Science for Life Laboratory, Department of Cell and Molecular Biology, Uppsala University, Uppsala, Sweden.
Research Programme on Biomedical Informatics (GRIB), Department of Experimental and Health Sciences of Pompeu Fabra University (UPF), Hospital del Mar Medical Research Institute (IMIM), Barcelona, Spain.
PLoS Comput Biol. 2021 May 13;17(5):e1008936. doi: 10.1371/journal.pcbi.1008936. eCollection 2021 May.
The determination of G protein-coupled receptor (GPCR) structures at atomic resolution has improved understanding of cellular signaling and will accelerate the development of new drug candidates. However, experimental structures still remain unavailable for a majority of the GPCR family. GPCR structures and their interactions with ligands can also be modelled computationally, but such predictions have limited accuracy. In this work, we explored if molecular dynamics (MD) simulations could be used to refine the accuracy of in silico models of receptor-ligand complexes that were submitted to a community-wide assessment of GPCR structure prediction (GPCR Dock). Two simulation protocols were used to refine 30 models of the D3 dopamine receptor (D3R) in complex with an antagonist. Close to 60 μs of simulation time was generated and the resulting MD refined models were compared to a D3R crystal structure. In the MD simulations, the receptor models generally drifted further away from the crystal structure conformation. However, MD refinement was able to improve the accuracy of the ligand binding mode. The best refinement protocol improved agreement with the experimentally observed ligand binding mode for a majority of the models. Receptor structures with improved virtual screening performance, which was assessed by molecular docking of ligands and decoys, could also be identified among the MD refined models. Application of weak restraints to the transmembrane helixes in the MD simulations further improved predictions of the ligand binding mode and second extracellular loop. These results provide guidelines for application of MD refinement in prediction of GPCR-ligand complexes and directions for further method development.
测定 G 蛋白偶联受体 (GPCR) 的原子分辨率结构提高了人们对细胞信号转导的理解,并将加速新候选药物的开发。然而,大多数 GPCR 家族的实验结构仍然无法获得。GPCR 结构及其与配体的相互作用也可以通过计算进行建模,但这种预测的准确性有限。在这项工作中,我们探讨了分子动力学 (MD) 模拟是否可用于改进提交给 GPCR 结构预测 (GPCR Dock) 社区评估的受体-配体复合物的计算模型的准确性。使用两种模拟方案来改进 30 个 D3 多巴胺受体 (D3R) 与拮抗剂复合物的模型。生成了近 60 μs 的模拟时间,并将得到的 MD 精修模型与 D3R 晶体结构进行了比较。在 MD 模拟中,受体模型通常会进一步偏离晶体结构构象。然而,MD 精修能够提高配体结合模式的准确性。最佳精修方案能够提高大多数模型与实验观察到的配体结合模式的一致性。还可以从 MD 精修模型中识别出具有改善虚拟筛选性能的受体结构,这是通过配体和诱饵的分子对接来评估的。在 MD 模拟中对跨膜螺旋施加弱约束进一步提高了对配体结合模式和第二细胞外环的预测。这些结果为在 GPCR-配体复合物预测中应用 MD 精修提供了指导,并为进一步的方法开发指明了方向。