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Diagnostic performance of deep learning-based automatic white matter hyperintensity segmentation for classification of the Fazekas scale and differentiation of subcortical vascular dementia

Author

Listed:
  • Leehi Joo
  • Woo Hyun Shim
  • Chong Hyun Suh
  • Su Jin Lim
  • Hwon Heo
  • Woo Seok Kim
  • Eunpyeong Hong
  • Dongsoo Lee
  • Jinkyeong Sung
  • Jae-Sung Lim
  • Jae-Hong Lee
  • Sang Joon Kim

Abstract

Purpose: To validate the diagnostic performance of commercially available, deep learning-based automatic white matter hyperintensity (WMH) segmentation algorithm for classifying the grades of the Fazekas scale and differentiating subcortical vascular dementia. Methods: This retrospective, observational, single-institution study investigated the diagnostic performance of a deep learning-based automatic WMH volume segmentation to classify the grades of the Fazekas scale and differentiate subcortical vascular dementia. The VUNO Med-DeepBrain was used for the WMH segmentation system. The system for segmentation of WMH was designed with convolutional neural networks, in which the input image was comprised of a pre-processed axial FLAIR image, and the output was a segmented WMH mask and its volume. Patients presented with memory complaint between March 2017 and June 2018 were included and were split into training (March 2017–March 2018, n = 596) and internal validation test set (April 2018–June 2018, n = 204). Results: Optimal cut-off values to categorize WMH volume as normal vs. mild/moderate/severe, normal/mild vs. moderate/severe, and normal/mild/moderate vs. severe were 3.4 mL, 9.6 mL, and 17.1 mL, respectively, and the AUC were 0.921, 0.956 and 0.960, respectively. When differentiating normal/mild vs. moderate/severe using WMH volume in the test set, sensitivity, specificity, and accuracy were 96.4%, 89.9%, and 91.7%, respectively. For distinguishing subcortical vascular dementia from others using WMH volume, sensitivity, specificity, and accuracy were 83.3%, 84.3%, and 84.3%, respectively. Conclusion: Deep learning-based automatic WMH segmentation may be an accurate and promising method for classifying the grades of the Fazekas scale and differentiating subcortical vascular dementia.

Suggested Citation

  • Leehi Joo & Woo Hyun Shim & Chong Hyun Suh & Su Jin Lim & Hwon Heo & Woo Seok Kim & Eunpyeong Hong & Dongsoo Lee & Jinkyeong Sung & Jae-Sung Lim & Jae-Hong Lee & Sang Joon Kim, 2022. "Diagnostic performance of deep learning-based automatic white matter hyperintensity segmentation for classification of the Fazekas scale and differentiation of subcortical vascular dementia," PLOS ONE, Public Library of Science, vol. 17(9), pages 1-16, September.
  • Handle: RePEc:plo:pone00:0274562
    DOI: 10.1371/journal.pone.0274562
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