Machine‐Learning Classification for the Prediction of Catalytic Activity of Organic Photosensitizers in the Nickel(II)‐Salt‐Induced Synthesis of Phenols

Author:

Noto Naoki1ORCID,Yada Akira2ORCID,Yanai Takeshi3ORCID,Saito Susumu4ORCID

Affiliation:

1. Integrated Research Consortium on Chemical Sciences (IRCCS) Nagoya University Nagoya Aichi 464-8602 Japan

2. Interdisciplinary Research Center for Catalytic Chemistry National Institute of Advanced Industrial Science and Technology (AIST) 1-1-1 Higashi Tsukuba Ibaraki 305-8565 Japan

3. Institute of Transformative Bio-Molecules (WPI-ITbM) and Graduate School of Science Nagoya University Nagoya Aichi 464-8602 Japan

4. Integrated Research Consortium on Chemical Sciences (IRCCS) and Graduate School of Science Nagoya University Nagoya Aichi 464-8602 Japan

Abstract

AbstractCatalytic systems using a small amount of organic photosensitizer for the activation of an inorganic (on‐demand ligand‐free) nickel(II) salt represent a cost‐effective method for cross‐coupling reactions, while C(sp2)−O bond formation remains less developed. Herein, we report a strategy for the synthesis of phenols with a nickel(II) salt and an organic photosensitizer, which was identified via an investigation into the catalytic activity of 60 organic photosensitizers consisting of various electron donor and acceptor moieties. To examine the effect of multiple intractable parameters on the catalytic activity of photosensitizers, machine‐learning (ML) models were developed, wherein we embedded descriptors representing their physical and structural properties, which were obtained from DFT calculations and RDKit, respectively. The study clarified that integrating both DFT‐ and RDKit‐derived descriptors in ML models balances higher “precision” and “recall” across a wide range of search space relative to using only one of the two descriptor sets.

Funder

Asahi Glass Foundation

National Institutes of Natural Sciences

Core Research for Evolutional Science and Technology

Publisher

Wiley

Subject

General Medicine

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