Form of presentation | Conference proceedings in international journals and collections |
Year of publication | 2020 |
Язык | русский |
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Afonina Valentina Aleksandrovna, author
Varnek Aleksandr , author
Lin Arkadiy Igorevich, author
Madzhidov Timur Ismailovich, author
Mazitov Daniyar Amirovich, author
Nugmanov Ramil Irekovich, author
Skibina Yuliya Dmitrievna, author
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Akhmetshin Tagir Nailevich, author
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Bibliographic description in the original language |
Madzhidov T.I. Deep conditional variational autoencoder for reaction conditions prediction / T.I.Madzhidov, D.A. Mazitov, V.A. Afonina, T.N. Akhmetshin, J.D. Skibina, A.I. Lin, R.I. Nugmanov, A. Varnek // 3rd RSC-BMCS/RSC-CICAG Artificial Intelligence in Chemistry. - London, 2020. - P. 55.
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Annotation |
3rd RSC-BMCS/RSC-CICAG Artificial Intelligence in Chemistry |
Keywords |
хемоинформатика, искусственный интеллект, предсказание условий, информатика реакций |
The name of the journal |
3rd RSC-BMCS/RSC-CICAG Artificial Intelligence in Chemistry
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Please use this ID to quote from or refer to the card |
https://repository.kpfu.ru/eng/?p_id=258451&p_lang=2 |
Resource files | |
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Full metadata record |
Field DC |
Value |
Language |
dc.contributor.author |
Afonina Valentina Aleksandrovna |
ru_RU |
dc.contributor.author |
Varnek Aleksandr |
ru_RU |
dc.contributor.author |
Lin Arkadiy Igorevich |
ru_RU |
dc.contributor.author |
Madzhidov Timur Ismailovich |
ru_RU |
dc.contributor.author |
Mazitov Daniyar Amirovich |
ru_RU |
dc.contributor.author |
Nugmanov Ramil Irekovich |
ru_RU |
dc.contributor.author |
Skibina Yuliya Dmitrievna |
ru_RU |
dc.contributor.author |
Akhmetshin Tagir Nailevich |
ru_RU |
dc.date.accessioned |
2020-01-01T00:00:00Z |
ru_RU |
dc.date.available |
2020-01-01T00:00:00Z |
ru_RU |
dc.date.issued |
2020 |
ru_RU |
dc.identifier.citation |
Madzhidov T.I. Deep conditional variational autoencoder for reaction conditions prediction / T.I.Madzhidov, D.A. Mazitov, V.A. Afonina, T.N. Akhmetshin, J.D. Skibina, A.I. Lin, R.I. Nugmanov, A. Varnek // 3rd RSC-BMCS/RSC-CICAG Artificial Intelligence in Chemistry. - London, 2020. - P. 55.
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ru_RU |
dc.identifier.uri |
https://repository.kpfu.ru/eng/?p_id=258451&p_lang=2 |
ru_RU |
dc.description.abstract |
3rd RSC-BMCS/RSC-CICAG Artificial Intelligence in Chemistry |
ru_RU |
dc.description.abstract |
Synthesis planning domain has a second birthday after seminal paper of Segler et al.1 who proposed AI-powered technology for retrosynthetic route prediction. However, selection of optimal conditions for every reaction in synthetic route is almost as challenging and as important as prediction of the route itself. The main complication in prediction of optimal conditions are absence of negative examples, very large condition space, voids in reaction-condition matrix (all possible conditions for given reaction are unavailable). For some reactions, conditions are well-studied and documented, but for the other selection of conditions could be tricky and requires good knowledge and experience of chemists.
Here, we propose an approach based on deep neural networks that predicts combination of catalyst-reagent-temperature-pressure best suited for a particular reaction. Unlike existing approaches2,3, here we do not rank possible conditions based on some technique but directly sample them using conditional variational autoencoder. Training and test sets comprised of hydrogenation reactions from Reaxys database, two datasets are collected: “small” consisting from 38K with limited set of conditions and “big” one including 196K reactions with vast variety of conditions. Three different latent distributions were compared, namely Gaussian (g-CVAE), Riemannian Normalizing Flow (mf-CVAE) and Hyperspherical Uniform (h-CVAE) distributions.
Proposed approaches were shown superior performance to null model, which predicts conditions based on their popularity in training data, as well as over nearest-neighbor approach (KNN). The latter ranks possible conditions based on the similarity of corresponding reactions to a given one. For hydrogenation reactions, previously proposed approach of Gao et al.2 have shown mediocre performance
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ru_RU |
dc.language.iso |
ru |
ru_RU |
dc.subject |
хемоинформатика |
ru_RU |
dc.subject |
искусственный интеллект |
ru_RU |
dc.subject |
предсказание условий |
ru_RU |
dc.subject |
информатика реакций |
ru_RU |
dc.title |
Deep conditional variational autoencoder for reaction conditions prediction |
ru_RU |
dc.type |
Conference proceedings in international journals and collections |
ru_RU |
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