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首页> 外文期刊>Journal of chemical theory and computation: JCTC >Accelerating Convergence of Free Energy Computations with Hamiltonian Simulated Annealing of Solvent (HSAS)
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Accelerating Convergence of Free Energy Computations with Hamiltonian Simulated Annealing of Solvent (HSAS)

机译:利用哈密顿模拟退火加速自由能计算的收敛性(HSA)

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摘要

Coupling between binding of a ligand to a receptor and the displacement of a number of bound water molecules is a common event in molecular recognition processes. When the binding site is deeply buried and the exchange of water molecules with the bulk region is difficult to sample, the convergence and accuracy in free energy calculations can be severely compromised. Traditionally, Grand Canonical Monte Carlo (GCMC) based methods have been used to accelerate equilibration of water-at the expense, however, of lengthy trials before a molecular dynamics (MD) simulation. In this paper, a user-friendly and cost-efficient method, Hamiltonian simulated annealing of solvent in combination with lambda-exchange of free energy perturbation (FEP) is proposed to accelerate the sampling of water molecules in free energy calculations. As an illustrative example with reliable data from previous GCMC simulations, absolute binding affinity of camphor to cytochrome P450 was calculated. The simulated hydration state change in the buried binding pocket quantitatively agrees with GCMC simulations. It is shown that the new protocol significantly accelerates sampling of water in a buried binding pocket and the convergence of free energy, with negligible setup and computing costs compared to GCMC methods.
机译:将配体与受体的结合与多个结合水分子的位移之间的偶联是分子识别过程中的常见事件。当粘合位点深埋并且与块状区域的水分子交换难以样品时,可以严重受到自由能量计算的收敛性和精度。传统上,大规范蒙特卡罗(GCMC)的基于Grancy基于Carlo(GCMC)的方法已被用于加速水的平衡,然而,在分子动力学(MD)模拟之前的冗长试验。本文采用了一种用户友好且经济高效的方法,汉密尔顿模拟溶剂与λ交换的λ交换的自由能扰动(FEP)组合以加速在自由能量计算中的水分子采样。作为具有来自先前GCMC仿真的可靠数据的说明性实例,计算了樟脑对细胞色素P450的绝对结合亲和力。掩埋装订口的模拟水合状态变化定量同意GCMC仿真。结果表明,与GCMC方法相比,新方案在掩埋的装订口袋和自由能的收敛中显着加速了水的采样和自由能的收敛性。

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