a College of Life Science , Liaocheng University , Liaocheng , People's Republic of China.
b Institute of Medicinal Plant Development , Chinese Academy of Medical Science & Peking Union Medical college , Beijing , People's Republic of China.
J Biomol Struct Dyn. 2018 Jul;36(9):2424-2435. doi: 10.1080/07391102.2017.1356241. Epub 2017 Aug 22.
Myeloid cell leukemia-1 (Mcl-1) has been a validated and attractive target for cancer therapy. Over-expression of Mcl-1 in many cancers allows cancer cells to evade apoptosis and contributes to the resistance to current chemotherapeutics. Here, we identified new Mcl-1 inhibitors using a multi-step virtual screening approach. First, based on two different ligand-receptor complexes, 20 pharmacophore models were established by simultaneously using 'Receptor-Ligand Pharmacophore Generation' method and manual build feature method, and then carefully validated by a test database. Then, pharmacophore-based virtual screening (PB-VS) could be performed by using the 20 pharmacophore models. In addition, docking study was used to predict the possible binding poses of compounds, and the docking parameters were optimized before performing docking-based virtual screening (DB-VS). Moreover, a 3D QSAR model was established by applying the 55 aligned Mcl-1 inhibitors. The 55 inhibitors sharing the same scaffold were docked into the Mcl-1 active site before alignment, then the inhibitors with possible binding conformations were aligned. For the training set, the 3D QSAR model gave a correlation coefficient r of 0.996; for the test set, the correlation coefficient r was 0.812. Therefore, the developed 3D QSAR model was a good model, which could be applied for carrying out 3D QSAR-based virtual screening (QSARD-VS). After the above three virtual screening methods orderly filtering, 23 potential inhibitors with novel scaffolds were identified. Furthermore, we have discussed in detail the mapping results of two potent compounds onto pharmacophore models, 3D QSAR model, and the interactions between the compounds and active site residues.
髓系细胞白血病-1(Mcl-1)已被证实是癌症治疗的一个有吸引力的靶点。许多癌症中 Mcl-1 的过度表达使癌细胞能够逃避细胞凋亡,并导致对当前化疗药物的耐药性。在这里,我们使用多步虚拟筛选方法鉴定了新的 Mcl-1 抑制剂。首先,基于两个不同的配体-受体复合物,通过同时使用“受体-配体药效团生成”方法和手动构建特征方法,建立了 20 个药效团模型,然后通过测试数据库进行了仔细验证。然后,可以通过使用 20 个药效团模型进行基于药效团的虚拟筛选(PB-VS)。此外,对接研究用于预测化合物的可能结合构象,并且在进行基于对接的虚拟筛选(DB-VS)之前优化对接参数。此外,通过应用 55 个对齐的 Mcl-1 抑制剂建立了 3D QSAR 模型。在对齐之前,将具有相同支架的 55 个抑制剂对接进入 Mcl-1 活性部位,然后对齐具有可能结合构象的抑制剂。对于训练集,3D QSAR 模型给出了 0.996 的相关系数 r;对于测试集,相关系数 r 为 0.812。因此,开发的 3D QSAR 模型是一个很好的模型,可用于进行 3D QSAR 基于虚拟筛选(QSARD-VS)。在上述三种虚拟筛选方法有序过滤后,鉴定出 23 种具有新型支架的潜在抑制剂。此外,我们详细讨论了两种有效化合物在药效团模型、3D QSAR 模型上的映射结果,以及化合物与活性位点残基之间的相互作用。