Automated final lesion segmentation in posterior circulation acute ischemic stroke using deep learning

Open Access
Authors
  • I. IĆĄgum
  • C.B.L.M. Majoie
  • D.W.J. Dippel
  • Y.B.W.E.M. Roos
  • M. Goyal
  • P.J. Mitchell
  • B.C.V. Campbell
  • D.K. Lopes
  • G. Reimann
  • T.G. Jovin
  • J.L. Saver
  • K.W. Muir
  • P. White
  • S. Bracard
  • B. Chen
  • S. Brown
  • W.J. Schonewille
  • E. van der Hoeven
  • V. Puetz
  • H.A. Marquering
Publication date 09-2021
Journal Diagnostics
Article number 1621
Volume | Issue number 11 | 9
Number of pages 15
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract

Final lesion volume (FLV) is a surrogate outcome measure in anterior circulation stroke (ACS). In posterior circulation stroke (PCS), this relation is plausibly understudied due to a lack of methods that automatically quantify FLV. The applicability of deep learning approaches to PCS is limited due to its lower incidence compared to ACS. We evaluated strategies to develop a convolutional neural network (CNN) for PCS lesion segmentation by using image data from both ACS and PCS patients. We included follow-up non-contrast computed tomography scans of 1018 patients with ACS and 107 patients with PCS. To assess whether an ACS lesion segmentation generalizes to PCS, a CNN was trained on ACS data (ACS-CNN). Second, to evaluate the performance of only including PCS patients, a CNN was trained on PCS data. Third, to evaluate the performance when combining the datasets, a CNN was trained on both datasets. Finally, to evaluate the performance of transfer learning, the ACS-CNN was fine-tuned using PCS patients. The transfer learning strategy outperformed the other strategies in volume agreement with an intra-class correlation of 0.88 (95% CI: 0.83-0.92) vs. 0.55 to 0.83 and a lesion detection rate of 87% vs. 41-77 for the other strategies. Hence, transfer learning improved the FLV quantification and detection rate of PCS lesions compared to the other strategies.

Document type Article
Note Part of special issue: Clinical Diagnosis Using Deep Learning.
Language English
Published at https://doi.org/10.3390/diagnostics11091621
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diagnostics-11-01621-v2 (Final published version)
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