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Enhanced Conformational Sampling Method for Proteins Based on the TaBoo SeArch Algorithm: Application to the Folding of a Mini-Protein, Chignolin

机译:基于TaBoo SeArch算法的增强型蛋白质构象采样方法:在小蛋白Chignolin折叠中的应用

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The conformational samplings are indispensible for obtaining reliable canonical ensembles, which provide statistical averages of physical quantities such as free energies. However, the samplings of vast conformational space of biomacromolecules by conventional molecular dynamics (MD) simulations might be insufficient, due to their inadequate accessible time-scales for investigating biological functions. Therefore, the development of methodologies for enhancing the conformational sampling of biomacromolecules still remains as a challenging issue in computational biology. To tackle this problem, we newly propose an efficient conformational search method, which is referred as TaBoo SeArch (TBSA) algorithm. In TBSA, an inverse energy histogram is used to select seeds for the conformational resampling so that states with high frequencies are inhibited, while states with low frequencies are efficiently sampled to explore the unvisited conformational space. As a demonstration, TBSA was applied to the folding of a mini-protein, chignolin, and automatically sampled the native structure (C root mean square deviation<1.0 angstrom) with nanosecond order computational costs started from a completely extended structure, although a long-time 1-mu s normal MD simulation failed to sample the native structure. Furthermore, a multiscale free energy landscape method based on the conformational sampling of TBSA were quantitatively evaluated through free energy calculations with both implicit and explicit solvent models, which enable us to find several metastable states on the folding landscape. (c) 2015 Wiley Periodicals, Inc.
机译:构象采样对于获得可靠的规范集合是必不可少的,该集合提供了物理量(例如自由能)的统计平均值。但是,由于常规大分子构象空间对生物功能的可访问时间尺度不足,因此通过常规分子动力学(MD)模拟对大分子构象空间进行采样可能不够。因此,用于增强生物大分子的构象采样的方法学的发展仍然是计算生物学中的挑战性问题。为了解决这个问题,我们新提出了一种有效的构象搜索方法,称为TaBoo SeArch(TBSA)算法。在TBSA中,使用逆能量直方图选择种子进行构象重采样,从而抑制了高频状态,而有效采样了低频状态以探索未访问的构象空间。作为演示,将TBSA应用于微型蛋白Chignolin的折叠,并自动采样了天然结构(C均方根偏差<1.0埃),纳秒级的计算成本从完全扩展的结构开始,尽管1毫秒的常规MD模拟无法对本地结构进行采样。此外,通过使用隐式和显式溶剂模型的自由能计算,对基于TBSA构象采样的多尺度自由能态方法进行了定量评估,这使我们能够在折叠态中找到多个亚稳态。 (c)2015年威利期刊有限公司

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