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GPCR Structure-Based Virtual Screening Approach for CB2 Antagonist Search

机译:基于GPCR结构的CB2拮抗剂搜索虚拟筛选方法

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摘要

The potential for therapeutic specificity in regulating diseases has made cannabinoid (CB) receptors one of the most important G-protein-coupled receptor (GPCR) targets in search for new drugs. Considering the lack of related 3D experimental structures, we have established a structure-based virtual screening protocol to search for CB2 bioactive antagonists based on the 3D CB2 homology structure model. However, the existing homology-predicted 3D models often deviate from the native structure and therefore may incorrectly bias the in silico design. To overcome this problem, we have developed a 3D testing database query algorithm to examine the constructed 3D CB2 receptor structure model as well as the predicted binding pocket. In the present study, an antagonist-bound CB2 receptor complex model was initially generated using flexible docking simulation and then further optimized by molecular dynamic and mechanical (MD/MM) calculations. The refined 3D structural model of the CB2-ligand complex was then inspected by exploring the interactions between the receptor and ligands in order to predict the potential CB2 binding pocket for its antagonist. The ligand-receptor complex model and the predicted antagonist binding pockets were further processed and validated by FlexX-Pharm docking against a testing compound database that contains known antagonists. Furthermore, a consensus scoring (CScore) function algorithm was established to rank the binding interaction modes of a ligand on the CB2 receptor. Our results indicated that the known antagonists seeded in the testing database can be distinguished from a significant amount of randomly chosen molecules. Our studies demonstrated that the established GPCR structure-based virtual screening approach provided a new strategy with a high potential for in silico identifying novel CB2 antagonist leads based on the homology-generated 3D CB2 structure model.
机译:调节疾病的治疗特异性潜力使大麻素(CB)受体成为寻找新药时最重要的G蛋白偶联受体(GPCR)靶标之一。考虑到缺乏相关的3D实验结构,我们建立了基于结构的虚拟筛选方案,以基于3D CB2同源性结构模型搜索CB2生物活性拮抗剂。但是,现有的根据同源性预测的3D模型通常会偏离本机结构,因此可能会错误地使计算机设计产生偏差。为了克服这个问题,我们开发了3D测试数据库查询算法来检查构造的3D CB2受体结构模型以及预测的结合口袋。在本研究中,首先使用灵活的对接模拟生成拮抗剂结合的CB2受体复合物模型,然后通过分子动力学和机械(MD / MM)计算进一步优化。然后通过探索受体和配体之间的相互作用来检查CB2-配体复合物的3D结构模型,以预测其拮抗剂的潜在CB2结合口袋。配体-受体复合物模型和预测的拮抗剂结合位点可通过FlexX-Pharm对接针对包含已知拮抗剂的测试化合物数据库进行进一步处理和验证。此外,建立了共识评分(CScore)函数算法来对CB2受体上配体的结合相互作用模式进行排名。我们的结果表明,可以将测试数据库中植入的已知拮抗剂与大量随机选择的分子区分开。我们的研究表明,已建立的基于GPCR结构的虚拟筛选方法为基于同源性生成的3D CB2结构模型的计算机识别新型CB2拮抗剂线索提供了一种具有很高潜力的新策略。

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