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高通量量子力学/分子力学(ONIOM)与 PHENIX/DivCon 联合的大分子晶体学精修:混合哈密顿方法对配体和蛋白质结构的影响。

High-throughput quantum-mechanics/molecular-mechanics (ONIOM) macromolecular crystallographic refinement with PHENIX/DivCon: the impact of mixed Hamiltonian methods on ligand and protein structure.

机构信息

QuantumBio Inc., 2790 West College Avenue, State College, PA 16801, USA.

出版信息

Acta Crystallogr D Struct Biol. 2018 Nov 1;74(Pt 11):1063-1077. doi: 10.1107/S2059798318012913. Epub 2018 Oct 29.

Abstract

Conventional macromolecular crystallographic refinement relies on often dubious stereochemical restraints, the preparation of which often requires human validation for unusual species, and on rudimentary energy functionals that are devoid of nonbonding effects owing to electrostatics, polarization, charge transfer or even hydrogen bonding. While this approach has served the crystallographic community for decades, as structure-based drug design/discovery (SBDD) has grown in prominence it has become clear that these conventional methods are less rigorous than they need to be in order to produce properly predictive protein-ligand models, and that the human intervention that is required to successfully treat ligands and other unusual chemistries found in SBDD often precludes high-throughput, automated refinement. Recently, plugins to the Python-based Hierarchical ENvironment for Integrated Xtallography (PHENIX) crystallographic platform have been developed to augment conventional methods with the in situ use of quantum mechanics (QM) applied to ligand(s) along with the surrounding active site(s) at each step of refinement [Borbulevych et al. (2014), Acta Cryst D70, 1233-1247]. This method (Region-QM) significantly increases the accuracy of the X-ray refinement process, and this approach is now used, coupled with experimental density, to accurately determine protonation states, binding modes, ring-flip states, water positions and so on. In the present work, this approach is expanded to include a more rigorous treatment of the entire structure, including the ligand(s), the associated active site(s) and the entire protein, using a fully automated, mixed quantum-mechanics/molecular-mechanics (QM/MM) Hamiltonian recently implemented in the DivCon package. This approach was validated through the automatic treatment of a population of 80 protein-ligand structures chosen from the Astex Diverse Set. Across the entire population, this method results in an average 3.5-fold reduction in ligand strain and a 4.5-fold improvement in MolProbity clashscore, as well as improvements in Ramachandran and rotamer outlier analyses. Overall, these results demonstrate that the use of a structure-wide QM/MM Hamiltonian exhibits improvements in the local structural chemistry of the ligand similar to Region-QM refinement but with significant improvements in the overall structure beyond the active site.

摘要

传统的大分子晶体学精修依赖于通常可疑的立体化学约束,其制备通常需要人为验证不常见的物种,并且依赖于基本的能量函数,这些能量函数由于静电、极化、电荷转移甚至氢键而缺乏非键合效应。虽然这种方法已经为晶体学界服务了几十年,但随着基于结构的药物设计/发现(SBDD)的重要性日益增加,人们已经清楚地认识到,为了产生适当的预测蛋白配体模型,这些传统方法的严谨性不如必要的那样,并且需要人为干预来成功治疗 SBDD 中发现的配体和其他不常见的化学物质,这常常排除了高通量、自动化的精修。最近,为基于 Python 的层次化集成晶体学环境(PHENIX)晶体学平台开发了插件,以在常规方法中增加原位使用量子力学(QM),应用于配体(以及)及其周围的活性位点在精修的每一步[Borbulevych 等人,2014 年,晶体学报 D70,1233-1247]。该方法(区域-QM)显著提高了 X 射线精修过程的准确性,目前该方法与实验密度相结合,用于准确确定质子化状态、结合模式、环翻转状态、水位置等。在本工作中,该方法扩展到包括对整个结构的更严格处理,包括配体、相关的活性位点和整个蛋白质,使用最近在 DivCon 包中实现的全自动混合量子力学/分子力学(QM/MM)哈密顿量。通过自动处理从 Astex 多样集中选择的 80 个蛋白配体结构的群体,验证了该方法。在整个群体中,该方法导致配体应变平均降低 3.5 倍,MolProbity 冲突得分提高 4.5 倍,以及 Ramachandran 和构象异构体分析的改进。总的来说,这些结果表明,使用全结构的 QM/MM 哈密顿量可以提高配体局部结构化学的精度,类似于区域-QM 精修,但在活性位点之外对整个结构的改善更为显著。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6ef8/6213575/f90b0ccbb07e/d-74-01063-fig1.jpg

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