Augmenting Adaptive Machine Learning with Kinetic Modeling for Reaction Optimization.

Journal: The Journal of organic chemistry
Published Date:

Abstract

We combine random sampling and active machine learning (ML) to optimize the synthesis of isomacroin, executing only 3% of all possible Friedländer reactions. Employing kinetic modeling, we augment machine intuition by extracting mechanistic knowledge and verify that a global optimum was obtained with ML. Our study contributes evidence on the potential of multiscale approaches to expedite the access to chemical matter, further democratizing organic chemistry in a data-motivated fashion.

Authors

  • A Filipa Almeida
    R&D, Process Chemistry Development, Hovione FarmaCiência S.A, Campus do Lumiar, Building S 1649-038 Lisboa, Portugal.
  • Filipe A P Ataíde
    R&D, Process Chemistry Development, Hovione FarmaCiência S.A, Campus do Lumiar, Building S 1649-038 Lisboa, Portugal.
  • Rui M S Loureiro
    R&D, Process Chemistry Development, Hovione FarmaCiência S.A, Campus do Lumiar, Building S 1649-038 Lisboa, Portugal.
  • Rui Moreira
    Universidade do Minho, Guimarães, Portugal.
  • Tiago Rodrigues
    BioMachines Lab, Lisbon, Portugal.