Attention-gated U-Net networks for simultaneous axial/sagittal planes segmentation of injured spinal cords

J Appl Clin Med Phys. 2023 Oct;24(10):e14123. doi: 10.1002/acm2.14123. Epub 2023 Sep 21.

Abstract

Magnetic resonance imaging is currently the gold standard for the evaluation of spinal cord injuries. Automatic analysis of these injuries is however challenging, as MRI resolutions vary for different planes of analysis and physiological features are often distorted around these injuries. This study proposes a new CNN-based segmentation method in which information is exchanged between two networks analyzing the scans from different planes. Our aim was to develop a robust method for automatic segmentation of the spinal cord in patients having suffered traumatic injuries. The database consisted of 106 sagittal MRI scans from 94 patients with traumatic spinal cord injuries. Our method used an innovative approach where the scans were analyzed in series under the axial and sagittal plane by two different convolutional networks. The results were compared with those of Deepseg 2D from the Spinal Cord Toolbox (SCT), which was taken as state-of-the-art. Comparisons were evaluated using K-Fold cross-validation combined with statistical t-test results on separate test data. Our method achieved significantly better results than Deepseg 2D, with an average Dice coefficient of 0.95 against 0.88 for Deepseg 2D (p <0.001). Other metrics were also used to compare the segmentations, all of which showed significantly better results for our approach. In this study, we introduce a robust method for spinal cord segmentation which is capable of adequately segmenting spinal cords affected by traumatic injuries, improving upon the methods contained in SCT.

Keywords: convolutional neural networks (CNN); deep learning; medical image segmentation; spinal cord.

MeSH terms

  • Humans
  • Image Processing, Computer-Assisted* / methods
  • Magnetic Resonance Imaging / methods
  • Spinal Cord Injuries* / diagnostic imaging