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持久同调解析激活过程动力概率表面的精确拓扑结构。

Exact Topology of the Dynamic Probability Surface of an Activated Process by Persistent Homology.

机构信息

Center for Bioinformatics and Quantiative Biology and Department of Bioengneering, University of Illinois at Chicago, Chicago, Illinois 60607, United States.

出版信息

J Phys Chem B. 2021 May 13;125(18):4667-4680. doi: 10.1021/acs.jpcb.1c00904. Epub 2021 May 3.

Abstract

To gain insight into the reaction mechanism of activated processes, we introduce an exact approach for quantifying the topology of high-dimensional probability surfaces of the underlying dynamic processes. Instead of Morse indexes, we study the homology groups of a sequence of superlevel sets of the probability surface over high-dimensional configuration spaces using persistent homology. For alanine-dipeptide isomerization, a prototype of activated processes, we identify locations of probability peaks and connecting ridges, along with measures of their global prominence. Instead of a saddle point, the transition state ensemble (TSE) of conformations is at the most prominent probability peak after reactants/products, when proper reaction coordinates are included. Intuition-based models, even those exhibiting a double-well, fail to capture the dynamics of the activated process. Peak occurrence, prominence, and locations can be distorted upon subspace projection. While principal component analysis accounts for conformational variance, it inflates the complexity of the surface topology and destroys the dynamic properties of the topological features. In contrast, TSE emerges naturally as the most prominent peak beyond the reactant/product basins, when projected to a subspace of minimum dimension containing the reaction coordinates. Our approach is general and can be applied to investigate the topology of high-dimensional probability surfaces of other activated processes.

摘要

为了深入了解激活过程的反应机制,我们引入了一种精确的方法来量化潜在动态过程的高维概率曲面的拓扑结构。我们使用持久同调(persistent homology)研究高维构象空间上概率曲面的一系列超定界集的同调群,而不是 Morse 指标。对于丙氨酸二肽异构化这样的激活过程原型,我们确定了概率峰和连接脊的位置,以及它们全局显著度的度量。在包括适当的反应坐标的情况下,过渡态集合(TSE)位于反应物/产物之后最显著的概率峰处,而不是鞍点。基于直觉的模型,即使表现出双势阱,也无法捕捉激活过程的动力学。在子空间投影下,峰的出现、显著度和位置可能会发生扭曲。虽然主成分分析可以解释构象方差,但它会增加曲面拓扑的复杂性,并破坏拓扑特征的动力学特性。相比之下,当将其投影到包含反应坐标的最小维度子空间时,TSE 会自然地出现在反应物/产物盆地之外的最显著峰处。我们的方法具有通用性,可以应用于研究其他激活过程的高维概率曲面的拓扑结构。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/48b2/8957293/0bb22b433820/nihms-1788560-f0001.jpg

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