通过高通量工具和机器学习优化有机合成的新趋势。

IF 2.2 4区 化学 Q2 CHEMISTRY, ORGANIC Beilstein Journal of Organic Chemistry Pub Date : 2025-01-06 eCollection Date: 2025-01-01 DOI:10.3762/bjoc.21.3
Pablo Quijano Velasco, Kedar Hippalgaonkar, Balamurugan Ramalingam
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引用次数: 0

摘要

发现化学反应的最佳条件是一项劳动密集、耗时的任务,需要探索高维参数空间。从历史上看,化学反应的优化一直是由人类直觉指导的人工实验和通过实验设计来完成的,其中每次修改一个反应变量,以找到特定反应结果的最佳条件。最近,由于实验室自动化的进步和机器学习算法的引入,化学反应优化的范式发生了变化。其中,多个反应变量可同步优化,获得最优反应条件,实验时间短,人为干预少。在此,我们回顾了目前使用的最先进的高通量自动化化学反应平台和机器学习算法,这些算法驱动化学反应的优化,突出了这一新研究领域的局限性和未来的机会。
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Emerging trends in the optimization of organic synthesis through high-throughput tools and machine learning.

The discovery of the optimal conditions for chemical reactions is a labor-intensive, time-consuming task that requires exploring a high-dimensional parametric space. Historically, the optimization of chemical reactions has been performed by manual experimentation guided by human intuition and through the design of experiments where reaction variables are modified one at a time to find the optimal conditions for a specific reaction outcome. Recently, a paradigm change in chemical reaction optimization has been enabled by advances in lab automation and the introduction of machine learning algorithms. Therein, multiple reaction variables can be synchronously optimized to obtain the optimal reaction conditions, requiring a shorter experimentation time and minimal human intervention. Herein, we review the currently used state-of-the-art high-throughput automated chemical reaction platforms and machine learning algorithms that drive the optimization of chemical reactions, highlighting the limitations and future opportunities of this new field of research.

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来源期刊
CiteScore
4.90
自引率
3.70%
发文量
167
审稿时长
1.4 months
期刊介绍: The Beilstein Journal of Organic Chemistry is an international, peer-reviewed, Open Access journal. It provides a unique platform for rapid publication without any charges (free for author and reader) – Platinum Open Access. The content is freely accessible 365 days a year to any user worldwide. Articles are available online immediately upon publication and are publicly archived in all major repositories. In addition, it provides a platform for publishing thematic issues (theme-based collections of articles) on topical issues in organic chemistry. The journal publishes high quality research and reviews in all areas of organic chemistry, including organic synthesis, organic reactions, natural product chemistry, structural investigations, supramolecular chemistry and chemical biology.
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