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首页> 外文期刊>The Journal of Chemical Physics >Diffusion maps, clustering and fuzzy Markov modeling in peptide folding transitions
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Diffusion maps, clustering and fuzzy Markov modeling in peptide folding transitions

机译:肽折叠过渡中的扩散图,聚类和模糊马尔可夫建模

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Using the helix-coil transitions of alanine pentapeptide as an illustrative example, we demonstrate the use of diffusion maps in the analysis of molecular dynamics simulation trajectories. Diffusion maps and other nonlinear data-mining techniques provide powerful tools to visualize the distribution of structures in conformation space. The resulting low-dimensional representations help in partitioning conformation space, and in constructing Markov state models that capture the conformational dynamics. In an initial step, we use diffusion maps to reduce the dimensionality of the conformational dynamics of Ala5. The resulting pretreated data are then used in a clustering step. The identified clusters show excellent overlap with clusters obtained previously by using the backbone dihedral angles as input, with small-but nontrivial-differences reflecting torsional degrees of freedom ignored in the earlier approach. We then construct a Markov state model describing the conformational dynamics in terms of a discrete-time random walk between the clusters. We show that by combining fuzzy C-means clustering with a transition-based assignment of states, we can construct robust Markov state models. This state-assignment procedure suppresses short-time memory effects that result from the non-Markovianity of the dynamics projected onto the space of clusters. In a comparison with previous work, we demonstrate how manifold learning techniques may complement and enhance informed intuition commonly used to construct reduced descriptions of the dynamics in molecular conformation space.
机译:以丙氨酸五肽的螺旋-螺旋转变为例,我们证明了在分子动力学模拟轨迹分析中使用扩散图。扩散图和其他非线性数据挖掘技术提供了强大的工具,可以可视化构象空间中结构的分布。所得的低维表示形式有助于划分构象空间,并有助于构造捕获构象动力学的马尔可夫状态模型。在第一步中,我们使用扩散图来减少Ala5构象动力学的维数。然后将所得的预处理数据用于聚类步骤。识别出的簇与先前通过使用主干二面角作为输入获得的簇具有极好的重叠性,其中较小但非平凡的差异反映了扭转自由度,而在较早的方法中忽略了这些差异。然后,我们构建了一个马尔可夫状态模型,该模型根据簇之间的离散时间随机游动来描述构象动力学。我们表明,通过将模糊C均值聚类与基于过渡的状态分配相结合,可以构造鲁棒的马尔可夫状态模型。这种状态分配过程可以抑制短时记忆效应,这种效应是由投射到簇空间上的动力学的非马尔可夫性引起的。与以前的工作进行比较,我们演示了多种学习技术如何补充和增强通常用于构造分子构象空间动力学简化描述的知觉直觉。

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