Ricardo Moreira Borges

2papers

2 Papers

CHEM-PHNov 6, 2022
Direct deduction of chemical class from NMR spectra

Stefan Kuhn, Carlos Cobas, Agustin Barba et al.

This paper presents a proof-of-concept method for classifying chemical compounds directly from NMR data without doing structure elucidation. This can help to reduce 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. Therefore, for a long time automation in the area of NMR has been actively sought. The method identified as suitable for the classification is a convolutional neural network (CNN). Other methods, including clustering and image registration, have not been found suitable for the task in a comparative analysis. The result shows that deep learning can offer solutions to automation problems in cheminformatics.

QMMar 18, 2021
A Pilot Study For Fragment Identification Using 2D NMR and Deep Learning

Stefan Kuhn, Eda Tumer, Simon Colreavy-Donnelly et al.

This paper presents a method to identify substructures in NMR spectra of mixtures, specifically 2D spectra, using a bespoke image-based Convolutional Neural Network application. This is done using HSQC and HMBC spectra separately and in combination. The application can reliably detect substructures in pure compounds, using a simple network. It can work for mixtures when trained on pure compounds only. HMBC data and the combination of HMBC and HSQC show better results than HSQC alone.