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首页> 外文期刊>The Journal of Chemical Physics >Volume-scaled common nearest neighbor clustering algorithm with free-energy hierarchy
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Volume-scaled common nearest neighbor clustering algorithm with free-energy hierarchy

机译:具有自由能层次结构的音量缩放常见的最近邻聚类算法

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摘要

The combination of Markov state modeling (MSM) and molecular dynamics (MD) simulations has been shown in recent years to be a valuable approach to unravel the slow processes of molecular systems with increasing complexity. While the algorithms for intermediate steps in the MSM workflow such as featurization and dimensionality reduction have been specifically adapted to MD datasets, conventional clustering methods are generally applied to the discretization step. This work adds to recent efforts to develop specialized density-based clustering algorithms for the Boltzmann-weighted data from MD simulations. We introduce the volume-scaled common nearest neighbor (vs-CNN) clustering that is an adapted version of the common nearest neighbor (CNN) algorithm. A major advantage of the proposed algorithm is that the introduced density-based criterion directly links to a free-energy notion via Boltzmann inversion. Such a free-energy perspective allows a straightforward hierarchical scheme to identify conformational clusters at different levels of a generally rugged free-energy landscape of complex molecular systems.
机译:近年来,马尔可夫状态建模(MSM)和分子动力学(MD)模拟的结合已被证明是一种有价值的方法,可以揭示日益复杂的分子系统的缓慢过程。虽然MSM工作流中的中间步骤(如特征化和降维)的算法已专门适用于MD数据集,但传统的聚类方法通常适用于离散化步骤。这项工作增加了最近为MD模拟的Boltzmann加权数据开发基于密度的专门聚类算法的努力。我们介绍了体积尺度的公共最近邻(vs CNN)聚类,它是公共最近邻(CNN)算法的一个改进版本。该算法的一个主要优点是,引入的基于密度的准则通过玻尔兹曼反演直接与自由能概念相联系。这样一个自由能视角允许一个简单的分层方案来识别复杂分子系统中普遍粗糙的自由能景观中不同水平的构象簇。

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