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Enhancing chemical synthesis: a two-stage deep neural network for predicting feasible reaction conditions
by
Chen, Lung-Yi
, Li, Yi-Pei
in
Artificial neural networks
/ Chemical reactions
/ Chemical research
/ Chemical synthesis
/ Chemical tests and reagents
/ Chemistry
/ Chemistry and Materials Science
/ Classification
/ Computational Biology/Bioinformatics
/ Computer Applications in Chemistry
/ Data augmentation
/ Deep learning
/ Documentation and Information in Chemistry
/ Labels
/ Machine learning
/ Multi-label classification
/ Multi-task modeling
/ Neural networks
/ Ranking
/ Rankings
/ Reaction condition
/ Reagents
/ Recommendation system
/ Solvents
/ Theoretical and Computational Chemistry
2024
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Enhancing chemical synthesis: a two-stage deep neural network for predicting feasible reaction conditions
by
Chen, Lung-Yi
, Li, Yi-Pei
in
Artificial neural networks
/ Chemical reactions
/ Chemical research
/ Chemical synthesis
/ Chemical tests and reagents
/ Chemistry
/ Chemistry and Materials Science
/ Classification
/ Computational Biology/Bioinformatics
/ Computer Applications in Chemistry
/ Data augmentation
/ Deep learning
/ Documentation and Information in Chemistry
/ Labels
/ Machine learning
/ Multi-label classification
/ Multi-task modeling
/ Neural networks
/ Ranking
/ Rankings
/ Reaction condition
/ Reagents
/ Recommendation system
/ Solvents
/ Theoretical and Computational Chemistry
2024
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Do you wish to request the book?
Enhancing chemical synthesis: a two-stage deep neural network for predicting feasible reaction conditions
by
Chen, Lung-Yi
, Li, Yi-Pei
in
Artificial neural networks
/ Chemical reactions
/ Chemical research
/ Chemical synthesis
/ Chemical tests and reagents
/ Chemistry
/ Chemistry and Materials Science
/ Classification
/ Computational Biology/Bioinformatics
/ Computer Applications in Chemistry
/ Data augmentation
/ Deep learning
/ Documentation and Information in Chemistry
/ Labels
/ Machine learning
/ Multi-label classification
/ Multi-task modeling
/ Neural networks
/ Ranking
/ Rankings
/ Reaction condition
/ Reagents
/ Recommendation system
/ Solvents
/ Theoretical and Computational Chemistry
2024
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Enhancing chemical synthesis: a two-stage deep neural network for predicting feasible reaction conditions
Journal Article
Enhancing chemical synthesis: a two-stage deep neural network for predicting feasible reaction conditions
2024
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Overview
In the field of chemical synthesis planning, the accurate recommendation of reaction conditions is essential for achieving successful outcomes. This work introduces an innovative deep learning approach designed to address the complex task of predicting appropriate reagents, solvents, and reaction temperatures for chemical reactions. Our proposed methodology combines a multi-label classification model with a ranking model to offer tailored reaction condition recommendations based on relevance scores derived from anticipated product yields. To tackle the challenge of limited data for unfavorable reaction contexts, we employed the technique of hard negative sampling to generate reaction conditions that might be mistakenly classified as suitable, forcing the model to refine its decision boundaries, especially in challenging cases. Our developed model excels in proposing conditions where an exact match to the recorded solvents and reagents is found within the top-10 predictions 73% of the time. It also predicts temperatures within ± 20 °
C
of the recorded temperature in 89% of test cases. Notably, the model demonstrates its capacity to recommend multiple viable reaction conditions, with accuracy varying based on the availability of condition records associated with each reaction. What sets this model apart is its ability to suggest alternative reaction conditions beyond the constraints of the dataset. This underscores its potential to inspire innovative approaches in chemical research, presenting a compelling opportunity for advancing chemical synthesis planning and elevating the field of reaction engineering.
Scientific contribution
The combination of multi-label classification and ranking models provides tailored recommendations for reaction conditions based on the reaction yields. A novel approach is presented to address the issue of data scarcity in negative reaction conditions through data augmentation.
Graphical Abstract
Publisher
Springer International Publishing,BioMed Central Ltd,Springer Nature B.V,BMC
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