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Bayesian Self‐Optimization for Telescoped Continuous Flow Synthesis

Adam D. Clayton, Edward O. Pyzer‐Knapp, Mark Purdie, Martin F. Jones, Alexandre Barthelme, John Pavey, Nikil Kapur, Thomas W. Chamberlain, A. John Blacker, Richard A. Bourne

2022Angewandte Chemie International Edition83 citationsDOIOpen Access PDF

Abstract

The optimization of multistep chemical syntheses is critical for the rapid development of new pharmaceuticals. However, concatenating individually optimized reactions can lead to inefficient multistep syntheses, owing to chemical interdependencies between the steps. Herein, we develop an automated continuous flow platform for the simultaneous optimization of telescoped reactions. Our approach is applied to a Heck cyclization-deprotection reaction sequence, used in the synthesis of a precursor for 1-methyltetrahydroisoquinoline C5 functionalization. A simple method for multipoint sampling with a single online HPLC instrument was designed, enabling accurate quantification of each reaction, and an in-depth understanding of the reaction pathways. Notably, integration of Bayesian optimization techniques identified an 81 % overall yield in just 14 h, and revealed a favorable competing pathway for formation of the desired product.

Topics & Concepts

Flow chemistryComputer scienceBayesian optimizationCombinatorial chemistryContinuous flowYield (engineering)ChemistrySequence (biology)MicroreactorBayesian probabilityNanotechnologyBiochemical engineeringArtificial intelligenceMaterials scienceOrganic chemistryCatalysisEngineeringBiochemistryMetallurgyInnovative Microfluidic and Catalytic Techniques InnovationMachine Learning in Materials ScienceComputational Drug Discovery Methods
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