Elucidating the ensemble of functionally-relevant transitions in protein systems with a robotics-inspired method

Q3 Biochemistry, Genetics and Molecular Biology BMC Structural Biology Pub Date : 2013-11-08 DOI:10.1186/1472-6807-13-S1-S8
Kevin Molloy, Amarda Shehu
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引用次数: 32

Abstract

Many proteins tune their biological function by transitioning between different functional states, effectively acting as dynamic molecular machines. Detailed structural characterization of transition trajectories is central to understanding the relationship between protein dynamics and function. Computational approaches that build on the Molecular Dynamics framework are in principle able to model transition trajectories at great detail but also at considerable computational cost. Methods that delay consideration of dynamics and focus instead on elucidating energetically-credible conformational paths connecting two functionally-relevant structures provide a complementary approach. Effective sampling-based path planning methods originating in robotics have been recently proposed to produce conformational paths. These methods largely model short peptides or address large proteins by simplifying conformational space.

We propose a robotics-inspired method that connects two given structures of a protein by sampling conformational paths. The method focuses on small- to medium-size proteins, efficiently modeling structural deformations through the use of the molecular fragment replacement technique. In particular, the method grows a tree in conformational space rooted at the start structure, steering the tree to a goal region defined around the goal structure. We investigate various bias schemes over a progress coordinate for balance between coverage of conformational space and progress towards the goal. A geometric projection layer promotes path diversity. A reactive temperature scheme allows sampling of rare paths that cross energy barriers.

Experiments are conducted on small- to medium-size proteins of length up to 214 amino acids and with multiple known functionally-relevant states, some of which are more than 13? apart of each-other. Analysis reveals that the method effectively obtains conformational paths connecting structural states that are significantly different. A detailed analysis on the depth and breadth of the tree suggests that a soft global bias over the progress coordinate enhances sampling and results in higher path diversity. The explicit geometric projection layer that biases the exploration away from over-sampled regions further increases coverage, often improving proximity to the goal by forcing the exploration to find new paths. The reactive temperature scheme is shown effective in increasing path diversity, particularly in difficult structural transitions with known high-energy barriers.

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用机器人启发的方法阐明蛋白质系统中功能相关转换的集合
许多蛋白质通过在不同的功能状态之间转换来调节其生物功能,有效地充当动态分子机器。过渡轨迹的详细结构表征是理解蛋白质动力学和功能之间关系的核心。建立在分子动力学框架上的计算方法原则上能够非常详细地模拟过渡轨迹,但也需要相当大的计算成本。延迟考虑动力学的方法侧重于阐明连接两个功能相关结构的能量可信构象路径,提供了一种互补的方法。源于机器人技术的有效的基于采样的路径规划方法最近被提出用于生成构象路径。这些方法主要是通过简化构象空间来模拟短肽或处理大蛋白质。我们提出了一种机器人启发的方法,通过采样构象路径连接蛋白质的两个给定结构。该方法侧重于中小尺寸的蛋白质,通过使用分子片段替换技术有效地模拟结构变形。特别是,该方法在以起始结构为根的构象空间中生长树,将树导向目标结构周围定义的目标区域。我们在一个进度坐标上研究了各种偏差方案,以平衡构象空间的覆盖和朝着目标的进度。几何投影层促进路径多样性。反应温度方案允许对跨越能量势垒的稀有路径进行采样。实验对象是长度达214个氨基酸的中小型蛋白质,具有多种已知的功能相关状态,其中一些超过13?彼此分开。分析表明,该方法有效地获得了连接结构状态显著不同的构象路径。对树的深度和宽度的详细分析表明,在进度坐标上的软全局偏差增强了采样,并导致更高的路径多样性。显式几何投影层使勘探远离过采样区域,进一步增加了覆盖范围,通常通过迫使勘探寻找新路径来提高与目标的接近度。反应温度方案在增加路径多样性方面是有效的,特别是在具有已知高能势垒的困难结构转变中。
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来源期刊
CiteScore
3.60
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: BMC Structural Biology is an open access, peer-reviewed journal that considers articles on investigations into the structure of biological macromolecules, including solving structures, structural and functional analyses, and computational modeling.
期刊最新文献
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