Litcius/Paper detail

Predicting locations of cryptic pockets from single protein structures using the PocketMiner graph neural network

Artur Meller, Michael D. Ward, Jonathan Borowsky, Meghana Kshirsagar, Jeffrey M. Lotthammer, Felipe Oviedo, Juan Lavista Ferres, Gregory R. Bowman

2023Nature Communications176 citationsDOIOpen Access PDF

Abstract

Cryptic pockets expand the scope of drug discovery by enabling targeting of proteins currently considered undruggable because they lack pockets in their ground state structures. However, identifying cryptic pockets is labor-intensive and slow. The ability to accurately and rapidly predict if and where cryptic pockets are likely to form from a structure would greatly accelerate the search for druggable pockets. Here, we present PocketMiner, a graph neural network trained to predict where pockets are likely to open in molecular dynamics simulations. Applying PocketMiner to single structures from a newly curated dataset of 39 experimentally confirmed cryptic pockets demonstrates that it accurately identifies cryptic pockets (ROC-AUC: 0.87) >1,000-fold faster than existing methods. We apply PocketMiner across the human proteome and show that predicted pockets open in simulations, suggesting that over half of proteins thought to lack pockets based on available structures likely contain cryptic pockets, vastly expanding the potentially druggable proteome.

Topics & Concepts

DruggabilityComputational biologyProteomeComplex networkComputer scienceBiologyBioinformaticsGeneticsGeneWorld Wide WebProtein Structure and DynamicsComputational Drug Discovery MethodsAdvanced Proteomics Techniques and Applications