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Deep learning for automated, interpretable classification of lumbar spinal stenosis and facet arthropathy from axial MRI.

Upasana Upadhyay BharadwajMiranda ChristineSteven LiDean ChouValentina PedoiaThomas M LinkCynthia T ChinSharmila Majumdar
Published in: European radiology (2023)
• Interpretable deep-learning systems can be developed for the evaluation of clinical lumbar spine MRI. Multi-grade classification of central canal stenosis with a kappa of 0.80 was comparable to inter-reader agreement scores (0.74, 0.80, 0.86). Binary classification of neural foraminal stenosis and facet arthropathy achieved favorable and accurate AUROCs of 0.92 and 0.93, respectively. • While existing deep-learning systems are opaque, leading to clinical deployment challenges, the proposed system is accurate as well as interpretable, providing valuable information to a radiologist in clinical practice.
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