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MultidimensionalReplica Exchange Molecular Dynamics Yields a Converged Ensemble ofan RNA Tetranucleotide

机译:多维的副本交换分子动力学产生了一个聚合的集合RNA四核苷酸

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摘要

A necessary step to properly assess and validate the performance of force fields for biomolecules is to exhaustively sample the accessible conformational space, which is challenging for large RNA structures. Given questions regarding the reliability of modeling RNA structure and dynamics with current methods, we have begun to use RNA tetranucleotides to evaluate force fields. These systems, though small, display considerable conformational variability and complete sampling with standard simulation methods remains challenging. Here we compare and discuss the performance of known variations of replica exchange molecular dynamics (REMD) methods, specifically temperature REMD (T-REMD), Hamiltonian REMD (H-REMD), and multidimensional REMD (M-REMD) methods, which have been implemented in Amber’s accelerated GPU code. Using two independent simulations, we show that M-REMD not only makes very efficient use of emerging large-scale GPU clusters, like Blue Waters at the University of Illinois, but also is critically important in generating the converged ensemble more efficiently than either T-REMD or H-REMD. With 57.6 μs aggregate sampling ofa conformational ensemble with M-REMD methods, the populations canbe compared to NMR data to evaluate force field reliability and furtherunderstand how putative changes to the force field may alter populationsto be in more consistent agreement with experiment.
机译:正确评估和验证生物分子力场性能的必要步骤是穷举采样可到达的构象空间,这对于大RNA结构是一个挑战。给定有关使用当前方法建模RNA结构和动力学的可靠性的问题,我们已开始使用RNA四核苷酸来评估力场。这些系统虽然很小,但显示出相当大的构象变异性,并且采用标准仿真方法进行完整采样仍然具有挑战性。在这里,我们比较并讨论了副本交换分子动力学(REMD)方法的已知变体的性能,特别是温度REMD(T-REMD),哈密顿REMD(H-REMD)和多维REMD(M-REMD)方法,在Amber的加速GPU代码中实现。通过两次独立的仿真,我们证明M-REMD不仅可以非常有效地利用新兴的大型GPU集群(例如伊利诺伊大学的Blue Waters),而且对于比T-T-T更有效地生成融合的集合至关重要。 REMD或H-REMD。通过57.6μs的总采样使用M-REMD方法的构象合奏,群体可以与NMR数据进行比较以评估力场的可靠性,并进一步了解力场的推定变​​化可能如何改变总体与实验更加一致。

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