Ngo Trieu-Du, Tran Thanh-Dao, Le Minh-Tri, Thai Khac-Minh
Department of Medicinal Chemistry, Faculty of Pharmacy, University of Medicine and Pharmacy at Ho Chi Minh City, 41 Dinh Tien Hoang, Dist. 1, Ho Chi Minh City, 700000, Viet Nam.
Mol Divers. 2016 Nov;20(4):945-961. doi: 10.1007/s11030-016-9688-5. Epub 2016 Jul 18.
The human P-glycoprotein (P-gp) efflux pump is of great interest for medicinal chemists because of its important role in multidrug resistance (MDR). Because of the high polyspecificity as well as the unavailability of high-resolution X-ray crystal structures of this transmembrane protein, ligand-based, and structure-based approaches which were machine learning, homology modeling, and molecular docking were combined for this study. In ligand-based approach, individual two-dimensional quantitative structure-activity relationship models were developed using different machine learning algorithms and subsequently combined into the Ensemble model which showed good performance on both the diverse training set and the validation sets. The applicability domain and the prediction quality of the developed models were also judged using the state-of-the-art methods and tools. In our structure-based approach, the P-gp structure and its binding region were predicted for a docking study to determine possible interactions between the ligands and the receptor. Based on these in silico tools, hit compounds for reversing MDR were discovered from the in-house and DrugBank databases through virtual screening using prediction models and molecular docking in an attempt to restore cancer cell sensitivity to cytotoxic drugs.
人P-糖蛋白(P-gp)外排泵因其在多药耐药性(MDR)中的重要作用而备受药物化学家关注。由于该跨膜蛋白具有高度多特异性且缺乏高分辨率X射线晶体结构,本研究结合了基于配体和基于结构的方法,包括机器学习、同源建模和分子对接。在基于配体的方法中,使用不同的机器学习算法开发了单独的二维定量构效关系模型,随后将其组合成集成模型,该模型在不同的训练集和验证集上均表现良好。还使用最先进的方法和工具判断所开发模型的适用范围和预测质量。在我们基于结构的方法中,预测了P-gp结构及其结合区域以进行对接研究,以确定配体与受体之间可能的相互作用。基于这些计算机工具,通过使用预测模型和分子对接进行虚拟筛选,从内部数据库和DrugBank数据库中发现了逆转MDR的活性化合物,试图恢复癌细胞对细胞毒性药物的敏感性。