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Computing the relative binding affinity of ligands based on a pairwise binding comparison network. | LitMetric

AI Article Synopsis

  • Structure-based lead optimization in drug discovery currently relies heavily on medicinal chemists' experience and hypotheses; a new method called PBCNet aims to improve this process.
  • PBCNet uses a physics-informed graph attention mechanism to accurately rank binding affinities among similar ligands, outperforming traditional methods in both accuracy and efficiency during testing on over 460 ligands across 16 targets.
  • Additionally, it includes a user-friendly web service, allowing researchers to easily predict binding affinities, potentially speeding up lead optimization campaigns by up to 473%.

Article Abstract

Structure-based lead optimization is an open challenge in drug discovery, which is still largely driven by hypotheses and depends on the experience of medicinal chemists. Here we propose a pairwise binding comparison network (PBCNet) based on a physics-informed graph attention mechanism, specifically tailored for ranking the relative binding affinity among congeneric ligands. Benchmarking on two held-out sets (provided by Schrödinger and Merck) containing over 460 ligands and 16 targets, PBCNet demonstrated substantial advantages in terms of both prediction accuracy and computational efficiency. Equipped with a fine-tuning operation, the performance of PBCNet reaches that of Schrödinger's FEP+, which is much more computationally intensive and requires substantial expert intervention. A further simulation-based experiment showed that active learning-optimized PBCNet may accelerate lead optimization campaigns by 473%. Finally, for the convenience of users, a web service for PBCNet is established to facilitate complex relative binding affinity prediction through an easy-to-operate graphical interface.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10766524PMC
http://dx.doi.org/10.1038/s43588-023-00529-9DOI Listing

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