Computational predictive models for P-glycoprotein inhibition of in-house chalcone derivatives and drug-bank compounds.
Trieu-Du NgoThanh-Dao TranMinh-Tri LeKhac-Minh ThaiPublished in: Molecular diversity (2016)
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.
Keyphrases
- molecular docking
- machine learning
- high resolution
- molecular dynamics simulations
- structure activity relationship
- endothelial cells
- multidrug resistant
- big data
- artificial intelligence
- protein protein
- mass spectrometry
- magnetic resonance
- molecular dynamics
- small molecule
- convolutional neural network
- electronic health record
- dna binding
- adverse drug