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General Protein Data Bank-Based Collective Variables for Protein Folding

机译:基于通用蛋白质数据库的蛋白质折叠总变量

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摘要

New, automated forms of data analysis are required to understand the high-dimensional trajectories that are obtained from molecular dynamics simulations on proteins. Dimensionality reduction algorithms are particularly appealing in this regard as they allow one to construct unbiased, low-dimensional representations of the trajectory using only the information encoded in the trajectory. The downside of this approach is that a different set of coordinates are required for each different chemical system under study precisely because the coordinates are constructed using information from the trajectory. In this paper, we show how one can resolve this problem by using the sketch-map algorithm that we recently proposed to construct a low-dimensional representation of the structures contained in the protein data bank. We show that the resulting coordinates are as useful for analyzing trajectory data as coordinates constructed using landmark configurations taken from the trajectory and that these coordinates can thus be used for understanding protein folding across a range of systems.
机译:需要新的自动化形式的数据分析来了解从蛋白质的分子动力学模拟获得的高维轨迹。降维算法在这方面特别吸引人,因为它们允许人们仅使用在轨迹中编码的信息来构建轨迹的无偏,低维表示。这种方法的缺点是,每个精确研究的化学系统都需要一组不同的坐标,因为这些坐标是使用来自轨迹的信息构建的。在本文中,我们展示了如何使用最近提出的草图映射算法来解决此问题,该算法是构建蛋白质数据库中所包含结构的低维表示形式。我们表明,所得到的坐标与使用从轨迹中获取的界标配置构建的坐标一样,对于分析轨迹数据同样有用,因此这些坐标可用于理解整个系统范围内的蛋白质折叠。

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