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Smiles2Dock: an open large-scale multi-task dataset for ML-based molecular docking

Biomolecules 2024-06-11 v1 Machine Learning Applications Computation

Abstract

Docking is a crucial component in drug discovery aimed at predicting the binding conformation and affinity between small molecules and target proteins. ML-based docking has recently emerged as a prominent approach, outpacing traditional methods like DOCK and AutoDock Vina in handling the growing scale and complexity of molecular libraries. However, the availability of comprehensive and user-friendly datasets for training and benchmarking ML-based docking algorithms remains limited. We introduce Smiles2Dock, an open large-scale multi-task dataset for molecular docking. We created a framework combining P2Rank and AutoDock Vina to dock 1.7 million ligands from the ChEMBL database against 15 AlphaFold proteins, giving us more than 25 million protein-ligand binding scores. The dataset leverages a wide range of high-accuracy AlphaFold protein models, encompasses a diverse set of biologically relevant compounds and enables researchers to benchmark all major approaches for ML-based docking such as Graph, Transformer and CNN-based methods. We also introduce a novel Transformer-based architecture for docking scores prediction and set it as an initial benchmark for our dataset. Our dataset and code are publicly available to support the development of novel ML-based methods for molecular docking to advance scientific research in this field.

Keywords

Cite

@article{arxiv.2406.05738,
  title  = {Smiles2Dock: an open large-scale multi-task dataset for ML-based molecular docking},
  author = {Thomas Le Menestrel and Manuel Rivas},
  journal= {arXiv preprint arXiv:2406.05738},
  year   = {2024}
}
R2 v1 2026-06-28T16:58:41.589Z