Sciact
  • EN
  • RU

Reaction Discovery Involving Digital co‐Expert with a Practical Application in Atom‐Economic Cycloaddition Научная публикация

Журнал Angewandte Chemie International Edition
ISSN: 1433-7851 , E-ISSN: 1521-3773
Вых. Данные Год: 2026, Том: 138, Номер: 11, Номер статьи : e23905, Страниц : DOI: 10.1002/ange.202523905
Ключевые слова Computational chemistry, Cycloaddition, Digital co-expert, Machine learning, Reaction discovery
Авторы Kolomoets Nikita I. 1 , Boiko Daniil A. 1 , Romashov Leonid V. 1 , Kozlov Kirill S. 1 , Gordeev Evgeniy G. 1 , Galushko Alexey S. 1 , Ananikov Valentine P. 1
Организации
1 Zelinsky Institute of Organic Chemistry Russian Academy of Sciences Leninsky Prospekt 47 Moscow 119991 Russia

Реферат: The discovery of new chemical transformations is central to advancing modern chemistry, yet conventional approaches often require months or years of extensive experimental screening. Here, we present a machine-learning-assisted and expert-guided pipeline for reaction discovery applied to the search for atom-economic cycloaddition reactions. Candidate reactions were generated from publicly available quantum chemical data, filtered through unsupervised machine learning, and clustered to reduce redundancy. A digital co-expert then enabled rapid prioritization, after which human expertise provided final selection and experimental validation. This hybrid workflow is fully compatible with current laboratory infrastructure and addresses the most time-consuming stage of reaction discovery, accelerating the expert screening bottleneck by approximately 180-fold (from > 1200 days to 7 days). Within ∼1 week, two novel cycloaddition reactions were identified and experimentally confirmed, yielding previously undescribed products. While fully autonomous robotic platforms represent a long-term vision, their high cost and limited availability restrict immediate application. In contrast, our approach demonstrates the practicality of human-AI collaboration for reaction discovery, combining computational screening, machine learning and expert knowledge to efficiently expand the accessible chemical space.
Библиографическая ссылка: Kolomoets N.I. , Boiko D.A. , Romashov L.V. , Kozlov K.S. , Gordeev E.G. , Galushko A.S. , Ananikov V.P.
Reaction Discovery Involving Digital co‐Expert with a Practical Application in Atom‐Economic Cycloaddition
Angewandte Chemie International Edition. 2026. V.138. N11. e23905 . DOI: 10.1002/ange.202523905 OpenAlex
Даты:
Поступила в редакцию: 30 окт. 2025 г.
Принята к публикации: 6 янв. 2026 г.
Опубликована online: 9 мар. 2026 г.
Идентификаторы БД:
≡ OpenAlex: W7127054696
Альметрики: