PUResNet: prediction of protein-ligand binding sites using deep residual neural network.
Jeevan KandelHilal TayaraKil To ChongPublished in: Journal of cheminformatics (2021)
In this study, we present a deep learning model PUResNet and a novel data cleaning process based on structural similarity for predicting protein-ligand binding sites. From the whole scPDB (an annotated database of druggable binding sites extracted from the Protein DataBank) database, 5020 protein structures were selected to address this problem, which were used to train PUResNet. With this, we achieved better and justifiable performance than the existing methods while evaluating two independent sets using distance, volume and proportion metrics.