JOURNAL ARTICLE

Retrosynthetic Reaction Prediction Using Neural Sequence-to-Sequence Models

Abstract

We describe a fully data driven model that learns to perform a retrosynthetic reaction prediction task, which is treated as a sequence-to-sequence mapping problem. The end-to-end trained model has an encoder-decoder architecture that consists of two recurrent neural networks, which has previously shown great success in solving other sequence-to-sequence prediction tasks such as machine translation. The model is trained on 50,000 experimental reaction examples from the United States patent literature, which span 10 broad reaction types that are commonly used by medicinal chemists. We find that our model performs comparably with a rule-based expert system baseline model, and also overcomes certain limitations associated with rule-based expert systems and with any machine learning approach that contains a rule-based expert system component. Our model provides an important first step toward solving the challenging problem of computational retrosynthetic analysis.

Keywords:
Sequence (biology) Retrosynthetic analysis Computer science Artificial intelligence Chemistry Biology Stereochemistry Genetics

Metrics

568
Cited By
19.69
FWCI (Field Weighted Citation Impact)
66
Refs
1.00
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Citation History

Topics

Machine Learning in Materials Science
Physical Sciences →  Materials Science →  Materials Chemistry
Advanced Data Processing Techniques
Physical Sciences →  Engineering →  Control and Systems Engineering
Analytical Chemistry and Chromatography
Physical Sciences →  Chemistry →  Spectroscopy
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