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Direct deduction of chemical class from NMR spectra

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journal contribution
posted on 2023-02-15, 09:35 authored by Stefan Kuhn, Carlos Cobas, Agustin Barba, Simon Colreavy-DonnellySimon Colreavy-Donnelly, Fabio CaraffiniFabio Caraffini

This paper presents a proof-of-concept method for classifying chemical compounds directly from NMR data without performing structure elucidation. This can help to reduce the time in finding good structure candidates, as in most cases matching must be done by a human engineer, or at the very least a process for matching must be meaningfully interpreted by one. The method identified as suitable for classification is a convolutional neural network (CNN). Other methods, including clustering and image registration, have not been found to be suitable for the task in a comparative analysis. The result shows that deep learning can offer solutions to spectral interpretation problems. 

Funding

001_IN853D_2022.

History

Publication

Journal of Magnetic Resonance 348, 107381

Publisher

Elsevier

Other Funding information

Xunta de Galicia Galician Innovation Agency

Department or School

  • Computer Science & Information Systems

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