2022 Annual Meeting
(565b) Molecular Discovery with Limited Human Input Using a Machine Learning Guided Automated Platform
Authors
This talk will focus on efforts to improve automation to enable the entire discovery cycleâinitial explorative target selection, synthesis, characterization, model refining/retraining, and best-performer synthesisâto be executed with limited human interaction. Liquid handling, reaction optimization, air-free synthesis, high-temperature synthesis, workup, and isolation, all in a well plate format, have been automated and interfaced to the ML models. This combined approach to small molecule exploration, where several properties are optimized automatically and simultaneously, could allow medicinal chemists to focus on scaffold/family discovery rather than more tedious scoping experiments. If evaluation of whole families of compounds were entirely automated, more effort could be applied to identifying targets for small molecule drugs.
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