Automatic labeling of vertebral levels using a robust template-based approach.
Eugénie UllmannJean François Pelletier PaquetteWilliam E ThongJulien Cohen-AdadPublished in: International journal of biomedical imaging (2014)
Context. MRI of the spinal cord provides a variety of biomarkers sensitive to white matter integrity and neuronal function. Current processing methods are based on manual labeling of vertebral levels, which is time consuming and prone to user bias. Although several methods for automatic labeling have been published; they are not robust towards image contrast or towards susceptibility-related artifacts. Methods. Intervertebral disks are detected from the 3D analysis of the intensity profile along the spine. The robustness of the disk detection is improved by using a template of vertebral distance, which was generated from a training dataset. The developed method has been validated using T1- and T2-weighted contrasts in ten healthy subjects and one patient with spinal cord injury. Results. Accuracy of vertebral labeling was 100%. Mean absolute error was 2.1 ± 1.7 mm for T2-weighted images and 2.3 ± 1.6 mm for T1-weighted images. The vertebrae of the spinal cord injured patient were correctly labeled, despite the presence of artifacts caused by metallic implants. Discussion. We proposed a template-based method for robust labeling of vertebral levels along the whole spinal cord for T1- and T2-weighted contrasts. The method is freely available as part of the spinal cord toolbox.
Keyphrases
- spinal cord
- contrast enhanced
- deep learning
- bone mineral density
- magnetic resonance
- spinal cord injury
- neuropathic pain
- magnetic resonance imaging
- white matter
- network analysis
- postmenopausal women
- convolutional neural network
- molecularly imprinted
- computed tomography
- case report
- optical coherence tomography
- machine learning
- diffusion weighted imaging
- body composition
- image quality
- systematic review
- brain injury
- neural network
- mass spectrometry
- pet ct
- solid phase extraction
- high resolution