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Sequential closed-loop Bayesian optimization as a guide for organic molecular metallophotocatalyst formulation discovery

Xiaobo Li, Yu Che, Linjiang Chen, Tao Liu, KeWei Wang, Lunjie Liu, Haofan Yang, Edward O. Pyzer‐Knapp, Andrew I. Cooper

2024Nature Chemistry58 citationsDOIOpen Access PDF

Abstract

Abstract Conjugated organic photoredox catalysts (OPCs) can promote a wide range of chemical transformations. It is challenging to predict the catalytic activities of OPCs from first principles, either by expert knowledge or by using a priori calculations, as catalyst activity depends on a complex range of interrelated properties. Organic photocatalysts and other catalyst systems have often been discovered by a mixture of design and trial and error. Here we report a two-step data-driven approach to the targeted synthesis of OPCs and the subsequent reaction optimization for metallophotocatalysis, demonstrated for decarboxylative sp 3 – sp 2 cross-coupling of amino acids with aryl halides. Our approach uses a Bayesian optimization strategy coupled with encoding of key physical properties using molecular descriptors to identify promising OPCs from a virtual library of 560 candidate molecules. This led to OPC formulations that are competitive with iridium catalysts by exploring just 2.4% of the available catalyst formulation space (107 of 4,500 possible reaction conditions).

Topics & Concepts

ChemistryCatalysisBayesian optimizationCombinatorial chemistryA priori and a posterioriChemical spaceArylBiochemical engineeringBayesian probabilityIridiumDrug discoveryOrganic chemistryComputer scienceArtificial intelligenceEpistemologyEngineeringPhilosophyAlkylBiochemistryRadical Photochemical ReactionsMachine Learning in Materials ScienceAdvanced Photocatalysis Techniques
Sequential closed-loop Bayesian optimization as a guide for organic molecular metallophotocatalyst formulation discovery | Litcius