Machine learnt patterns in rhodium-catalysed asymmetric Michael addition using chiral diene ligands

Interpretable featurisation allows Quantitative Structure-Property Relationships (QSPR) between chiral diene ligand structures and product stereoselectivities in rhodium-catalysed asymmetric Michael additions (RhCASA). The machine learning approach developed herein is simple to implement yet provide...

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Bibliographic Details
Main Authors: Benjamin Owen, Katherine Wheelhouse, Grazziela Figueredo, Ender Özcan, Simon Woodward
Format: Article
Language:English
Published: Elsevier 2022-01-01
Series:Results in Chemistry
Online Access:http://www.sciencedirect.com/science/article/pii/S2211715622000984
Description
Summary:Interpretable featurisation allows Quantitative Structure-Property Relationships (QSPR) between chiral diene ligand structures and product stereoselectivities in rhodium-catalysed asymmetric Michael additions (RhCASA). The machine learning approach developed herein is simple to implement yet provides instructive insights and useful predictions (q2/R2 0.7–0.8). These simple interpretable features are found to give comparable predictive ability to both commercial (Dragon) and molecular signature descriptor library approaches. Strong insights into the specific areas of the chiral diene ligand that engender improved RhCASA process enantioselectivity are achieved. These were more interpretable, to synthetic chemists, than existing ML approaches, greatly facilitating design of new chiral diene-ligands.
ISSN:2211-7156