Shandong University of Traditional Chinese Medicine, Jinan, 250355, China.
Affiliated Hospital of Shandong University of Traditional Chinese Medicine, Jinan, 250355, China.
Mol Divers. 2023 Jun;27(3):1053-1066. doi: 10.1007/s11030-022-10467-9. Epub 2022 Jun 30.
Matrix metalloproteinase-2 (MMP-2) is capable of degrading Collage TypeIV in the vascular basement membrane and extracellular matrix. Studies have shown that MMP-2 is tightly associated with the biological behavior of malignant tumors. Therefore, the identification of inhibitors targeting MMP-2 could be effective in treating the disease by maintaining extracellular matrix homeostasis. In the pharmaceutical and biomedical fields, many computational tools are widely used, which improve the efficiency of the whole process to some extent. Apart from the conventional cheminformatics approaches (e.g., pharmacophore model and molecular docking), virtual screening strategies based on machine learning also have promising applications. In this study, we collected 2871 compound activity data against MMP-2 from the ChEMBL database and divided the training and test sets in a 3:1 ratio. Four machine learning algorithms were then selected to construct the classification models, and the best-performing model, i.e., the stacking-based fusion model with the highest AUC value in both training and test datasets, was used for the virtual screening of ZINC database. Next, we screened 17 potential MMP-2 inhibitors from the results predicted by the machine learning model via ADME/T analysis. The interactions between these compounds and the target protein were explored through molecular docking calculations, and the results showed that ZINC712249, ZINC4270723, and ZINC15858504 had lower binding free energies than the co-crystal ligand. To further examine the binding stability of the complexes, we performed molecular dynamics simulations and finally identified these three hits as the most promising natural products for MMP-2 inhibitors.
基质金属蛋白酶-2(MMP-2)能够降解血管基底膜和细胞外基质中的 IV 型胶原。研究表明,MMP-2 与恶性肿瘤的生物学行为密切相关。因此,鉴定针对 MMP-2 的抑制剂可以通过维持细胞外基质的动态平衡来有效治疗疾病。在制药和生物医学领域,广泛使用了许多计算工具,在一定程度上提高了整个过程的效率。除了传统的化学信息学方法(例如药效团模型和分子对接)之外,基于机器学习的虚拟筛选策略也具有广阔的应用前景。在本研究中,我们从 ChEMBL 数据库中收集了 2871 种针对 MMP-2 的化合物活性数据,并将训练集和测试集按照 3:1 的比例划分。然后选择了四种机器学习算法来构建分类模型,表现最佳的模型(即基于堆叠的融合模型,在训练集和测试集中均具有最高 AUC 值)用于对 ZINC 数据库进行虚拟筛选。接下来,我们通过 ADME/T 分析从机器学习模型预测的结果中筛选出 17 种潜在的 MMP-2 抑制剂。通过分子对接计算探索了这些化合物与靶蛋白之间的相互作用,结果表明 ZINC712249、ZINC4270723 和 ZINC15858504 的结合自由能低于共晶配体。为了进一步检查复合物的结合稳定性,我们进行了分子动力学模拟,最终将这三种化合物确定为最有希望的 MMP-2 抑制剂天然产物。