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A combined drug discovery strategy based on machine learning and molecular docking
- Source :
- Chemical biologydrug design. 93(5)
- Publication Year :
- 2018
-
Abstract
- Data mining methods based on machine learning play an increasingly important role in drug design and discovery. In the current work, eight machine learning methods including decision trees, k-Nearest neighbor, support vector machines, random forests, extremely randomized trees, AdaBoost, gradient boosting trees, and XGBoost were evaluated comprehensively through a case study of ACC inhibitor data sets. Internal and external data sets were employed for cross-validation of the eight machine learning methods. Results showed that the extremely randomized trees model performed best and was adopted as the first step of virtual screening. Together with structure-based virtual screening in the second step, this combined strategy obtained desirable results. This work indicates that the combination of machine learning methods with traditional structure-based virtual screening can effectively strengthen the ability in finding potential hits from large compound database for a given target.
- Subjects :
- Databases, Factual
Computer science
Decision tree
Machine learning
computer.software_genre
Crystallography, X-Ray
01 natural sciences
Biochemistry
Machine Learning
Inhibitory Concentration 50
Drug Discovery
AdaBoost
Pharmacology
Structure (mathematical logic)
Virtual screening
Principal Component Analysis
Binding Sites
010405 organic chemistry
business.industry
Drug discovery
Organic Chemistry
0104 chemical sciences
Random forest
Protein Structure, Tertiary
Support vector machine
Molecular Docking Simulation
010404 medicinal & biomolecular chemistry
ROC Curve
Area Under Curve
Molecular Medicine
Gradient boosting
Artificial intelligence
business
computer
Subjects
Details
- ISSN :
- 17470285
- Volume :
- 93
- Issue :
- 5
- Database :
- OpenAIRE
- Journal :
- Chemical biologydrug design
- Accession number :
- edsair.doi.dedup.....6abb8be73cec1724651da1f7f00b56ea