Machine Learning May Sometimes Simply Capture Literature Popularity Trends: A Case Study of Heterocyclic Suzuki-Miyaura Coupling.

Journal: Journal of the American Chemical Society
Published Date:

Abstract

Applications of machine learning (ML) to synthetic chemistry rely on the assumption that large numbers of literature-reported examples should enable construction of accurate and predictive models of chemical reactivity. This paper demonstrates that abundance of carefully curated literature data may be insufficient for this purpose. Using an example of Suzuki-Miyaura coupling with heterocyclic building blocks─and a carefully selected database of >10,000 literature examples─we show that ML models cannot offer any meaningful predictions of optimum reaction conditions, even if the search space is restricted to only solvents and bases. This result holds irrespective of the ML model applied (from simple feed-forward to state-of-the-art graph-convolution neural networks) or the representation to describe the reaction partners (various fingerprints, chemical descriptors, latent representations, etc.). In all cases, the ML methods fail to perform significantly better than naive assignments based on the sheer frequency of certain reaction conditions reported in the literature. These unsatisfactory results likely reflect subjective preferences of various chemists to use certain protocols, other biasing factors as mundane as availability of certain solvents/reagents, and/or a lack of negative data. These findings highlight the likely importance of systematically generating reliable and standardized data sets for algorithm training.

Authors

  • Wiktor Beker
    Institute of Organic Chemistry, Polish Academy of Sciences, Warsaw, Poland.
  • Rafał Roszak
    Allchemy, Inc., Highland, Indiana 46322, United States.
  • Agnieszka Wołos
    Allchemy, Inc., Highland, Indiana 46322, United States.
  • Nicholas H Angello
    Department of Chemistry, University of Illinois at Urbana-Champaign, Urbana, Illinois 61801, United States.
  • Vandana Rathore
    Department of Chemistry, University of Illinois at Urbana-Champaign, Urbana, Illinois 61801, United States.
  • Martin D Burke
    Department of Chemistry, University of Illinois at Urbana-Champaign, Urbana, Illinois 61801, United States.
  • Bartosz A Grzybowski
    Institute of Organic Chemistry, Polish Academy of Sciences, Warsaw, Poland. nanogrzybowski@gmail.com.