Department of Pharmaceutical Chemistry, JSS College of Pharmacy, JSS Academy of Higher Education & Research, Mysuru 570 015, Karnataka, India.
Department of Pharmaceutical Chemistry, JSS College of Pharmacy, JSS Academy of Higher Education & Research, Mysuru 570 015, Karnataka, India.
Comput Biol Chem. 2021 Dec;95:107600. doi: 10.1016/j.compbiolchem.2021.107600. Epub 2021 Nov 10.
Peroxisome proliferator-activated receptor gamma (PPARγ), a member of the nuclear receptor superfamily is an excellent example of targets that orchestrates cancer, inflammation, lipid and glucose metabolism. We report a protocol for the development of novel PPARγ antagonists by employing 3D QSAR based virtual screening for the identification of ligands with anticancer properties. The models are generated based on a large and diverse set of PPARγ antagonist ligands by the HYPOGEN algorithm using Discovery Studio 2019 drug design software. Among the 10 hypotheses generated, Hypotheses 2 showed the highest correlation coefficient values of 0.95 with less RMS deviation of 1.193. Validation of the developed pharmacophore model was performed by Fischer's randomization and screening against test and decoy set. The GH score or goodness score was found to be 0.81 indicating moderate to a good model. The selected pharmacophore model Hypo 2 was used as a query model for further screening of 11,145 compounds from the PubChem, sc-PDB structure database, and designed novel ligands. Based on fit values and ADMET filter, the final 10 compounds with the predicated activity of ≤ 3 nM were subjected for docking analysis. Docking analysis revealed the unique binding mode with hydrophobic amino acid that can cause destabilization of the H12 which is an important molecular mechanism to prove its antagonist action. Based on high CDocker scores, Cpd31 was synthesized, purified, analyzed and screened for PPARγ competitive binding by TR-FRET assay. The biochemical protein binding results matched the predicted results. Further, Cpd31 was screened against cancer cells and validated the results.
过氧化物酶体增殖物激活受体 γ(PPARγ)是核受体超家族的成员,是协调癌症、炎症、脂质和葡萄糖代谢的靶标之一。我们报告了一种通过基于 3D-QSAR 的虚拟筛选开发新型 PPARγ 拮抗剂的方案,以鉴定具有抗癌特性的配体。该模型是基于大量和多样化的 PPARγ 拮抗剂配体,通过 Discovery Studio 2019 药物设计软件的 HYPOGEN 算法生成的。在所生成的 10 个假设中,假设 2 显示出最高的相关系数值 0.95,均方根偏差较小,为 1.193。通过 Fischer 随机化和对测试集和诱饵集的筛选,对开发的药效团模型进行了验证。GH 评分或良好评分被发现为 0.81,表明模型为中等至良好。选择的药效团模型 Hypo 2 被用作查询模型,进一步筛选来自 PubChem、sc-PDB 结构数据库和设计的新型配体的 11,145 种化合物。根据拟合值和 ADMET 筛选,最终选择了 10 种具有预测活性≤3 nM 的化合物进行对接分析。对接分析揭示了与疏水性氨基酸的独特结合模式,这可能导致 H12 的不稳定,这是证明其拮抗剂作用的重要分子机制。基于高 CDocker 得分,合成、纯化、分析并通过 TR-FRET 测定筛选了 Cpd31 的 PPARγ 竞争性结合。生化蛋白结合结果与预测结果相符。此外,还对 Cpd31 进行了癌细胞筛选,并验证了结果。