。我们发现,不仅我们所提出的方法能够自动为PCVS度量选择相关的CV,而且还可以非常有效地重建相关的自由能。更重要的是,与基于其他路径的方法不同,我们的算法能够探索非局部反应路径空间。

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