In-silico-assisted derivatization of triarylboranes for the catalytic reductive functionalization of aniline-derived amino acids and peptides with H2

Nat Commun. 2024 May 7;15(1):3708. doi: 10.1038/s41467-024-47984-0.

Abstract

Cheminformatics-based machine learning (ML) has been employed to determine optimal reaction conditions, including catalyst structures, in the field of synthetic chemistry. However, such ML-focused strategies have remained largely unexplored in the context of catalytic molecular transformations using Lewis-acidic main-group elements, probably due to the absence of a candidate library and effective guidelines (parameters) for the prediction of the activity of main-group elements. Here, the construction of a triarylborane library and its application to an ML-assisted approach for the catalytic reductive alkylation of aniline-derived amino acids and C-terminal-protected peptides with aldehydes and H2 is reported. A combined theoretical and experimental approach identified the optimal borane, i.e., B(2,3,5,6-Cl4-C6H)(2,6-F2-3,5-(CF3)2-C6H)2, which exhibits remarkable functional-group compatibility toward aniline derivatives in the presence of 4-methyltetrahydropyran. The present catalytic system generates H2O as the sole byproduct.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Alkylation
  • Amino Acids* / chemistry
  • Aniline Compounds* / chemistry
  • Boranes* / chemistry
  • Catalysis
  • Computer Simulation
  • Hydrogen / chemistry
  • Machine Learning
  • Oxidation-Reduction
  • Peptides* / chemistry

Substances

  • Aniline Compounds
  • Amino Acids
  • Peptides
  • Boranes
  • aniline
  • Hydrogen