Molecule-Edit Templates for Efficient and Accurate Retrosynthesis Prediction (2310.07313v1)
Abstract: Retrosynthesis involves determining a sequence of reactions to synthesize complex molecules from simpler precursors. As this poses a challenge in organic chemistry, machine learning has offered solutions, particularly for predicting possible reaction substrates for a given target molecule. These solutions mainly fall into template-based and template-free categories. The former is efficient but relies on a vast set of predefined reaction patterns, while the latter, though more flexible, can be computationally intensive and less interpretable. To address these issues, we introduce METRO (Molecule-Edit Templates for RetrOsynthesis), a machine-learning model that predicts reactions using minimal templates - simplified reaction patterns capturing only essential molecular changes - reducing computational overhead and achieving state-of-the-art results on standard benchmarks.
- Mikołaj Sacha (4 papers)
- Michał Sadowski (2 papers)
- Piotr Kozakowski (6 papers)
- Ruard van Workum (1 paper)
- Stanisław Jastrzębski (31 papers)