Journal article

CSM-Potential: mapping protein interactions and biological ligands in 3D space using geometric deep learning

CHM Rodrigues, DB Ascher

Nucleic Acids Research | OXFORD UNIV PRESS | Published : 2022

Open access

Abstract

Recent advances in protein structural modelling have enabled the accurate prediction of the holo 3D structures of almost any protein, however protein function is intrinsically linked to the interactions it makes. While a number of computational approaches have been proposed to explore potential biological interactions, they have been limited to specific interactions, and have not been readily accessible for non-experts or use in bioinformatics pipelines. Here we present CSM-Potential, a geometric deep learning approach to identify regions of a protein surface that are likely to mediate protein-protein and protein-ligand interactions in order to provide a link between 3D structure and biologi..

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University of Melbourne Researchers

Grants

Awarded by National Health and Medical Research Council (NHMRC) of Australia


Awarded by Medical Research Council


Awarded by Newton Fund


Funding Acknowledgements

Investigator Grant from the National Health and Medical Research Council (NHMRC) of Australia [GNT1174405 to D.B.A.]; Medical Research Council [MR/M026302/1 to D.B.A.]; Victorian Government's Operational Infrastructure Support Program. Funding for open access charge: MRC.