| Literature DB >> 34226703 |
Kevin Maik Jablonka1, Daniele Ongari1, Seyed Mohamad Moosavi1, Berend Smit2.
Abstract
Knowledge of the oxidation state of metal centres in compounds and materials helps in the understanding of their chemical bonding and properties. Chemists have developed theories to predict oxidation states based on electron-counting rules, but these can fail to describe oxidation states in extended crystalline systems such as metal-organic frameworks. Here we propose the use of a machine-learning model, trained on assignments by chemists encoded in the chemical names in the Cambridge Structural Database, to automatically assign oxidation states to the metal ions in metal-organic frameworks. In our approach, only the immediate local environment around a metal centre is considered. We show that the strategy is robust to experimental uncertainties such as incorrect protonation, unbound solvents or changes in bond length. This method gives good accuracy and we show that it can be used to detect incorrect assignments in the Cambridge Structural Database, illustrating how collective knowledge can be captured by machine learning and converted into a useful tool.Entities:
Year: 2021 PMID: 34226703 DOI: 10.1038/s41557-021-00717-y
Source DB: PubMed Journal: Nat Chem ISSN: 1755-4330 Impact factor: 24.427