4.8 Article

Quantitative interpretation explains machine learning models for chemical reaction prediction and uncovers bias

Journal

NATURE COMMUNICATIONS
Volume 12, Issue 1, Pages -

Publisher

NATURE RESEARCH
DOI: 10.1038/s41467-021-21895-w

Keywords

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Funding

  1. AstraZeneca
  2. Engineering and Physical Sciences Research Council
  3. Gates Cambridge Trust

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This study investigates automated reaction prediction using the Molecular Transformer, the state-of-the-art model for reaction prediction, proposing a new debiased dataset for a more realistic assessment of the model's performance.
Organic synthesis remains a major challenge in drug discovery. Although a plethora of machine learning models have been proposed as solutions in the literature, they suffer from being opaque black-boxes. It is neither clear if the models are making correct predictions because they inferred the salient chemistry, nor is it clear which training data they are relying on to reach a prediction. This opaqueness hinders both model developers and users. In this paper, we quantitatively interpret the Molecular Transformer, the state-of-the-art model for reaction prediction. We develop a framework to attribute predicted reaction outcomes both to specific parts of reactants, and to reactions in the training set. Furthermore, we demonstrate how to retrieve evidence for predicted reaction outcomes, and understand counterintuitive predictions by scrutinising the data. Additionally, we identify Clever Hans predictions where the correct prediction is reached for the wrong reason due to dataset bias. We present a new debiased dataset that provides a more realistic assessment of model performance, which we propose as the new standard benchmark for comparing reaction prediction models. Machine learning algorithms offer new possibilities for automating reaction procedures. The present paper investigates automated reaction's prediction with Molecular Transformer, the state-of-the-art model for reaction prediction, proposing a new debiased dataset for a realistic assessment of the model's performance.

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