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Data-Efficient, Chemistry-Aware Machine Learning Predictions of Diels-Alder Reaction Outcomes.
Keto, Angus; Guo, Taicheng; Underdue, Morgan; Stuyver, Thijs; Coley, Connor W; Zhang, Xiangliang; Krenske, Elizabeth H; Wiest, Olaf.
  • Keto A; School of Chemistry and Molecular Biosciences, The University of Queensland, Brisbane, QLD 4072, Australia.
  • Guo T; Department of Computer Science and Engineering, University of Notre Dame, Notre Dame, Indiana 46556, United States.
  • Underdue M; Department of Chemistry and Biochemistry, University of Notre Dame, Notre Dame, Indiana 46556, United States.
  • Stuyver T; Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.
  • Coley CW; Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.
  • Zhang X; Department of Computer Science and Engineering, University of Notre Dame, Notre Dame, Indiana 46556, United States.
  • Krenske EH; School of Chemistry and Molecular Biosciences, The University of Queensland, Brisbane, QLD 4072, Australia.
  • Wiest O; Department of Chemistry and Biochemistry, University of Notre Dame, Notre Dame, Indiana 46556, United States.
J Am Chem Soc ; 146(23): 16052-16061, 2024 Jun 12.
Article en En | MEDLINE | ID: mdl-38822795
ABSTRACT
The application of machine learning models to the prediction of reaction outcomes currently needs large and/or highly featurized data sets. We show that a chemistry-aware model, NERF, which mimics the bonding changes that occur during reactions, allows for highly accurate predictions of the outcomes of Diels-Alder reactions using a relatively small training set, with no pretraining and no additional features. We establish a diverse data set of 9537 intramolecular, hetero-, aromatic, and inverse electron demand Diels-Alder reactions. This data set is used to train a NERF model, and the performance is compared against state-of-the-art classification and generative machine learning models across low- and high-data regimes, with and without pretraining. The predictive accuracy (regio- and site selectivity in the major product) achieved by NERF exceeds 90% when as little as 40% of the data set is used for training. Another high-performing model, Chemformer, requires a larger training data set (>45%) and pretraining to reach 90% Top-1 accuracy. Accurate predictions of less-represented reaction subclasses, such as those involving heteroatomic or aromatic substrates, require higher percentages of training data. We also show how NERF can use small amounts of additional training data to quickly learn new systems and improve its overall understanding of reactivity. Synthetic chemists stand to benefit as this model can be rapidly expanded and tailored to areas of chemistry corresponding to the low-data regime.

Texto completo: 1 Banco de datos: MEDLINE Idioma: En Año: 2024 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Idioma: En Año: 2024 Tipo del documento: Article