Brain Sciences (May 2021)

Semi-Supervised Learning in Medical MRI Segmentation: Brain Tissue with White Matter Hyperintensity Segmentation Using FLAIR MRI

  • ZunHyan Rieu,
  • JeeYoung Kim,
  • Regina EY Kim,
  • Minho Lee,
  • Min Kyoung Lee,
  • Se Won Oh,
  • Sheng-Min Wang,
  • Nak-Young Kim,
  • Dong Woo Kang,
  • Hyun Kook Lim,
  • Donghyeon Kim

DOI
https://doi.org/10.3390/brainsci11060720
Journal volume & issue
Vol. 11, no. 6
p. 720

Abstract

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White-matter hyperintensity (WMH) is a primary biomarker for small-vessel cerebrovascular disease, Alzheimer’s disease (AD), and others. The association of WMH with brain structural changes has also recently been reported. Although fluid-attenuated inversion recovery (FLAIR) magnetic resonance imaging (MRI) provide valuable information about WMH, FLAIR does not provide other normal tissue information. The multi-modal analysis of FLAIR and T1-weighted (T1w) MRI is thus desirable for WMH-related brain aging studies. In clinical settings, however, FLAIR is often the only available modality. In this study, we thus propose a semi-supervised learning method for full brain segmentation using FLAIR. The results of our proposed method were compared with the reference labels, which were obtained by FreeSurfer segmentation on T1w MRI. The relative volume difference between the two sets of results shows that our proposed method has high reliability. We further evaluated our proposed WMH segmentation by comparing the Dice similarity coefficients of the reference and the results of our proposed method. We believe our semi-supervised learning method has a great potential for use for other MRI sequences and will encourage others to perform brain tissue segmentation using MRI modalities other than T1w.

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