Scientific article
OA Policy
English

In vivo magnetic resonance 31P‐Spectral Analysis With Neural Networks: 31P‐SPAWNN

Published inMagnetic resonance in medicine, vol. 89, no. 1, p. 40-53
Publication date2023-01
First online date2022-09-25
Abstract

Purpose: We have introduced an artificial intelligence framework, 31P-SPAWNN, in order to fully analyze phosphorus-31 (31P) magnetic resonance spectra. The flexibility and speed of the technique rival traditional least-square fitting methods, with the performance of the two approaches, are compared in this work.

Theory and methods: Convolutional neural network architectures have been proposed for the analysis and quantification of 31P-spectroscopy. The generation of training and test data using a fully parameterized model is presented herein. In vivo unlocalized free induction decay and three-dimensional 31P-magnetic resonance spectroscopy imaging data were acquired from healthy volunteers before being quantified using either 31P-SPAWNN or traditional least-square fitting techniques.

Results: The presented experiment has demonstrated both the reliability and accuracy of 31P-SPAWNN for estimating metabolite concentrations and spectral parameters. Simulated test data showed improved quantification using 31P-SPAWNN compared with LCModel. In vivo data analysis revealed higher accuracy at low signal-to-noise ratio using 31P-SPAWNN, yet with equivalent precision. Processing time using 31P-SPAWNN can be further shortened up to two orders of magnitude.

Conclusion: The accuracy, reliability, and computational speed of the method open new perspectives for integrating these applications in a clinical setting.

Keywords
  • LCModel
  • Convolutional neural network
  • Deep learning
  • In vivo
  • Phosphorus magnetic resonance spectroscopy
  • Artificial Intelligence
  • Humans
  • Magnetic Resonance Spectroscopy / methods
  • Neural Networks, Computer
  • Phosphorus
  • Reproducibility of Results
Citation (ISO format)
SONGEON, Julien et al. In vivo magnetic resonance 31P‐Spectral Analysis With Neural Networks: 31P‐SPAWNN. In: Magnetic resonance in medicine, 2023, vol. 89, n° 1, p. 40–53. doi: 10.1002/mrm.29446
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Identifiers
Journal ISSN0740-3194
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Creation30/06/2023 07:26:32
First validation20/02/2024 15:11:58
Update24/03/2026 14:36:08
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