| Literature DB >> 34251580 |
Víctor Gallego1, Roi Naveiro1, Carlos Roca2, David Ríos Insua3, Nuria E Campillo4.
Abstract
The introduction of a new drug to the commercial market follows a complex and long process that typically spans over several years and entails large monetary costs due to a high attrition rate. Because of this, there is an urgent need to improve this process using innovative technologies such as artificial intelligence (AI). Different AI tools are being applied to support all four steps of the drug development process (basic research for drug discovery; pre-clinical phase; clinical phase; and postmarketing). Some of the main tasks where AI has proven useful include identifying molecular targets, searching for hit and lead compounds, synthesising drug-like compounds and predicting ADME-Tox. This review, on the one hand, brings in a mathematical vision of some of the key AI methods used in drug development closer to medicinal chemists and, on the other hand, brings the drug development process and the use of different models closer to mathematicians. Emphasis is placed on two aspects not mentioned in similar surveys, namely, Bayesian approaches and their applications to molecular modelling and the eventual final use of the methods to actually support decisions. Promoting a perfect synergy.Entities:
Keywords: Artificial intelligence; Bayesian methods; Chemoinformatics; Decision support; Deep learning; Drug development; Machine learning
Mesh:
Year: 2021 PMID: 34251580 PMCID: PMC8342381 DOI: 10.1007/s11030-021-10266-8
Source DB: PubMed Journal: Mol Divers ISSN: 1381-1991 Impact factor: 3.364
Fig. 1Drug development process showing the application of AI at each stage. Adapted from [6, 7]
Fig. 2An schematic view of classification into two classes
Fig. 3An schematic view of clustering
Fig. 4A deep NN architecture with three hidden layers
Fig. 5An schematic view of RL