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Deconvolution of 1D NMR spectra : a deep learning-based approach

Authors :
Schmid, N.
Bruderer, S.
Paruzzo, F.
Fischetti, G.
Toscano, G.
Graf, D.
Fey, M.
Henrici, A.
Ziebart, V.
Heitmann, B.
Grabner, H.
Wegner, J.D.
Sigel, R.K.O.
Wilhelm, D.
Schmid, N.
Bruderer, S.
Paruzzo, F.
Fischetti, G.
Toscano, G.
Graf, D.
Fey, M.
Henrici, A.
Ziebart, V.
Heitmann, B.
Grabner, H.
Wegner, J.D.
Sigel, R.K.O.
Wilhelm, D.
Publication Year :
2023

Abstract

The analysis of nuclear magnetic resonance (NMR) spectra to detect peaks and characterize their parameters, often referred to as deconvolution, is a crucial step in the quantification, elucidation, and verification of the structure of molecular systems. However, deconvolution of 1D NMR spectra is a challenge for both experts and machines. We propose a robust, expert-level quality deep learning-based deconvolution algorithm for 1D experimental NMR spectra. The algorithm is based on a neural network trained on synthetic spectra. Our customized pre-processing and labeling of the synthetic spectra enable the estimation of critical peak parameters. Furthermore, the neural network model transfers well to the experimental spectra and demonstrates low fitting errors and sparse peak lists in challenging scenarios such as crowded, high dynamic range, shoulder peak regions as well as broad peaks. We demonstrate in challenging spectra that the proposed algorithm is superior to expert results.

Details

Database :
OAIster
Notes :
application/pdf, Journal of Magnetic Resonance, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1373796519
Document Type :
Electronic Resource