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Designing Free Energy Surfaces That Match Experimental Data with Metadynamics

机译:设计与元动力学匹配实验数据的自由能表面

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Creating models that are consistent with experimental data is essential in molecular modeling. This is often done by iteratively tuning the molecular force field of a simulation to match experimental data. An alternative method is to bias a simulation, leading to a hybrid model composed cif the original force field and biasing terms. We previously introduced such a method called experiment directed simulation (EDS). EDS minimally biases simulations to match average values. In this work, we introduce a new method called experiment directed metadynamics (EDM) that creates minimal biases for matching entire free energy surfaces such as radial distribution functions and phi/psi angle free energies. It is also possible with EDM to create a tunable mixture of the experimental data and free energy of the unbiased ensemble with explicit ratios. EDM can be proven to be convergent, and we also present proof, via a maximum entropy argument, that the final bias is minimal and unique. Examples of its use are given in the construction of ensembles that follow a desired free energy. The example systems studied include a Lennard-Jones fluid made to match a radial distribution function, an atomistic model augmented with bioinformatics data, and a three-component electrolyte solution where ab initio simulation data is used to improve a classical empirical model.
机译:创建与实验数据一致的模型对于分子建模至关重要。这通常是通过迭代调整模拟的分子力场以匹配实验数据来完成的。另一种方法是使模拟产生偏差,从而生成包含初始力场和偏差项的混合模型。我们之前曾介绍过一种称为实验导向仿真(EDS)的方法。 EDS最小化模拟偏差以匹配平均值。在这项工作中,我们引入了一种称为实验指导的元动力学(EDM)的新方法,该方法产生最小的偏差以匹配整个自由能表面,例如径向分布函数和phi / psi角自由能。用EDM还可以创建实验数据和无偏系的自由能的显式比例的可调混合物。可以证明EDM是收敛的,并且我们还通过最大熵论证证明了最终偏差是最小且唯一的。在遵循所需自由能的整体结构中给出了其使用示例。研究的示例系统包括为匹配径向分布函数而设计的Lennard-Jones流体,利用生物信息学数据增强的原子模型以及三成分电解质溶液,其中从头开始使用模拟数据来改进经典的经验模型。

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