Issue 21, 2024

Selective recognition between aromatics and aliphatics by cage-shaped borates supported by a machine learning approach

Abstract

Selective recognition between hydrocarbon moieties is a longstanding issue. Although we developed a π-pocket Lewis acid catalyst with high selectivity for aromatic aldehydes over aliphatic ones, a general strategy for catalyst design remains elusive. As an approach that transfers the molecular recognition based on multiple cooperative non-covalent interactions within the π-pocket to a rational catalyst design, herein, we demonstrate Lewis acid catalysts showing improved selectivity through the support of an ensemble algorithm with random forest, Ada Boost, and XG Boost as a machine learning (ML) approach. Using 7963 explanatory variables extracted from model hetero-Diels–Alder reactions, the ensemble algorithm predicted the chemoselectivity of unlearned catalysts. Experiments confirmed the prediction. The proposed catalyst shows the highest selective recognition, reminiscing enzymatic catalytic activity. Additionally, a SHapley Additive exPlanations (SHAP) method suggested that the selectivity originates from the polarizability and three-dimensional size of the catalyst. This insight leads to rational design guidelines for Lewis acid catalysts with dispersion forces.

Graphical abstract: Selective recognition between aromatics and aliphatics by cage-shaped borates supported by a machine learning approach

Supplementary files

Article information

Article type
Paper
Submitted
13 Mar 2024
Accepted
03 Apr 2024
First published
05 Apr 2024
This article is Open Access
Creative Commons BY-NC license

Org. Biomol. Chem., 2024,22, 4283-4291

Selective recognition between aromatics and aliphatics by cage-shaped borates supported by a machine learning approach

Y. Tsutsui, I. Yanaka, K. Takeda, M. Kondo, S. Takizawa, R. Kojima, A. Konishi and M. Yasuda, Org. Biomol. Chem., 2024, 22, 4283 DOI: 10.1039/D4OB00408F

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