Authors
Alomari Raja'S, Jason J Corso, Vipin Chaudhary, Gurmeet Dhillon
Publication date
2010/3/9
Conference
Medical Imaging 2010: Computer-Aided Diagnosis
Volume
7624
Pages
364-372
Publisher
SPIE
Description
Intervertebral disc herniation is a major reason for lower back pain (LBP), which is the second most common neurological ailment in the United States. Automation of herniated disc diagnosis reduces the large burden on radiologists who have to diagnose hundreds of cases each day using clinical MRI. We present a method for automatic diagnosis of lumbar disc herniation using appearance and shape features. We jointly use the intensity signal for modeling the appearance of herniated disc and the active shape model for modeling the shape of herniated disc. We utilize a Gibbs distribution for classification of discs using appearance and shape features. We use 33 clinical MRI cases of the lumbar area for training and testing both appearance and shape models. We achieve over 91% accuracy in detection of herniation in a cross-validation experiment with specificity of 91% and sensitivity of 94%.
Total citations
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Scholar articles
A Raja'S, JJ Corso, V Chaudhary, G Dhillon - Medical Imaging 2010: Computer-Aided Diagnosis, 2010