Frontiers in Neuroscience (Oct 2024)

Perceptual super-resolution in multiple sclerosis MRI

  • Diana L. Giraldo,
  • Diana L. Giraldo,
  • Diana L. Giraldo,
  • Hamza Khan,
  • Hamza Khan,
  • Hamza Khan,
  • Gustavo Pineda,
  • Zhihua Liang,
  • Zhihua Liang,
  • Alfonso Lozano-Castillo,
  • Bart Van Wijmeersch,
  • Henry C. Woodruff,
  • Henry C. Woodruff,
  • Philippe Lambin,
  • Philippe Lambin,
  • Eduardo Romero,
  • Liesbet M. Peeters,
  • Liesbet M. Peeters,
  • Jan Sijbers,
  • Jan Sijbers

DOI
https://doi.org/10.3389/fnins.2024.1473132
Journal volume & issue
Vol. 18

Abstract

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IntroductionMagnetic resonance imaging (MRI) is crucial for diagnosing and monitoring of multiple sclerosis (MS) as it is used to assess lesions in the brain and spinal cord. However, in real-world clinical settings, MRI scans are often acquired with thick slices, limiting their utility for automated quantitative analyses. This work presents a single-image super-resolution (SR) reconstruction framework that leverages SR convolutional neural networks (CNN) to enhance the through-plane resolution of structural MRI in people with MS (PwMS).MethodsOur strategy involves the supervised fine-tuning of CNN architectures, guided by a content loss function that promotes perceptual quality, as well as reconstruction accuracy, to recover high-level image features.ResultsExtensive evaluation with MRI data of PwMS shows that our SR strategy leads to more accurate MRI reconstructions than competing methods. Furthermore, it improves lesion segmentation on low-resolution MRI, approaching the performance achievable with high-resolution images.DiscussionResults demonstrate the potential of our SR framework to facilitate the use of low-resolution retrospective MRI from real-world clinical settings to investigate quantitative image-based biomarkers of MS.

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