...
首页> 外文期刊>Proteome science >Evolutionary-inspired probabilistic search for enhancing sampling of local minima in the protein energy surface
【24h】

Evolutionary-inspired probabilistic search for enhancing sampling of local minima in the protein energy surface

机译:进化启发式概率搜索,用于增强蛋白质能量表面中局部极小值的采样

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Background Despite computational challenges, elucidating conformations that a protein system assumes under physiologic conditions for the purpose of biological activity is a central problem in computational structural biology. While these conformations are associated with low energies in the energy surface that underlies the protein conformational space, few existing conformational search algorithms focus on explicitly sampling low-energy local minima in the protein energy surface. Methods This work proposes a novel probabilistic search framework, PLOW, that explicitly samples low-energy local minima in the protein energy surface. The framework combines algorithmic ingredients from evolutionary computation and computational structural biology to effectively explore the subspace of local minima. A greedy local search maps a conformation sampled in conformational space to a nearby local minimum. A perturbation move jumps out of a local minimum to obtain a new starting conformation for the greedy local search. The process repeats in an iterative fashion, resulting in a trajectory-based exploration of the subspace of local minima. Results and conclusions The analysis of PLOW's performance shows that, by navigating only the subspace of local minima, PLOW is able to sample conformations near a protein's native structure, either more effectively or as well as state-of-the-art methods that focus on reproducing the native structure for a protein system. Analysis of the actual subspace of local minima shows that PLOW samples this subspace more effectively that a naive sampling approach. Additional theoretical analysis reveals that the perturbation function employed by PLOW is key to its ability to sample a diverse set of low-energy conformations. This analysis also suggests directions for further research and novel applications for the proposed framework.
机译:背景技术尽管存在计算难题,但阐明蛋白质系统在生理条件下出于生物学活性的目的所构象是计算结构生物学中的一个中心问题。虽然这些构象与构成蛋白质构象空间的能量表面中的低能量相关,但很少有现有的构象搜索算法专注于在蛋白质能量表面中显式采样低能局部最小值。方法这项工作提出了一种新颖的概率搜索框架PLOW,该框架明确地采样了蛋白质能量表面中的低能量局部最小值。该框架结合了来自进化计算和计算结构生物学的算法要素,以有效地探索局部极小值的子空间。贪婪的局部搜索会将在构象空间中采样的构象映射到附近的局部最小值。扰动跳出局部最小值以获取贪婪局部搜索的新的起始构象。该过程以迭代方式重复,从而导致对局部极小子空间的基于轨迹的探索。结果与结论对PLOW性能的分析表明,通过仅浏览局部极小值的子空间,PLOW能够更有效地或以关注于蛋白质的天然方法为基础,对蛋白质天然结构附近的构象进行采样。再现蛋白质系统的天然结构。对局部极小值的实际子空间的分析表明,PLOW比单纯的采样方法更有效地对该子空间进行采样。额外的理论分析表明,PLOW所采用的摄动函数是其采样各种低能构象能力的关键。该分析还为拟议框架提供了进一步研究和新颖应用的方向。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号