A fast and fully-automated deep-learning approach for accurate hemorrhage segmentation and volume quantification in non-contrast whole-head CT.

Journal: Scientific reports
Published Date:

Abstract

This project aimed to develop and evaluate a fast and fully-automated deep-learning method applying convolutional neural networks with deep supervision (CNN-DS) for accurate hematoma segmentation and volume quantification in computed tomography (CT) scans. Non-contrast whole-head CT scans of 55 patients with hemorrhagic stroke were used. Individual scans were standardized to 64 axial slices of 128 × 128 voxels. Each voxel was annotated independently by experienced raters, generating a binary label of hematoma versus normal brain tissue based on majority voting. The dataset was split randomly into training (n = 45) and testing (n = 10) subsets. A CNN-DS model was built applying the training data and examined using the testing data. Performance of the CNN-DS solution was compared with three previously established methods. The CNN-DS achieved a Dice coefficient score of 0.84 ± 0.06 and recall of 0.83 ± 0.07, higher than patch-wise U-Net (< 0.76). CNN-DS average running time of 0.74 ± 0.07 s was faster than PItcHPERFeCT (> 1412 s) and slice-based U-Net (> 12 s). Comparable interrater agreement rates were observed between "method-human" vs. "human-human" (Cohen's kappa coefficients > 0.82). The fully automated CNN-DS approach demonstrated expert-level accuracy in fast segmentation and quantification of hematoma, substantially improving over previous methods. Further research is warranted to test the CNN-DS solution as a software tool in clinical settings for effective stroke management.

Authors

  • Ali Arab
    School of Computing Science, Simon Fraser University, Burnaby, BC, Canada.
  • Betty Chinda
    Department of Biomedical Physiology and Kinesiology, Simon Fraser University, Burnaby, BC, Canada.
  • George Medvedev
    Division of Neurology, Royal Columbian Hospital, New Westminster, BC, Canada.
  • William Siu
    Division of Radiology, Royal Columbian Hospital, New Westminster, BC, Canada.
  • Hui Guo
    Health Sciences and Innovation, Surrey Memorial Hospital, Fraser Health Authority, Surrey, BC, Canada.
  • Tao Gu
    Health Sciences and Innovation, Surrey Memorial Hospital, Fraser Health Authority, Surrey, BC, Canada.
  • Sylvain Moreno
    School of Interactive Arts and Technology, Simon Fraser University, Surrey, BC, Canada.
  • Ghassan Hamarneh
    Medical Image Analysis Lab, Simon Fraser University, Burnaby, BC, Canada. Electronic address: hamarneh@sfu.ca.
  • Martin Ester
    School of Computing Science, Simon Fraser University, Burnaby, BC, Canada.
  • Xiaowei Song
    School of Artificial Intelligence, Hebei University of Technology, Tianjin 300130, P.R.China.