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Synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation

Understanding and controlling molecular recognition mechanisms at a chiral solid interface is a continuously addressed challenge in heterogeneous catalysis. Here, the molecular recognition of a chiral peptide-functionalized metal–organic framework (MOF) catalyst towards a pro-chiral substrate is eva...

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Autores principales: Canivet, Jérôme, Bernoud, Elise, Bonnefoy, Jonathan, Legrand, Alexandre, Todorova, Tanya K., Quadrelli, Elsje Alessandra, Mellot-Draznieks, Caroline
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8163446/
https://www.ncbi.nlm.nih.gov/pubmed/34123133
http://dx.doi.org/10.1039/d0sc03364b
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author Canivet, Jérôme
Bernoud, Elise
Bonnefoy, Jonathan
Legrand, Alexandre
Todorova, Tanya K.
Quadrelli, Elsje Alessandra
Mellot-Draznieks, Caroline
author_facet Canivet, Jérôme
Bernoud, Elise
Bonnefoy, Jonathan
Legrand, Alexandre
Todorova, Tanya K.
Quadrelli, Elsje Alessandra
Mellot-Draznieks, Caroline
author_sort Canivet, Jérôme
collection PubMed
description Understanding and controlling molecular recognition mechanisms at a chiral solid interface is a continuously addressed challenge in heterogeneous catalysis. Here, the molecular recognition of a chiral peptide-functionalized metal–organic framework (MOF) catalyst towards a pro-chiral substrate is evaluated experimentally and in silico. The MIL-101 metal–organic framework is used as a macroligand for hosting a Noyori-type chiral ruthenium molecular catalyst, namely (benzene)Ru@MIL-101-NH-Gly-Pro. Its catalytic perfomance toward the asymmetric transfer hydrogenation (ATH) of acetophenone into R- and S-phenylethanol are assessed. The excellent match between the experimentally obtained enantiomeric excesses and the computational outcomes provides a robust atomic-level rationale for the observed product selectivities. The unprecedented role of the MOF in confining the molecular Ru-catalyst and in determining the access of the prochiral substrate to the active site is revealed in terms of highly face-specific host–guest interactions. The predicted surface-specific face differentiation of the prochiral substrate is experimentally corroborated since a three-fold increase in enantiomeric excess is obtained with the heterogeneous MOF-based catalyst when compared to its homogeneous molecular counterpart.
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spelling pubmed-81634462021-06-11 Synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation Canivet, Jérôme Bernoud, Elise Bonnefoy, Jonathan Legrand, Alexandre Todorova, Tanya K. Quadrelli, Elsje Alessandra Mellot-Draznieks, Caroline Chem Sci Chemistry Understanding and controlling molecular recognition mechanisms at a chiral solid interface is a continuously addressed challenge in heterogeneous catalysis. Here, the molecular recognition of a chiral peptide-functionalized metal–organic framework (MOF) catalyst towards a pro-chiral substrate is evaluated experimentally and in silico. The MIL-101 metal–organic framework is used as a macroligand for hosting a Noyori-type chiral ruthenium molecular catalyst, namely (benzene)Ru@MIL-101-NH-Gly-Pro. Its catalytic perfomance toward the asymmetric transfer hydrogenation (ATH) of acetophenone into R- and S-phenylethanol are assessed. The excellent match between the experimentally obtained enantiomeric excesses and the computational outcomes provides a robust atomic-level rationale for the observed product selectivities. The unprecedented role of the MOF in confining the molecular Ru-catalyst and in determining the access of the prochiral substrate to the active site is revealed in terms of highly face-specific host–guest interactions. The predicted surface-specific face differentiation of the prochiral substrate is experimentally corroborated since a three-fold increase in enantiomeric excess is obtained with the heterogeneous MOF-based catalyst when compared to its homogeneous molecular counterpart. The Royal Society of Chemistry 2020-08-06 /pmc/articles/PMC8163446/ /pubmed/34123133 http://dx.doi.org/10.1039/d0sc03364b Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Canivet, Jérôme
Bernoud, Elise
Bonnefoy, Jonathan
Legrand, Alexandre
Todorova, Tanya K.
Quadrelli, Elsje Alessandra
Mellot-Draznieks, Caroline
Synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation
title Synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation
title_full Synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation
title_fullStr Synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation
title_full_unstemmed Synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation
title_short Synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation
title_sort synthetic and computational assessment of a chiral metal–organic framework catalyst for predictive asymmetric transformation
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8163446/
https://www.ncbi.nlm.nih.gov/pubmed/34123133
http://dx.doi.org/10.1039/d0sc03364b
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