Computational tools for the prediction of site- and regioselectivity of organic reactions

IF 7.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Lukas M. Sigmund, Michele Assante, Magnus J. Johansson, Per-Ola Norrby, Kjell Jorner and Mikhail Kabeshov
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Abstract

The regio- and site-selectivity of organic reactions is one of the most important aspects when it comes to synthesis planning. Due to that, massive research efforts were invested into computational models for regio- and site-selectivity prediction, and the introduction of machine learning to the chemical sciences within the past decade has added a whole new dimension to these endeavors. This review article walks through the currently available predictive tools for regio- and site-selectivity with a particular focus on machine learning models while being organized along the individual reaction classes of organic chemistry. Respective featurization techniques and model architectures are described and compared to each other; applications of the tools to critical real-world examples are highlighted. This paper aims to serve as an overview of the field's status quo for both the intended users of the tools, that is synthetic chemists, as well as for developers to find potential new research avenues.

Abstract Image

预测有机反应位置和区域选择性的计算工具
有机反应的区域选择性和位点选择性是合成规划中最重要的方面之一。因此,大量的研究工作投入到区域和位点选择性预测的计算模型中,并且在过去十年中将机器学习引入化学科学为这些努力增加了一个全新的维度。这篇综述文章回顾了目前可用的区域和位点选择性预测工具,特别关注机器学习模型,同时沿着有机化学的单个反应类别进行组织。对各自的特征化技术和模型体系结构进行了描述和比较;重点介绍了这些工具在关键的现实世界示例中的应用。本文旨在为这些工具的预期用户(即合成化学家)以及开发人员寻找潜在的新研究途径提供该领域现状的概述。
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来源期刊
Chemical Science
Chemical Science CHEMISTRY, MULTIDISCIPLINARY-
CiteScore
14.40
自引率
4.80%
发文量
1352
审稿时长
2.1 months
期刊介绍: Chemical Science is a journal that encompasses various disciplines within the chemical sciences. Its scope includes publishing ground-breaking research with significant implications for its respective field, as well as appealing to a wider audience in related areas. To be considered for publication, articles must showcase innovative and original advances in their field of study and be presented in a manner that is understandable to scientists from diverse backgrounds. However, the journal generally does not publish highly specialized research.
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