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Quantifying polypeptide conformational space: Sensitivity to conformation and ensemble definition

机译:定量多肽构象空间:对构象的敏感性和整体定义

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Quantifying the density of conformations over phase space (the conformational distribution) is needed to model important macromolecular processes such as protein folding. In this work, we quantify the conformational distribution for a simple polypeptide (N-mer polyalanine) using the cumulative distribution function (CDF), which gives the probability that two randomly selected conformations are separated by less than a "conformational" distance and whose inverse gives conformation counts as a function of conformational radius. An important finding is that the conformation counts obtained by the CDF inverse depend critically on the assignment of a conformation's distance span and the ensemble (e. g., unfolded state model): varying ensemble and conformation definition (1 -> 2 angstrom) varies the CDF-based conformation counts for Ala(50) from 10(11) to 10(69). In particular, relatively short molecular dynamics (MD) relaxation of Ala(50)'s random-walk ensemble reduces the number of conformers from 1055 to 1014 (using a 1 angstrom root-mean-square-deviation radius conformation definition) pointing to potential disconnections in comparing the results from simplified models of unfolded proteins with those from all-atom MD simulations. Explicit waters are found to roughen the landscape considerably. Under some common conformation definitions, the results herein provide (i) an upper limit to the number of accessible conformations that compose unfolded states of proteins, (ii) the optimal clustering radius/conformation radius for counting conformations for a given energy and solvent model, (iii) a means of comparing various studies, and (iv) an assessment of the applicability of random search in protein folding.
机译:需要对相空间(构象分布)上的构象密度进行量化,以对重要的大分子过程(例如蛋白质折叠)进行建模。在这项工作中,我们使用累积分布函数(CDF)来量化简单多肽(N-mer聚丙氨酸)的构象分布,该分布函数给出了两个随机选择的构象之间的间隔小于“构象”距离的可能性,并且其反向给出构象计数作为构象半径的函数。一个重要的发现是,CDF逆获得的构象计数关键取决于构象的距离跨度和集合(例如,展开状态模型)的分配:变化的集合和构象定义(1-> 2埃)会改变CDF-基于Ala(50)的构象计数从10(11)到10(69)。特别是,相对短的Ala(50)随机步态集合体的分子动力学(MD)弛豫将构象体的数量从1055减少到1014(使用1埃均方根偏差半径构象定义),指向潜在比较未折叠蛋白简化模型的结果与全原子MD模拟得到的结果之间的差异。发现明显的水域使景观大大粗糙。在某些常见的构象定义下,本文的结果提供了(i)构成蛋白质未折叠状态的可访问构象数的上限,(ii)用于计算给定能量和溶剂模型的构象的最佳聚类半径/构象半径, (iii)比较各种研究的方法,以及(iv)评估随机搜索在蛋白质折叠中的适用性。

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