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Sequential data assimilation for single-molecule FRET photon-counting data

机译:单分子FRET光子计数数据的顺序数据同化

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摘要

Data assimilation is a statistical method designed to improve the quality of numerical simulations in combination with real observations. Here, we develop a sequential data assimilation method that incorporates one-dimensional time-series data of smFRET (single-molecule Forster resonance energy transfer) photon-counting into conformational ensembles of biomolecules derived from "replicated" molecular dynamics (MD) simulations. A particle filter using a large number of "replicated" MD simulations with a likelihood function for smFRET photon-counting data is employed to screen the conformational ensembles that match the experimental data. We examine the performance of the method using emulated smFRET data and coarse-grained (CG) MD simulations of a dye-labeled polyproline-20. The method estimates the dynamics of the end-to-end distance from smFRET data as well as revealing that of latent conformational variables. The particle filter is also able to correct model parameter dependence in CG MD simulations. We discuss the applicability of the method to real experimental data for conformational dynamics of biomolecules. (C) 2015 AIP Publishing LLC.
机译:数据同化是一种统计方法,旨在结合实际观察结果提高数值模拟的质量。在这里,我们开发了一种顺序数据同化方法,该方法将smFRET(单分子Forster共振能量转移)光子的一维时间序列数据纳入了从“复制的”分子动力学(MD)模拟衍生的生物分子的构象集合中。使用对smFRET光子计数数据使用大量具有似然函数的“复制” MD模拟的粒子滤波器,以筛选与实验数据匹配的构象集合。我们使用仿真的smFRET数据和染料标记的聚脯氨酸20的粗粒(CG)MD模拟检查了该方法的性能。该方法从smFRET数据估计端到端距离的动态,并揭示潜在的构象变量。粒子滤波器还能够校正CG MD模拟中的模型参数依赖性。我们讨论该方法对生物分子构象动力学的真实实验数据的适用性。 (C)2015 AIP Publishing LLC。

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