Paper
3 March 2017 Automated grading of lumbar disc degeneration via supervised distance metric learning
Xiaoxu He, Mark Landis, Stephanie Leung, James Warrington, Olga Shmuilovich, Shuo Li
Author Affiliations +
Abstract
Lumbar disc degeneration (LDD) is a commonly age-associated condition related to low back pain, while its consequences are responsible for over 90% of spine surgical procedures. In clinical practice, grading of LDD by inspecting MRI is a necessary step to make a suitable treatment plan. This step purely relies on physicians manual inspection so that it brings the unbearable tediousness and inefficiency. An automated method for grading of LDD is highly desirable. However, the technical implementation faces a big challenge from class ambiguity, which is typical in medical image classification problems with a large number of classes. This typical challenge is derived from the complexity and diversity of medical images, which lead to a serious class overlapping and brings a great challenge in discriminating different classes. To solve this problem, we proposed an automated grading approach, which is based on supervised distance metric learning to classify the input discs into four class labels (0: normal, 1: slight, 2: marked, 3: severe). By learning distance metrics from labeled instances, an optimal distance metric is modeled and with two attractive advantages: (1) keeps images from the same classes close, and (2) keeps images from different classes far apart. The experiments, performed in 93 subjects, demonstrated the superiority of our method with accuracy 0.9226, sensitivity 0.9655, specificity 0.9083, F-score 0.8615. With our approach, physicians will be free from the tediousness and patients will be provided an effective treatment.
© (2017) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Xiaoxu He, Mark Landis, Stephanie Leung, James Warrington, Olga Shmuilovich, and Shuo Li "Automated grading of lumbar disc degeneration via supervised distance metric learning", Proc. SPIE 10134, Medical Imaging 2017: Computer-Aided Diagnosis, 1013443 (3 March 2017); https://doi.org/10.1117/12.2253688
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CITATIONS
Cited by 7 scholarly publications.
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KEYWORDS
Medical imaging

Spine

Image classification

Magnetic resonance imaging

Inspection

Lithium

Mahalanobis distance

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