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蒙特卡罗紧束缚离子模型:考虑离子相关和涨落预测 RNA 的离子结合性质。

Monte Carlo Tightly Bound Ion Model: Predicting Ion-Binding Properties of RNA with Ion Correlations and Fluctuations.

机构信息

Department of Physics, Department of Biochemistry, and Informatics Institute, University of Missouri , Columbia, Missouri 65211, United States.

Department of Applied Physics, Zhejiang University of Technology , Hangzhou 310023, China.

出版信息

J Chem Theory Comput. 2016 Jul 12;12(7):3370-81. doi: 10.1021/acs.jctc.6b00028. Epub 2016 Jun 17.

Abstract

Experiments have suggested that ion correlation and fluctuation effects can be potentially important for multivalent ions in RNA folding. However, most existing computational methods for the ion electrostatics in RNA folding tend to ignore these effects. The previously reported tightly bound ion (TBI) model can treat ion correlation and fluctuation but its applicability to biologically important RNAs is severely limited by the low computational efficiency. Here, on the basis of Monte Carlo sampling for the many-body ion distribution, we develop a new computational model, the Monte Carlo tightly bound ion (MCTBI) model, for ion-binding properties around an RNA. Because of an enhanced sampling algorithm for ion distribution, the model leads to a significant improvement in computational efficiency. For example, for a 160-nt RNA, the model causes a more than 10-fold increase in the computational efficiency, and the improvement in computational efficiency is more pronounced for larger systems. Furthermore, unlike the earlier model that describes ion distribution using the number of bound ions around each nucleotide, the current MCTBI model is based on the three-dimensional coordinates of the ions. The higher efficiency of the model allows us to treat the ion effects for medium to large RNA molecules, RNA-ligand complexes, and RNA-protein complexes. This new model together with proper RNA conformational sampling and the energetics model may serve as a starting point for further development for the ion effects in RNA folding and conformational changes and for large nucleic acid systems.

摘要

实验表明,离子相关性和涨落效应对 RNA 折叠中的多价离子可能很重要。然而,大多数现有的 RNA 折叠中离子静电计算方法往往忽略了这些效应。先前报道的紧密结合离子(TBI)模型可以处理离子相关性和涨落,但由于计算效率低,其在生物重要的 RNA 中的适用性受到严重限制。在这里,我们基于多体离子分布的蒙特卡罗抽样,开发了一种新的计算模型,即蒙特卡罗紧密结合离子(MCTBI)模型,用于研究 RNA 周围的离子结合特性。由于离子分布的增强抽样算法,该模型显著提高了计算效率。例如,对于 160 个核苷酸的 RNA,模型的计算效率提高了 10 倍以上,对于更大的系统,计算效率的提高更为显著。此外,与早期的模型不同,该模型使用每个核苷酸周围结合离子的数量来描述离子分布,当前的 MCTBI 模型基于离子的三维坐标。该模型的高效率使我们能够处理中等大小到大型 RNA 分子、RNA-配体复合物和 RNA-蛋白质复合物的离子效应。该新模型与适当的 RNA 构象抽样和能量模型一起,可能成为进一步开发 RNA 折叠和构象变化以及大型核酸系统中离子效应的起点。

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