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Computational Screening of Putative Catalyst Transition Metal Complexes as Guests in a GaL Nanocage.

作者信息

Reinhardt Clorice R, Manetsch Melissa T, Li Wan-Lu, Román-Leshkov Yuriy, Head-Gordon Teresa, Kulik Heather J

机构信息

Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.

Department of Chemistry, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.

出版信息

Inorg Chem. 2024 Aug 5;63(31):14609-14622. doi: 10.1021/acs.inorgchem.4c02113. Epub 2024 Jul 24.

Abstract

Metal-organic cages form well-defined microenvironments that can enhance the catalytic proficiency of encapsulated transition metal complexes (TMCs). We introduce a screening protocol to efficiently identify TMCs that are promising candidates for encapsulation in the GaL nanocage. We obtain TMCs from the Cambridge Structural Database with geometric and electronic characteristics amenable to encapsulation and mine the text of associated manuscripts to curate TMCs with documented catalytic functionality. By docking candidate TMCs inside the nanocage cavity and carrying out electronic structure calculations, we identify a subset of successfully optimized candidates (TMC-34) and observe that encapsulated guests occupy an average of 60% of the cavity volume, in line with previous observations. Notably, some guests occupy as much as 72% of the cavity as a result of linker rotation. Encapsulation has a universal effect on the electrostatic potential (ESP), systematically decreasing the ESP at the metal center of each TMC in the TMC-34 data set, while minimally altering TMC metal partial charges. Collectively these observations support geometry-based screening of potential guests and suggest that encapsulation in GaL cages could electrostatically stabilize diverse cationic or electropositive intermediates. We highlight candidate guests with associated known reactivity and solubility most amenable for encapsulation in experimental follow-up studies.

摘要

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