Integration of C-Acylation in the Solid-Phase Synthesis of Peptides and Peptidomimetics Employing Meldrum’s Acid, Phosphorus and Sulfur Ylides
Synthesis(2021)
Quaid I Azam Univ
Abstract
The modification of native peptides to peptidomimetics is an important goal in medicinal chemistry and requires, in many cases, the integration of C-acylation steps involving amino acids with classical peptide synthesis. Many classical C-acylation protocols involving C-laisen condensations and the use of ylides are not compatible with peptide synthesis, mostly due to the requirements for strong bases leading to epimerization or deprotection of peptides. Meldrum's acid as well as several specific phosphorus and sulfur ylides, however, are acidic enough to provide reactive C-nucleophiles under mildly basic conditions tolerated during peptide synthesis. This review provides an overview of peptide-compatible C-acylations using Meldrum's acid and phosphorus and sulfur ylides, and their application in the medicinal chemistry of peptides.
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Key words
C-acylation,peptidomimetics,Meldrum's acid,phosphorus ylides,sulfur ylides,peptides
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