Applications of machine learning in GPCR bioactive ligand discovery
- PMID: 31005679
- DOI: 10.1016/j.sbi.2019.03.022
Applications of machine learning in GPCR bioactive ligand discovery
Abstract
GPCRs constitute the largest druggable family having targets for 475 Food and Drug Administration (FDA) approved drugs. As GPCRs are of great interest to pharmaceutical industry, enormous efforts are being expended to find relevant and potent GPCR ligands as lead compounds. There are tens of millions of compounds present in different chemical databases. In order to scan this immense chemical space, computational methods, especially machine learning (ML) methods, are essential components of GPCR drug discovery pipelines. ML approaches have applications in both ligand-based and structure-based virtual screening. We present here a cheminformatics overview of ML applications to different stages of GPCR drug discovery. Focusing on olfactory receptors, which are the largest family of GPCRs, a case study for predicting agonists for an ectopic olfactory receptor, OR1G1, compares four classical ML methods.
Copyright © 2019 Elsevier Ltd. All rights reserved.
Publication types
MeSH terms
Substances
LinkOut - more resources
Full Text Sources
Research Materials
