Literature DB >> 28024398

What's What: The (Nearly) Definitive Guide to Reaction Role Assignment.

Nadine Schneider1, Nikolaus Stiefl1, Gregory A Landrum2.   

Abstract

When analyzing chemical reactions it is essential to know which molecules are actively involved in the reaction and which educts will form the product molecules. Assigning reaction roles, like reactant, reagent, or product, to the molecules of a chemical reaction might be a trivial problem for hand-curated reaction schemes but it is more difficult to automate, an essential step when handling large amounts of reaction data. Here, we describe a new fingerprint-based and data-driven approach to assign reaction roles which is also applicable to rather unbalanced and noisy reaction schemes. Given a set of molecules involved and knowing the product(s) of a reaction we assign the most probable reactants and sort out the remaining reagents. Our approach was validated using two different data sets: one hand-curated data set comprising about 680 diverse reactions extracted from patents which span more than 200 different reaction types and include up to 18 different reactants. A second set consists of 50 000 randomly picked reactions from US patents. The results of the second data set were compared to results obtained using two different atom-to-atom mapping algorithms. For both data sets our method assigns the reaction roles correctly for the vast majority of the reactions, achieving an accuracy of 88% and 97% respectively. The median time needed, about 8 ms, indicates that the algorithm is fast enough to be applied to large collections. The new method is available as part of the RDKit toolkit and the data sets and Jupyter notebooks used for evaluation of the new method are available in the Supporting Information of this publication.

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Year:  2016        PMID: 28024398     DOI: 10.1021/acs.jcim.6b00564

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  18 in total

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2.  Unified Deep Learning Model for Multitask Reaction Predictions with Explanation.

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Journal:  J Chem Inf Model       Date:  2022-03-10       Impact factor: 4.956

3.  Improving the performance of models for one-step retrosynthesis through re-ranking.

Authors:  Min Htoo Lin; Zhengkai Tu; Connor W Coley
Journal:  J Cheminform       Date:  2022-03-15       Impact factor: 5.514

4.  What Does the Machine Learn? Knowledge Representations of Chemical Reactivity.

Authors:  Joshua A Kammeraad; Jack Goetz; Eric A Walker; Ambuj Tewari; Paul M Zimmerman
Journal:  J Chem Inf Model       Date:  2020-03-03       Impact factor: 4.956

5.  Inferring experimental procedures from text-based representations of chemical reactions.

Authors:  Alain C Vaucher; Philippe Schwaller; Joppe Geluykens; Vishnu H Nair; Anna Iuliano; Teodoro Laino
Journal:  Nat Commun       Date:  2021-05-06       Impact factor: 14.919

6.  Computer-Assisted Retrosynthesis Based on Molecular Similarity.

Authors:  Connor W Coley; Luke Rogers; William H Green; Klavs F Jensen
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Review 7.  Computational Chemical Synthesis Analysis and Pathway Design.

Authors:  Fan Feng; Luhua Lai; Jianfeng Pei
Journal:  Front Chem       Date:  2018-06-05       Impact factor: 5.221

8.  Transfer Learning: Making Retrosynthetic Predictions Based on a Small Chemical Reaction Dataset Scale to a New Level.

Authors:  Renren Bai; Chengyun Zhang; Ling Wang; Chuansheng Yao; Jiamin Ge; Hongliang Duan
Journal:  Molecules       Date:  2020-05-19       Impact factor: 4.411

9.  Automatic mapping of atoms across both simple and complex chemical reactions.

Authors:  Wojciech Jaworski; Sara Szymkuć; Barbara Mikulak-Klucznik; Krzysztof Piecuch; Tomasz Klucznik; Michał Kaźmierowski; Jan Rydzewski; Anna Gambin; Bartosz A Grzybowski
Journal:  Nat Commun       Date:  2019-03-29       Impact factor: 14.919

10.  Retrosynthetic Reaction Prediction Using Neural Sequence-to-Sequence Models.

Authors:  Bowen Liu; Bharath Ramsundar; Prasad Kawthekar; Jade Shi; Joseph Gomes; Quang Luu Nguyen; Stephen Ho; Jack Sloane; Paul Wender; Vijay Pande
Journal:  ACS Cent Sci       Date:  2017-09-05       Impact factor: 18.728

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