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Machine learning and molecular descriptors enable rational solvent selection in asymmetric catalysis.
Amar, Yehia; Schweidtmann, Artur M; Deutsch, Paul; Cao, Liwei; Lapkin, Alexei.
Afiliación
  • Amar Y; Department of Chemical Engineering and Biotechnology , University of Cambridge , Philippa Fawcett Drive , Cambridge , CB3 0AS , UK . Email: aal35@cam.ac.uk.
  • Schweidtmann AM; Aachener Verfahrenstechnik - Process Systems Engineering , RWTH Aachen University , Aachen , Germany.
  • Deutsch P; UCB Pharma S.A. Allée de la Recherche , 60 1070 , Brussels , Belgium.
  • Cao L; Department of Chemical Engineering and Biotechnology , University of Cambridge , Philippa Fawcett Drive , Cambridge , CB3 0AS , UK . Email: aal35@cam.ac.uk.
  • Lapkin A; Cambridge Centre for Advanced Research and Education in Singapore Ltd. , 1 Create Way, CREATE Tower #05-05 , 138602 , Singapore.
Chem Sci ; 10(27): 6697-6706, 2019 Jul 21.
Article en En | MEDLINE | ID: mdl-31367324
Rational solvent selection remains a significant challenge in process development. Here we describe a hybrid mechanistic-machine learning approach, geared towards automated process development workflow. A library of 459 solvents was used, for which 12 conventional molecular descriptors, two reaction-specific descriptors, and additional descriptors based on screening charge density, were calculated. Gaussian process surrogate models were trained on experimental data from a Rh(CO)2(acac)/Josiphos catalysed asymmetric hydrogenation of a chiral α-ß unsaturated γ-lactam. With two simultaneous objectives - high conversion and high diastereomeric excess - the multi-objective algorithm, trained on the initial dataset of 25 solvents, has identified solvents leading to better reaction outcomes. In addition to being a powerful design of experiments (DoE) methodology, the resulting Gaussian process surrogate model for conversion is, in statistical terms, predictive, with a cross-validation correlation coefficient of 0.84. After identifying promising solvents, the composition of solvent mixtures and optimal reaction temperature were found using a black-box Bayesian optimisation. We then demonstrated the application of a new genetic programming approach to select an appropriate machine learning model for a specific physical system, which should allow the transition of the overall process development workflow into the future robotic laboratories.

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Tipo de estudio: Prognostic_studies Idioma: En Revista: Chem Sci Año: 2019 Tipo del documento: Article

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Tipo de estudio: Prognostic_studies Idioma: En Revista: Chem Sci Año: 2019 Tipo del documento: Article
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