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Modeling of Protein Structural Flexibility and Large-Scale Dynamics: Coarse-Grained Simulations and Elastic Network Models

机译:蛋白质结构灵活性和大规模动力学的建模:粗粒度模拟和弹性网络模型

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摘要

Fluctuations of protein three-dimensional structures and large-scale conformational transitions are crucial for the biological function of proteins and their complexes. Experimental studies of such phenomena remain very challenging and therefore molecular modeling can be a good alternative or a valuable supporting tool for the investigation of large molecular systems and long-time events. In this minireview, we present two alternative approaches to the coarse-grained (CG) modeling of dynamic properties of protein systems. We discuss two CG representations of polypeptide chains used for Monte Carlo dynamics simulations of protein local dynamics and conformational transitions, and highly simplified structure-based elastic network models of protein flexibility. In contrast to classical all-atom molecular dynamics, the modeling strategies discussed here allow the quite accurate modeling of much larger systems and longer-time dynamic phenomena. We briefly describe the main features of these models and outline some of their applications, including modeling of near-native structure fluctuations, sampling of large regions of the protein conformational space, or possible support for the structure prediction of large proteins and their complexes.
机译:蛋白质三维结构的波动和大规模构象转变对于蛋白质及其复合物的生物学功能至关重要。对这种现象的实验研究仍然非常具有挑战性,因此分子模型可以作为研究大型分子系统和长期事件的良好选择或有价值的支持工具。在此小型审查中,我们提出了蛋白质系统动态特性的粗粒度(CG)建模的两种替代方法。我们讨论了用于蛋白质局部动力学和构象转变的蒙特卡洛动力学模拟的多肽链的两种CG表示形式,以及蛋白质柔性的高度简化的基于结构的弹性网络模型。与经典的全原子分子动力学相反,这里讨论的建模策略可以对大型系统和较长时间的动力学现象进行相当精确的建模。我们简要描述了这些模型的主要特征并概述了它们的一些应用,包括对近自然结构波动的建模,对蛋白质构象空间大区域的采样,或对大蛋白质及其复合物的结构预测的可能支持。

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