Literature DB >> 31952684

Prediction and targeting of GPCR oligomer interfaces.

Carlos A V Barreto1, Salete J Baptista2, António José Preto1, Pedro Matos-Filipe1, Joana Mourão3, Rita Melo2, Irina Moreira4.   

Abstract

GPCR oligomerization has emerged as a hot topic in the GPCR field in the last years. Receptors that are part of these oligomers can influence each other's function, although it is not yet entirely understood how these interactions work. The existence of such a highly complex network of interactions between GPCRs generates the possibility of alternative targets for new therapeutic approaches. However, challenges still exist in the characterization of these complexes, especially at the interface level. Different experimental approaches, such as FRET or BRET, are usually combined to study GPCR oligomer interactions. Computational methods have been applied as a useful tool for retrieving information from GPCR sequences and the few X-ray-resolved oligomeric structures that are accessible, as well as for predicting new and trustworthy GPCR oligomeric interfaces. Machine-learning (ML) approaches have recently helped with some hindrances of other methods. By joining and evaluating multiple structure-, sequence- and co-evolution-based features on the same algorithm, it is possible to dilute the issues of particular structures and residues that arise from the experimental methodology into all-encompassing algorithms capable of accurately predict GPCR-GPCR interfaces. All these methods used as a single or a combined approach provide useful information about GPCR oligomerization and its role in GPCR function and dynamics. Altogether, we present experimental, computational and machine-learning methods used to study oligomers interfaces, as well as strategies that have been used to target these dynamic complexes.
© 2020 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Co-evolution; Dimerization; GPCRs; Hot spots; Interface prediction; Interface targeting; Machine learning; Sequence-based models; Structure-based models

Mesh:

Substances:

Year:  2020        PMID: 31952684     DOI: 10.1016/bs.pmbts.2019.11.007

Source DB:  PubMed          Journal:  Prog Mol Biol Transl Sci        ISSN: 1877-1173            Impact factor:   3.622


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