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首页> 外文期刊>Journal of chemical theory and computation: JCTC >Relative Principal Components Analysis: Application to Analyzing Biomolecular Conformational Changes
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Relative Principal Components Analysis: Application to Analyzing Biomolecular Conformational Changes

机译:相对主成分分析:应用于分析生物分子构象变化的应用

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摘要

A new method termed "Relative Principal Components Analysis" (RPCA) is introduced that extracts optimal relevant principal components to describe the change between two data samples representing two macroscopic states. The method is widely applicable in data-driven science. Calculating the components is based on a physical framework that introduces the objective function (the Kullback-Leibler divergence) appropriate for quantifying the change of the macroscopic state affected by the changes in the microscopic features. To demonstrate the applicability of RPCA, we analyze the thermodynamically relevant conformational changes of the protein HIV-1 protease upon binding to different drug molecules. In this case, the RPCA method provides a sound thermodynamic foundation for analyzing the binding process and thus characterizing both the collective and the locally relevant conformational changes. Moreover, the relevant collective conformational changes can be reconstructed from the informative latent variables to exhibit both the enhanced and the restricted conformational fluctuations upon ligand association.
机译:引入了一种称为“相对主成分分析”(RPCA)的新方法,提取最佳相关主组件,以描述代表两个宏观状态的两个数据样本之间的变化。该方法广泛适用于数据驱动科学。计算组件基于物理框架,引入适合于量化受微观特征变化影响的宏观状态变化的目标函数(Kullback-Leibler发散者)。为了证明RPCA的适用性,我们在结合不同药物分子时分析蛋白质HIV-1蛋白酶的热力学相关构象变化。在这种情况下,RPCA方法提供了用于分析绑定过程的声音热力学基础,从而表征集体和局部相关的构象变化。此外,可以从信息潜在变量重建相关的集体构象变化,以表现在配体协会上的增强和限制的构象波动。

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