A Bayes-inspired theory for optimally building an efficient coarse-grained folding force field.

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Communications in Information and Systems Pub Date : 2021-01-01 DOI:10.4310/cis.2021.v21.n1.a4
Travis Hurst, Dong Zhang, Yuanzhe Zhou, Shi-Jie Chen
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Abstract

Because of their potential utility in predicting conformational changes and assessing folding dynamics, coarse-grained (CG) RNA folding models are appealing for rapid characterization of RNA molecules. Previously, we reported the iterative simulated RNA reference state (IsRNA) method for parameterizing a CG force field for RNA folding, which consecutively updates the simulation force field to reflect marginal distributions of folding coordinates in the structure database and extract various energy terms. While the IsRNA model was validated by showing close agreement between the IsRNA-simulated and experimentally observed distributions, here, we expand our theoretical understanding of the model and, in doing so, improve the parameterization process to optimize the subset of included folding coordinates, which leads to accelerated simulations. Using statistical mechanical theory, we analyze the underlying, Bayesian concept that drives parameterization of the energy function, providing a general method for developing predictive, knowledge-based, polymer force fields on the basis of limited data. Furthermore, we propose an optimal parameterization procedure, based on the principal of maximum entropy.

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一种贝叶斯启发理论,用于优化建立高效的粗粒度折叠力场。
粗粒度(CG)RNA 折叠模型在预测构象变化和评估折叠动力学方面具有潜在的实用性,因此对于快速鉴定 RNA 分子具有吸引力。此前,我们报道了迭代模拟 RNA 参考态(IsRNA)的方法,该方法可为 RNA 折叠的 CG 力场参数化,连续更新模拟力场以反映结构数据库中折叠坐标的边际分布,并提取各种能量项。IsRNA 模型通过显示 IsRNA 模拟分布与实验观察分布之间的密切一致性而得到了验证,在此,我们扩展了对该模型的理论理解,并在此过程中改进了参数化过程,以优化所包含的折叠坐标子集,从而加快了模拟速度。我们利用统计力学理论分析了驱动能量函数参数化的基本贝叶斯概念,为在有限数据的基础上开发基于知识的预测性聚合物力场提供了通用方法。此外,我们还提出了一种基于最大熵原理的最优参数化程序。
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来源期刊
Communications in Information and Systems
Communications in Information and Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-
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