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Deep learning pipeline for quality filtering of MRSI spectra.
Rakic, Mladen; Turco, Federico; Weng, Guodong; Maes, Frederik; Sima, Diana M; Slotboom, Johannes.
Afiliação
  • Rakic M; Research and Development, Icometrix, Leuven, Belgium.
  • Turco F; Department of Electrical Engineering (ESAT), Processing Speech and Images (PSI) and Medical Imaging Research Center, KU Leuven, Leuven, Belgium.
  • Weng G; Institute for Diagnostic and Interventional Radiology, Support Center for Advanced Neuroimaging (SCAN), University of Bern, Bern, Switzerland.
  • Maes F; Institute for Diagnostic and Interventional Radiology, Support Center for Advanced Neuroimaging (SCAN), University of Bern, Bern, Switzerland.
  • Sima DM; Department of Electrical Engineering (ESAT), Processing Speech and Images (PSI) and Medical Imaging Research Center, KU Leuven, Leuven, Belgium.
  • Slotboom J; Research and Development, Icometrix, Leuven, Belgium.
NMR Biomed ; : e5012, 2023 Jul 30.
Article em En | MEDLINE | ID: mdl-37518942
ABSTRACT
With the rise of novel 3D magnetic resonance spectroscopy imaging (MRSI) acquisition protocols in clinical practice, which are capable of capturing a large number of spectra from a subject's brain, there is a need for an automated preprocessing pipeline that filters out bad-quality spectra and identifies contaminated but salvageable spectra prior to the metabolite quantification step. This work introduces such a pipeline based on an ensemble of deep-learning classifiers. The dataset consists of 36,338 spectra from one healthy subject and five brain tumor patients, acquired with an EPSI variant, which implemented a novel type of spectral editing named SLOtboom-Weng (SLOW) editing on a 7T MR scanner. The spectra were labeled manually by an expert into four classes of spectral quality as follows (i) noise, (ii) spectra greatly influenced by lipid-related artifacts (deemed not to contain clinical information), (iii) spectra containing metabolic information slightly contaminated by lipid signals, and (iv) good-quality spectra. The AI model consists of three pairs of networks, each comprising a convolutional autoencoder and a multilayer perceptron network. In the classification step, the encoding half of the autoencoder is kept as a dimensionality reduction tool, while the fully connected layers are added to its output. Each of the three pairs of networks is trained on different representations of spectra (real, imaginary, or both), aiming at robust decision-making. The final class is assigned via a majority voting scheme. The F1 scores obtained on the test dataset for the four previously defined classes are 0.96, 0.93, 0.82, and 0.90, respectively. The arguably lower value of 0.82 was reached for the least represented class of spectra mildly influenced by lipids. Not only does the proposed model minimise the required user interaction, but it also greatly reduces the computation time at the metabolite quantification step (by selecting a subset of spectra worth quantifying) and enforces the display of only clinically relevant information.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Guideline / Prognostic_studies Idioma: En Revista: NMR Biomed Assunto da revista: DIAGNOSTICO POR IMAGEM / MEDICINA NUCLEAR Ano de publicação: 2023 Tipo de documento: Article País de afiliação: Bélgica

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Guideline / Prognostic_studies Idioma: En Revista: NMR Biomed Assunto da revista: DIAGNOSTICO POR IMAGEM / MEDICINA NUCLEAR Ano de publicação: 2023 Tipo de documento: Article País de afiliação: Bélgica