Schmid Stefan P, Schlosser Leon, Glorius Frank, Jorner Kjell
Institute of Chemical and Bioengineering, Department of Chemistry and Applied Biosciences, ETH Zurich, Zurich CH-8093, Switzerland.
Organisch-Chemisches Institut, Universität Münster, 48149 Münster, Germany.
Beilstein J Org Chem. 2024 Sep 10;20:2280-2304. doi: 10.3762/bjoc.20.196. eCollection 2024.
Organocatalysis has established itself as a third pillar of homogeneous catalysis, besides transition metal catalysis and biocatalysis, as its use for enantioselective reactions has gathered significant interest over the last decades. Concurrent to this development, machine learning (ML) has been increasingly applied in the chemical domain to efficiently uncover hidden patterns in data and accelerate scientific discovery. While the uptake of ML in organocatalysis has been comparably slow, the last two decades have showed an increased interest from the community. This review gives an overview of the work in the field of ML in organocatalysis. The review starts by giving a short primer on ML for experimental chemists, before discussing its application for predicting the selectivity of organocatalytic transformations. Subsequently, we review ML employed for privileged catalysts, before focusing on its application for catalyst and reaction design. Concluding, we give our view on current challenges and future directions for this field, drawing inspiration from the application of ML to other scientific domains.
有机催化已成为均相催化的第三大支柱,仅次于过渡金属催化和生物催化,因为在过去几十年中,其在对映选择性反应中的应用引起了广泛关注。与此同时,机器学习(ML)已越来越多地应用于化学领域,以有效地发现数据中的隐藏模式并加速科学发现。虽然机器学习在有机催化中的应用相对较慢,但在过去二十年中,该领域的关注度有所增加。本文综述了有机催化中机器学习领域的工作。综述首先为实验化学家提供了关于机器学习的简短入门知识,然后讨论了其在预测有机催化转化选择性方面的应用。随后,我们回顾了用于特殊催化剂的机器学习,然后重点讨论其在催化剂和反应设计中的应用。最后,我们借鉴机器学习在其他科学领域的应用,对该领域当前的挑战和未来方向发表了看法。