Extensive exploration of conformational space improves Rosetta results for short protein domains.

Yaohang Li, Andrew J Bordner, Yuan Tian, Xiuping Tao, Andrey A Gorin
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Abstract

With some simplifications, computational protein folding can be understood as an optimization problem of a potential energy function on a variable space consisting of all conformation for a given protein molecule. It is well known that realistic energy potentials are very "rough" functions, when expressed in the standard variables, and the folding trajectories can be easily trapped in multiple local minima. We have integrated our variation of Parallel Tempering optimization into the protein folding program Rosetta in order to improve its capability to overcome energy barriers and estimate how such improvement will influence the quality of the folded protein domains. Here we report that (1) Parallel Tempering Rosetta (PTR) is significantly better in the exploration of protein structures than previous implementations of the program; (2) systematic improvements are observed across a large benchmark set in the parameters that are normally followed to estimate robustness of the folding; (3) these improvements are most dramatic in the subset of the shortest domains, where high-quality structures have been obtained for >75% of all tested sequences. Further analysis of the results will improve our understanding of protein conformational space and lead to new improvements in the protein folding methodology, while the current PTR implementation should be very efficient for short (up to approximately 80 a.a.) protein domains and therefore may find practical application in system biology studies.

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对构象空间的广泛探索改善了罗塞塔对短蛋白质结构域的结果。
经过一些简化,计算蛋白质折叠可以被理解为由给定蛋白质分子的所有构象组成的可变空间上势能函数的优化问题。众所周知,当用标准变量表示时,真实的能量势是非常“粗糙”的函数,并且折叠轨迹很容易陷入多个局部极小值。我们将平行回火优化的变化整合到蛋白质折叠程序Rosetta中,以提高其克服能量障碍的能力,并估计这种改进将如何影响折叠蛋白质结构域的质量。在此,我们报告了(1)平行回火罗塞塔(PTR)在蛋白质结构的探索方面明显优于之前的程序实现;(2)在通常用于估计折叠鲁棒性的参数中,通过大型基准集观察到系统的改进;(3)这些改进在最短结构域的子集中最为显著,其中>75%的测试序列获得了高质量的结构。对结果的进一步分析将提高我们对蛋白质构象空间的理解,并导致蛋白质折叠方法的新改进,而目前的PTR实现对于短(高达约80 a.a)蛋白质结构域应该非常有效,因此可能在系统生物学研究中找到实际应用。
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