MISATO: machine learning dataset of protein-ligand complexes for structure-based drug discovery.
Till SiebenmorgenFilipe MenezesSabrina BenassouErinc MerdivanKieran DidiAndré Santos Dias MourãoRadosław KitelPietro LiòStefan KesselheimMarie PiraudFabian Joachim TheisMichael SattlerGrzegorz Maria PopowiczPublished in: Nature computational science (2024)
Large language models have greatly enhanced our ability to understand biology and chemistry, yet robust methods for structure-based drug discovery, quantum chemistry and structural biology are still sparse. Precise biomolecule-ligand interaction datasets are urgently needed for large language models. To address this, we present MISATO, a dataset that combines quantum mechanical properties of small molecules and associated molecular dynamics simulations of ~20,000 experimental protein-ligand complexes with extensive validation of experimental data. Starting from the existing experimental structures, semi-empirical quantum mechanics was used to systematically refine these structures. A large collection of molecular dynamics traces of protein-ligand complexes in explicit water is included, accumulating over 170 μs. We give examples of machine learning (ML) baseline models proving an improvement of accuracy by employing our data. An easy entry point for ML experts is provided to enable the next generation of drug discovery artificial intelligence models.
Keyphrases
- drug discovery
- molecular dynamics
- machine learning
- artificial intelligence
- big data
- molecular dynamics simulations
- density functional theory
- deep learning
- protein protein
- autism spectrum disorder
- electronic health record
- binding protein
- high resolution
- amino acid
- molecular docking
- energy transfer
- single cell
- small molecule
- rna seq
- monte carlo
- quantum dots