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Deconvolution of NMR spectra : a deep learning-based approach

Authors :
Schmid, Nicolas
Bruderer, Simon
Fischetti, Giulia
Paruzzo, Federico
Toscano, Giuseppe
Graf, Dominik
Fey, Michael
Henrici, Andreas
Grabner, Helmut
Wegner, Jan Dirk
Sigel, Roland K. O.
Heitmann, Björn
Wilhelm, Dirk
Schmid, Nicolas
Bruderer, Simon
Fischetti, Giulia
Paruzzo, Federico
Toscano, Giuseppe
Graf, Dominik
Fey, Michael
Henrici, Andreas
Grabner, Helmut
Wegner, Jan Dirk
Sigel, Roland K. O.
Heitmann, Björn
Wilhelm, Dirk
Publication Year :
2023

Abstract

We introduce a deep learning-based deconvolution approach for 1H NMR spectra, developed by leveraging concepts from the field of physics informed-learning, intelligent labeling, and tailored high dynamic range (HDR) spectral preprocessing. Since automation and faster workflows are major concerns in NMR spectroscopy, the algorithm handles uncorrected spectra without strict assumptions on phase and baseline correction as well as line shape. Due to the lack of high quality and consistently labeled experimental spectra in quantities needed to train modern deep learning models, we relied on synthetic spectra creation. Moreover, instead of training with synthetic spectra consisting of single lines, we created synthetic multiples that further supported a realistic deconvolution. We achieved super-human performance on corrected and uncorrected synthetic spectra. Finally, and most importantly, the results on synthetic data translate well to experimental spectra despite the covariate shift. Thus, this tool is a promising candidate for automated expert-level deconvolution of experimental HDR 1H NMR spectra.

Details

Database :
OAIster
Notes :
application/pdf, EUROMAR 2022 Abstractbook, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1373798447
Document Type :
Electronic Resource