Machine Learning-Guided Computational Screening of New Candidate Reactions with High Bioorthogonal Click Potential

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Abstract

Bioorthogonal click chemistry has become an indispensable part of the biochemist's toolbox. Despite the wide variety of applications that have been developed in recent years, only a limited number of bioorthogonal click reactions have been discovered so far, most of them based on (substituted) azides. In this work, we present a computational workflow to discover new candidate reactions with promising kinetic and thermodynamic properties for bioorthogonal click applications. Sampling only around 0.05 % of an overall search space of over 10,000,000 dipolar cycloadditions, we develop a machine learning model able to predict DFT-computed activation and reaction energies within ∼2–3 kcal/mol across the entire space. Applying this model to screen the full search space through iterative rounds of learning, we identify a broad pool of candidate reactions with rich structural diversity, which can be used as a starting point or source of inspiration for future experimental development of both azide-based and non-azide-based bioorthogonal click reactions.

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Stuyver, T., & Coley, C. W. (2023). Machine Learning-Guided Computational Screening of New Candidate Reactions with High Bioorthogonal Click Potential. Chemistry - A European Journal, 29(28). https://doi.org/10.1002/chem.202300387

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