基于量子力学的最小挖掘算法计算蛋白质-配体结合自由能。

IF 5.5 1区 化学 Q2 CHEMISTRY, PHYSICAL Journal of Chemical Theory and Computation Pub Date : 2025-04-22 Epub Date: 2025-04-09 DOI:10.1021/acs.jctc.4c01707
Megan Schlinsog, Tosaporn Sattasathuchana, Peng Xu, Emilie B Guidez, Michael K Gilson, Michael J Potter, Mark S Gordon, Simon P Webb
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引用次数: 0

摘要

提出了一种结合挖掘极小值(基于统计力学端点的方法)和量子力学势计算蛋白质-配体结合自由能的新方法——蛋白质-配体QM-VM2 (PLQM-VM2)。PLQM-VM2是根据一个高度灵活的工作流来描述的,该工作流是从蛋白质数据库(PDB)文件和包含二维(2D)或三维(3D)配体系列坐标的化学结构数据文件(SD文件)发起的。该工作流程利用先前开发的第二代最小挖掘方法MM- vm2的分子力学(MM)实现,提供蛋白质、自由配体和蛋白质配体构象的集合,并通过量子化学软件包GAMESS在QM理论的选定水平上进行后处理,以纠正基于MM的构象几何形状和电子能量。修正后的能量用于计算构型积分,通过对构象系综的求和得到修正后的化学势,最终得到修正后的束缚自由能。在这项工作中,PLQM-VM2应用于三个基准蛋白配体系列:HIV-1蛋白酶/38配体,c-Met/24配体和TNKS2/27配体。QM修正在理论的半经验三阶密度泛函紧密结合水平上进行,并辅以色散和阻尼修正(DFTB3-D3(BJ)H)。用类导体极化连续体模型(PCM)解释了体溶剂化效应。DFTB3-D3(BJ)H/PCM单点能量和几何优化QM校正结合两种不同的模型进行,解决了与蛋白质大小的分子系统相关的大规模计算缩放问题。一种是蛋白质切割模型,在结合位点内和周围的一组蛋白质原子被切割出来,悬垂的键被氢覆盖,只有直接在蛋白质结合位点上的原子才能随着配体原子移动。另一种模型是片段分子轨道(Fragment Molecular Orbital, FMO)方法,它包括整个蛋白质系统,但同样只允许结合位点和配体原子移动。与MM-VM2相比,QM校正的所有四种方法在等级顺序和与实验确定的结合亲和力的参数线性相关性方面都有显著改善。总体而言,具有几何优化的FMO表现最好,但更便宜的切割单点能量方法仍然提供了良好的精度。此外,一个明确的结果是,与使用MM-VM2计算的结果相比,PLQM-VM2计算的三种不同测试系统的结合自由能在能量尺度上具有直接可比性。这为未来开发基于plqm - vm2的多蛋白筛选能力来检查配体系列的脱靶活性提供了基础。PLQM-VM2在单个计算节点(32个CPU内核)上计算蛋白质-配体复合物化学势的基准时间范围从单点能量方法的约30-45分钟到几何优化的切出方法的约5小时,以及几何优化的全蛋白质FMO方法的约35小时。
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Computation of Protein-Ligand Binding Free Energies with a Quantum Mechanics-Based Mining Minima Algorithm.

A new method, protein-ligand QM-VM2 (PLQM-VM2), to calculate protein-ligand binding free energies by combining mining minima, a statistical mechanics end-point-based approach, with quantum mechanical potentials is presented. PLQM-VM2 is described in terms of a highly flexible workflow that is initiated from a Protein Data Bank (PDB) file and a chemical structure data file (SD file) containing two-dimensional (2D) or three-dimensional (3D) ligand series coordinates. The workflow utilizes the previously developed molecular mechanics (MM) implementation of the second-generation mining minima method, MM-VM2, to provide ensembles of protein, free ligand, and protein-ligand conformers, which are postprocessed at chosen levels of QM theory, via the quantum chemistry software package GAMESS, to correct MM-based conformer geometries and electronic energies. The corrected energies are used in the calculation of configuration integrals, which on summation over the conformer ensembles give QM-corrected chemical potentials and ultimately QM-corrected binding free energies. In this work, PLQM-VM2 is applied to three benchmark protein-ligand series: HIV-1 protease/38 ligands, c-Met/24 ligands, and TNKS2/27 ligands. QM corrections are carried out at the semiempirical third-order density functional tight-binding level of theory, augmented with dispersion and damping corrections (DFTB3-D3(BJ)H). Bulk solvation effects are accounted for with the conductor-like polarizable continuum model (PCM). DFTB3-D3(BJ)H/PCM single-point energy-only and geometry optimization QM corrections are carried out in conjunction with two different models that address the large computational scaling associated with protein-sized molecular systems. One is a protein cutout model, whereby a set of protein atoms in and around the binding site are carved out, dangling bonds are capped with hydrogens, and only atoms directly in the protein binding site are mobile along with the ligand atoms. The other model is the Fragment Molecular Orbital (FMO) method, which includes the whole protein system but again only allows the binding site and ligand atoms to be mobile. All four of these methodological approaches to QM corrections provide significant improvement over MM-VM2 in terms of rank order and parametric linear correlation with experimentally determined binding affinities. Overall, FMO with geometry optimizations performed the best, but the much cheaper cutout single-point energy approach still provides a good level of accuracy. Furthermore, a clear result is that the PLQM-VM2 calculated binding free energies for the three diverse test systems in this work are, in contrast to those calculated using MM-VM2, directly comparable in energy scale. This suggests a basis for future development of a PLQM-VM2-based multiprotein screening capability to check for off-target activity of ligand series. Benchmark timings on a single compute node (32 CPU cores) for PLQM-VM2 calculation of the chemical potential of a protein-ligand complex range from ca. 30-45 min for the single-point energy approaches to ∼5 h for the cutout approach with geometry optimization and to ∼35 h for the full protein FMO approach with geometry optimization.

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来源期刊
Journal of Chemical Theory and Computation
Journal of Chemical Theory and Computation 化学-物理:原子、分子和化学物理
CiteScore
9.90
自引率
16.40%
发文量
568
审稿时长
1 months
期刊介绍: The Journal of Chemical Theory and Computation invites new and original contributions with the understanding that, if accepted, they will not be published elsewhere. Papers reporting new theories, methodology, and/or important applications in quantum electronic structure, molecular dynamics, and statistical mechanics are appropriate for submission to this Journal. Specific topics include advances in or applications of ab initio quantum mechanics, density functional theory, design and properties of new materials, surface science, Monte Carlo simulations, solvation models, QM/MM calculations, biomolecular structure prediction, and molecular dynamics in the broadest sense including gas-phase dynamics, ab initio dynamics, biomolecular dynamics, and protein folding. The Journal does not consider papers that are straightforward applications of known methods including DFT and molecular dynamics. The Journal favors submissions that include advances in theory or methodology with applications to compelling problems.
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