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Scaffold‐Directed Face Selectivity Machine‐Learned from Vectors of Non‐covalent Interactions

Martyna Moskal, Wiktor Beker, Sara Szymkuć, Bartosz A. Grzybowski

2021Angewandte Chemie15 citationsDOIOpen Access PDF

Abstract

This work describes a method to vectorize and Machine-Learn, ML, non-covalent interactions responsible for scaffold-directed reactions important in synthetic chemistry. Models trained on this representation predict correct face of approach in ca. 90 % of Michael additions or Diels-Alder cycloadditions. These accuracies are significantly higher than those based on traditional ML descriptors, energetic calculations, or intuition of experienced synthetic chemists. Our results also emphasize the importance of ML models being provided with relevant mechanistic knowledge; without such knowledge, these models cannot easily "transfer-learn" and extrapolate to previously unseen reaction mechanisms.

Topics & Concepts

IntuitionScaffoldComputer scienceCovalent bondMachine learningArtificial intelligenceChemistrySelectivityCombinatorial chemistryCognitive scienceOrganic chemistryProgramming languagePsychologyCatalysisMachine Learning in Materials ScienceComputational Drug Discovery MethodsChemical Synthesis and Analysis
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