Kang Seung-gu, Das Payel, McGrane Scott J, Martin Alan J, Huynh Tien, Royyuru Ajay K, Taylor Andrew J, Jones Paul G, Zhou Ruhong
Computational Biology Center, IBM Thomas J. Watson Research Center , Yorktown Heights, New York 10598, United States.
J Phys Chem B. 2014 Jun 19;118(24):6393-404. doi: 10.1021/jp410232j. Epub 2014 Mar 28.
Metabotropic glutamate receptors (mGluRs) constitute an important family of the G-protein coupled receptors. Due to their widespread distribution in the central nervous system (CNS), these receptors are attractive candidates for understanding the molecular basis of various cognitive processes as well as for designing inhibitors for relevant psychiatric and neurological disorders. Despite many studies on drugs targeting the mGluR receptors to date, the molecular level details on the ligand binding dynamics still remain unclear. In this study, we performed in silico experiments for mGluR1 with 29 different ligands including known synthetic agonists and antagonists as well as natural amino acids. The ligand-receptor binding affinities were estimated by the use of atomistic simulations combined with the mathematically rigorous, Free Energy Perturbation (FEP) method, which successfully recognized the native agonist l-glutamate among the highly favorable binders, and also accurately distinguished antagonists from agonists. Comparative contact analysis also revealed the binding mode differences between natural and non-natural amino acid-based ligands. Several factors potentially affecting the ligand binding affinity and specificity were identified including net charges, dipole moments, and the presence of aromatic rings. On the basis of these findings, linear response models (LRMs) were built for different sets of ligands that showed high correlations (R(2) > 0.95) to the corresponding FEP binding affinities. These results identify some key factors that determine ligand-mGluR1 binding and could be used for future inhibitor designs and support a role for in silico modeling for understanding receptor ligand interactions.
代谢型谷氨酸受体(mGluRs)构成了G蛋白偶联受体的一个重要家族。由于它们在中枢神经系统(CNS)中广泛分布,这些受体对于理解各种认知过程的分子基础以及设计针对相关精神和神经疾病的抑制剂而言是颇具吸引力的候选对象。尽管迄今为止已有许多针对mGluR受体的药物研究,但配体结合动力学的分子水平细节仍不清楚。在本研究中,我们对mGluR1与29种不同配体进行了计算机模拟实验,这些配体包括已知的合成激动剂和拮抗剂以及天然氨基酸。通过结合数学上严谨的自由能微扰(FEP)方法的原子模拟来估计配体 - 受体结合亲和力,该方法成功地在高度有利的结合物中识别出天然激动剂L - 谷氨酸,并且还准确地区分了拮抗剂和激动剂。比较接触分析还揭示了天然和非天然氨基酸基配体之间的结合模式差异。确定了几个可能影响配体结合亲和力和特异性的因素,包括净电荷、偶极矩和芳香环的存在。基于这些发现,针对不同组的配体构建了线性响应模型(LRMs),这些模型与相应的FEP结合亲和力显示出高度相关性(R(2) > 0.95)。这些结果确定了一些决定配体与mGluR1结合的关键因素,可用于未来的抑制剂设计,并支持计算机模拟在理解受体配体相互作用方面的作用。