Ferrari Anna Maria, Degliesposti Gianluca, Sgobba Miriam, Rastelli Giulio
Dipartimento di Scienze Farmaceutiche, Università di Modena e Reggio Emilia, Via Campi 183, 41100 Modena, Italy.
Bioorg Med Chem. 2007 Dec 15;15(24):7865-77. doi: 10.1016/j.bmc.2007.08.019. Epub 2007 Aug 22.
Among the available methods for predicting free energies of binding of ligands to a protein, the molecular mechanics Poisson-Boltzmann surface area (MM-PBSA) and molecular mechanics generalized Born surface area (MM-GBSA) approaches have been validated for a relatively limited number of targets and compounds in the training set. Here, we report the results of an extensive study on a series of 28 inhibitors of aldose reductase with experimentally determined crystal structures and inhibitory activities, in which we evaluate the ability of MM-PBSA and MM-GBSA methods in predicting binding free energies using a number of different simulation conditions. While none of the methods proved able to predict absolute free energies of binding in quantitative agreement with the experimental values, calculated and experimental free energies of binding were significantly correlated. Comparing the predicted and experimental DeltaG of binding, MM-PBSA proved to perform better than MM-GBSA, and within the MM-PBSA methods, the PBSA of Amber performed similarly to Delphi. In particular, significant relationships between experimental and computed free energies of binding were obtained using Amber PBSA and structures minimized with a distance-dependent dielectric function. Importantly, while free energy predictions are usually made on large collections of equilibrated structures sampled during molecular dynamics in water, we have found that a single minimized structure is a reasonable approximation if relative free energies of binding are to be calculated. This finding is particularly relevant, considering that the generation of equilibrated MD ensembles and the subsequent free energy analysis on multiple snapshots is computationally intensive, while the generation and analysis of a single minimized structure of a protein-ligand complex is relatively fast, and therefore suited for high-throughput virtual screening studies. At this aim, we have developed an automated workflow that integrates all the necessary steps required to generate structures and calculate free energies of binding. The procedure is relatively fast and able to screen automatically and iteratively molecules contained in databases and libraries of compounds. Taken altogether, our results suggest that the workflow can be a valuable tool for ligand identification and optimization, being able to automatically and efficiently refine docking poses, which sometimes may not be accurate, and rank the compounds based on more accurate scoring functions.
在预测配体与蛋白质结合自由能的现有方法中,分子力学泊松-玻尔兹曼表面积(MM-PBSA)和分子力学广义玻恩表面积(MM-GBSA)方法在训练集中针对相对有限数量的靶点和化合物进行了验证。在此,我们报告了对一系列28种醛糖还原酶抑制剂的广泛研究结果,这些抑制剂具有实验测定的晶体结构和抑制活性,我们在其中评估了MM-PBSA和MM-GBSA方法在多种不同模拟条件下预测结合自由能的能力。虽然没有一种方法能够预测与实验值在定量上一致的绝对结合自由能,但计算得到的结合自由能与实验值显著相关。比较预测的和实验的结合ΔG,MM-PBSA被证明比MM-GBSA表现更好,并且在MM-PBSA方法中,Amber的PBSA与Delphi的表现相似。特别是,使用Amber PBSA和通过距离依赖介电函数最小化的结构获得了实验和计算的结合自由能之间的显著关系。重要的是,虽然自由能预测通常是基于在水中分子动力学过程中采样的大量平衡结构进行,但我们发现,如果要计算结合的相对自由能,单个最小化结构是一个合理的近似。考虑到生成平衡的分子动力学系综以及对多个快照进行后续自由能分析计算量很大,而生成和分析蛋白质-配体复合物的单个最小化结构相对较快,因此适合高通量虚拟筛选研究,这一发现尤为重要。为此,我们开发了一个自动化工作流程,该流程整合了生成结构并计算结合自由能所需的所有必要步骤。该程序相对较快,能够自动且迭代地筛选化合物数据库和库中包含的分子。总的来说,我们的结果表明,该工作流程可以成为配体识别和优化的有价值工具,能够自动且有效地优化有时可能不准确的对接姿势,并基于更准确的评分函数对化合物进行排名。