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在 Rosetta 中改进基于机器人灵感的构象采样。

Improvements to robotics-inspired conformational sampling in rosetta.

机构信息

California Institute for Quantitative Biomedical Research and Department of Bioengineering and Therapeutic Sciences, University of California San Francisco, San Francisco, California, United States of America.

出版信息

PLoS One. 2013 May 21;8(5):e63090. doi: 10.1371/journal.pone.0063090. Print 2013.

Abstract

To accurately predict protein conformations in atomic detail, a computational method must be capable of sampling models sufficiently close to the native structure. All-atom sampling is difficult because of the vast number of possible conformations and extremely rugged energy landscapes. Here, we test three sampling strategies to address these difficulties: conformational diversification, intensification of torsion and omega-angle sampling and parameter annealing. We evaluate these strategies in the context of the robotics-based kinematic closure (KIC) method for local conformational sampling in Rosetta on an established benchmark set of 45 12-residue protein segments without regular secondary structure. We quantify performance as the fraction of sub-Angstrom models generated. While improvements with individual strategies are only modest, the combination of intensification and annealing strategies into a new "next-generation KIC" method yields a four-fold increase over standard KIC in the median percentage of sub-Angstrom models across the dataset. Such improvements enable progress on more difficult problems, as demonstrated on longer segments, several of which could not be accurately remodeled with previous methods. Given its improved sampling capability, next-generation KIC should allow advances in other applications such as local conformational remodeling of multiple segments simultaneously, flexible backbone sequence design, and development of more accurate energy functions.

摘要

为了准确预测蛋白质的原子细节构象,计算方法必须能够充分接近天然结构地对模型进行采样。由于可能的构象数量非常多,而且能量景观极其崎岖,全原子采样非常困难。在这里,我们测试了三种采样策略来解决这些困难:构象多样化、扭转和 omega 角采样的强化以及参数退火。我们在基于机器人的运动学封闭(KIC)方法的背景下,在 Rosetta 上对 45 个 12 残基的无规则二级结构蛋白质片段的既定基准集中评估了这些策略。我们将性能量化为生成的亚埃模型的分数。虽然单个策略的改进只是适度的,但将强化和退火策略组合成一种新的“下一代 KIC”方法,在数据集内亚埃模型的中位数百分比方面,比标准 KIC 提高了四倍。这种改进使更困难问题的研究成为可能,这在更长的片段上得到了证明,其中一些片段以前的方法无法准确地进行建模。鉴于其改进的采样能力,下一代 KIC 应该能够在其他应用中取得进展,例如同时对多个片段进行局部构象重塑、灵活的骨架序列设计以及开发更准确的能量函数。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acc8/3660577/06995c7dc9a7/pone.0063090.g001.jpg

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