Literature DB >> 33920024

Ligand-Receptor Interactions and Machine Learning in GCGR and GLP-1R Drug Discovery.

Mikołaj Mizera1, Dorota Latek1.   

Abstract

The large amount of data that has been collected so far for G protein-coupled receptors requires machine learning (ML) approaches to fully exploit its potential. Our previous ML model based on gradient boosting used for prediction of drug affinity and selectivity for a receptor subtype was compared with explicit information on ligand-receptor interactions from induced-fit docking. Both methods have proved their usefulness in drug response predictions. Yet, their successful combination still requires allosteric/orthosteric assignment of ligands from datasets. Our ligand datasets included activities of two members of the secretin receptor family: GCGR and GLP-1R. Simultaneous activation of two or three receptors of this family by dual or triple agonists is not a typical kind of information included in compound databases. A precise allosteric/orthosteric ligand assignment requires a continuous update based on new structural and biological data. This data incompleteness remains the main obstacle for current ML methods applied to class B GPCR drug discovery. Even so, for these two class B receptors, our ligand-based ML model demonstrated high accuracy (5-fold cross-validation Q2 > 0.63 and Q2 > 0.67 for GLP-1R and GCGR, respectively). In addition, we performed a ligand annotation using recent cryogenic-electron microscopy (cryo-EM) and X-ray crystallographic data on small-molecule complexes of GCGR and GLP-1R. As a result, we assigned GLP-1R and GCGR actives deposited in ChEMBL to four small-molecule binding sites occupied by positive and negative allosteric modulators and a full agonist. Annotated compounds were added to our recently released repository of GPCR data.

Entities:  

Keywords:  G protein-coupled receptors; GCGR; GLP-1R; class B GPCRs; drug discovery; glucagon receptor family; gradient boosting; induced-fit docking; machine learning; molecular docking; scoring functions; secretin receptor family; virtual screening

Year:  2021        PMID: 33920024     DOI: 10.3390/ijms22084060

Source DB:  PubMed          Journal:  Int J Mol Sci        ISSN: 1422-0067            Impact factor:   5.923


  3 in total

1.  The Nonpeptide Agonist MK-5046 Functions As an Allosteric Agonist for the Bombesin Receptor Subtype-3.

Authors:  Irene Ramos-Alvarez; Tatiana Iordanskaia; Samuel A Mantey; Robert T Jensen
Journal:  J Pharmacol Exp Ther       Date:  2022-05-29       Impact factor: 4.402

2.  Drug Repositioning For Allosteric Modulation of VIP and PACAP Receptors.

Authors:  Ingrid Langer; Dorota Latek
Journal:  Front Endocrinol (Lausanne)       Date:  2021-11-18       Impact factor: 5.555

3.  Feasibility and application of machine learning enabled fast screening of poly-beta-amino-esters for cartilage therapies.

Authors:  Stefano Perni; Polina Prokopovich
Journal:  Sci Rep       Date:  2022-08-20       Impact factor: 4.996

  3 in total

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