Transferrable selectivity profiles enable prediction in synergistic catalyst space.
Yutao KuangJunshan LaiJolene P ReidPublished in: Chemical science (2023)
Organometallic intermediates participate in many multi-catalytic enantioselective transformations directed by a chiral catalyst, but the requirement of optimizing two catalyst components is a significant barrier to widely adopting this approach for chiral molecule synthesis. Algorithms can potentially accelerate the screening process by developing quantitative structure-function relationships from large experimental datasets. However, the chemical data available in this catalyst space is limited. Herein, we report a data-driven strategy that effectively translates selectivity relationships trained on enantioselectivity outcomes derived from one catalyst reaction systems where an abundance of data exists, to synergistic catalyst space. We describe three case studies involving different modes of catalysis (Brønsted acid, chiral anion, and secondary amine) that substantiate the prospect of this approach to predict and elucidate selectivity in reactions where more than one catalyst is involved. Ultimately, the success in applying our approach to diverse areas of asymmetric catalysis implies that this general workflow should find broad use in the study and development of new enantioselective, multi-catalytic processes.
Keyphrases
- ionic liquid
- room temperature
- visible light
- reduced graphene oxide
- highly efficient
- carbon dioxide
- metal organic framework
- electronic health record
- machine learning
- gold nanoparticles
- big data
- capillary electrophoresis
- microbial community
- adipose tissue
- high resolution
- body composition
- resistance training
- rna seq
- drug delivery
- high intensity
- artificial intelligence
- single cell