Computing transition paths in multiple-basin proteins with a probabilistic roadmap algorithm guided by structure data

T. Maximova, E. Plaku, Amarda Shehu
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引用次数: 14

Abstract

Proteins are macromolecules in perpetual motion, switching between structural states to modulate their function. A detailed characterization of the precise yet complex relationship between protein structure, dynamics, and function requires elucidating transitions between functionally-relevant states. Doing so challenges both wet and dry laboratories, as protein dynamics involves disparate temporal scales. In this paper we present a novel, sampling-based algorithm to compute transition paths. The algorithm exploits two main ideas. First, it leverages known structures to initialize its search and define a reduced conformation space for rapid sampling. This is key to address the insufficient sampling issue suffered by sampling-based algorithms. Second, the algorithm embeds samples in a nearest-neighbor graph where transition paths can be efficiently computed via queries. The algorithm adapts the probabilistic roadmap framework that is popular in robot motion planning. In addition to efficiently computing lowest-cost paths between any given structures, the algorithm allows investigating hypotheses regarding the order of experimentally-known structures in a transition event. This novel contribution is likely to open up new venues of research. Detailed analysis is presented on multiple-basin proteins of relevance to human disease. Multiscaling and the AMBER ff12SB force field are used to obtain energetically-credible paths at atomistic detail.
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基于结构数据的概率路线图算法计算多盆蛋白的迁移路径
蛋白质是永久运动的大分子,在结构状态之间切换以调节其功能。详细描述蛋白质结构、动力学和功能之间精确而复杂的关系需要阐明功能相关状态之间的转变。这样做对干湿实验室都有挑战,因为蛋白质动力学涉及不同的时间尺度。在本文中,我们提出了一种新颖的,基于采样的算法来计算过渡路径。该算法利用了两个主要思想。首先,它利用已知结构初始化其搜索并定义一个简化的构象空间进行快速采样。这是解决基于采样的算法所遭受的采样不足问题的关键。其次,该算法将样本嵌入到最近邻图中,通过查询可以有效地计算过渡路径。该算法采用了机器人运动规划中常用的概率路线图框架。除了有效地计算任何给定结构之间的最低成本路径外,该算法还允许研究关于过渡事件中实验已知结构顺序的假设。这一新颖的贡献可能会开辟新的研究领域。详细分析了与人类疾病相关的多盆蛋白。采用多尺度和AMBER ff12SB力场,在原子细节处获得能量可信路径。
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