Epigenetic Research Laboratory, Department of Pharmacy, Birla Institute of Technology and Science-Pilani, Hyderabad Campus, Shamirpet, Hyderabad, 500078, India.
Natural Science Laboratory, Division of Medicinal and Pharmaceutical Chemistry, Department of Pharmaceutical Technology, P. O. Box 17020, Jadavpur University, Kolkata, 700032, West Bengal, India.
Comput Biol Med. 2023 Nov;166:107481. doi: 10.1016/j.compbiomed.2023.107481. Epub 2023 Sep 16.
Histone deacetylase 3 (HDAC3) is an epigenetic regulator that involves gene expression, apoptosis, and cell cycle progression, and the overexpression of HDAC3 is accountable for several cancers, neurodegeneracy, and many other diseases. Therefore, HDAC3 emerged as a promising drug target for the novel drug design. Here, we carried out the pharmacophore modeling using 50 benzamide-based HDAC3 selective inhibitors and utilized it for PHASE ligand screening to retrieve the hits with similar pharmacophore features. The dataset inhibitors of best hypotheses used to build the 3D QSAR model and the generated 3D QSAR model resulted in good PLS statistics with a regression coefficient (R) of 0.89, predictive coefficient (Q) of 0.88, and Pearson-R factor of 0.94 indicating its excellent predictive ability. The hits retrieved from pharmacophore-based virtual screening were subjected to docking against HDAC3 for the identification of potential inhibitors. A total of 10 hitsM1 to M10 were ranked using their scoring functions and further subject to lead optimization. The Prime MM/GBSA, AutoDock binding free energies, and ADMET studies were implemented for the selection of lead candidates. The four ligand molecules M1, M2, M3, and M4 were identified as potential leads against HDAC3 after lead optimization. The top two leads M1 and M2 were subjected to MD simulations for their stability evaluation with HDAC3. The newly designed leads M11 and M12 were identified as HDAC3 potential inhibitors from MD simulations studies. Therefore, the outcomes of the present study could provide insights into the discovery of new potential HDAC3 inhibitors with improved selectivity and activity against a variety of cancers and neurodegenerative diseases.
组蛋白去乙酰化酶 3(HDAC3)是一种表观遗传调节剂,参与基因表达、细胞凋亡和细胞周期进程,HDAC3 的过度表达与多种癌症、神经退行性疾病和许多其他疾病有关。因此,HDAC3 成为新型药物设计的有前途的药物靶点。在这里,我们使用 50 种基于苯甲酰胺的 HDAC3 选择性抑制剂进行药效团建模,并利用它进行 PHASE 配体筛选,以检索具有相似药效团特征的命中物。用于构建 3D-QSAR 模型的最佳假设数据集抑制剂和生成的 3D-QSAR 模型得出了良好的 PLS 统计数据,回归系数(R)为 0.89,预测系数(Q)为 0.88,Pearson-R 因子为 0.94,表明其具有出色的预测能力。从基于药效团的虚拟筛选中检索到的命中物被用于与 HDAC3 对接,以鉴定潜在的抑制剂。共 10 个命中物 M1 至 M10 根据其评分函数进行排名,并进一步进行先导优化。实施 Prime MM/GBSA、AutoDock 结合自由能和 ADMET 研究,以选择先导候选物。在先导优化后,从 10 个命中物中鉴定出 4 个配体分子 M1、M2、M3 和 M4 作为潜在的 HDAC3 先导物。在对 MD 模拟进行稳定性评估后,将前两个先导物 M1 和 M2 用作 MD 模拟研究的 HDAC3 潜在抑制剂。从 MD 模拟研究中确定了新设计的先导物 M11 和 M12 作为 HDAC3 的潜在抑制剂。因此,本研究的结果可为发现新的潜在 HDAC3 抑制剂提供新的思路,提高对多种癌症和神经退行性疾病的选择性和活性。