Efficient Exploration of Protein Conformational Pathways using RRT* and MC

Fatemeh Afrasiabi, Nurit Haspel
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引用次数: 3

Abstract

The conformational space of proteins is complex and high dimensional, which makes its analysis a highly challenging task. Understanding the structure and dynamics of proteins is essential in order to understand their cellular function. It is often hard to experimentally characterize intermediate structures as well as conformational trajectory, due to the rapid dynamics of some proteins. Conformational pathways, which describe how proteins transition from one conformation to another as a result of a shift in conditions, are hard to describe experimentally. Computationally it is a challenging problem as well since physics-based simulations are time-consuming and often don't span sufficient time scales to allow capturing a full pathway. In previous work, we combined evolutionary information or rigidity analysis obtained from proteins' sequence and structure with an efficient tree based conformational search to elucidate the conformational trajectory of proteins. We incorporated backbone + C - β resolution and helped limit the search space by identifying mobile regions in a molecule. In this work, we use a hybrid algorithm which combines MC sampling and RRT*, a version of the Rapidly Exploring Random Trees (RRT) robotics-based method, to make the search more accurate and efficient, and produce smooth conformational pathways.
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利用RRT*和MC有效探索蛋白质构象途径
蛋白质的构象空间是复杂的、高维的,对其进行分析是一项极具挑战性的任务。为了了解蛋白质的细胞功能,了解蛋白质的结构和动力学是必不可少的。由于某些蛋白质的快速动力学,通常很难通过实验表征中间结构以及构象轨迹。构象途径描述了蛋白质如何由于条件的变化而从一种构象转变为另一种构象,这很难用实验来描述。从计算角度来看,这也是一个具有挑战性的问题,因为基于物理的模拟非常耗时,并且通常不能跨越足够的时间尺度来捕捉完整的路径。在之前的工作中,我们将从蛋白质序列和结构中获得的进化信息或刚度分析与有效的基于树的构象搜索相结合,以阐明蛋白质的构象轨迹。我们结合了骨架+ C - β分辨率,并通过识别分子中的移动区域来限制搜索空间。在这项工作中,我们使用了一种结合MC采样和RRT*(一种基于快速探索随机树(RRT)机器人的方法)的混合算法,使搜索更加准确和高效,并产生平滑的构象路径。
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