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Directional Δ G Neural Network (DrΔ G -Net): A Modular Neural Network Approach to Binding Free Energy Prediction.

Derek P MetcalfZachary L GlickAndrea BortolatoAndy JiangDaniel L CheneyC David Sherrill
Published in: Journal of chemical information and modeling (2024)
The protein-ligand binding free energy is a central quantity in structure-based computational drug discovery efforts. Although popular alchemical methods provide sound statistical means of computing the binding free energy of a large breadth of systems, they are generally too costly to be applied at the same frequency as end point or ligand-based methods. By contrast, these data-driven approaches are typically fast enough to address thousands of systems but with reduced transferability to unseen systems. We introduce DrΔ G -Net (or simply Dragnet), an equivariant graph neural network that can blend ligand-based and protein-ligand data-driven approaches. It is based on a 3D fingerprint representation of the ligand alone and in complex with the protein target. Dragnet is a global scoring function to predict the binding affinity of arbitrary protein-ligand complexes, but can be easily tuned via transfer learning to specific systems or end points, performing similarly to common 2D ligand-based approaches in these tasks. Dragnet is evaluated on a total of 28 validation proteins with a set of congeneric ligands derived from the Binding DB and one custom set extracted from the ChEMBL Database. In general, a handful of experimental binding affinities are sufficient to optimize the scoring function for a particular protein and ligand scaffold. When not available, predictions from physics-based methods such as absolute free energy perturbation can be used for the transfer learning tuning of Dragnet. Furthermore, we use our data to illustrate the present limitations of data-driven modeling of binding free energy predictions.
Keyphrases
  • neural network
  • binding protein
  • protein protein
  • dna binding
  • amino acid
  • drug discovery
  • magnetic resonance
  • small molecule
  • emergency department
  • computed tomography
  • working memory
  • deep learning
  • contrast enhanced