Automatic grading of intervertebral disc degeneration in lumbar dog spines

Publication date

2024-06

Authors

Niemeyer, Frank
Galbusera, Fabio
Beukers, MISNI 000000050595744X
Jonas, René
Tao, Youping
Fusellier, Marion
Tryfonidou, MariannaORCID 0000-0002-2333-7162ISNI 0000000388930095
Neidlinger-Wilke, Cornelia
Kienle, Annette
Wilke, Hans-Joachim

Editors

Advisors

Supervisors

Document Type

Article
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License

cc_by_nc_nd

Abstract

BACKGROUND: Intervertebral disc degeneration is frequent in dogs and can be associated with symptoms and functional impairments. The degree of disc degeneration can be assessed on T2-weighted MRI scans using the Pfirrmann classification scheme, which was developed for the human spine. However, it could also be used to quantify the effectiveness of disc regeneration therapies. We developed and tested a deep learning tool able to automatically score the degree of disc degeneration in dog spines, starting from an existing model designed to process images of human patients. METHODS: MRI midsagittal scans of 5991 lumbar discs of dog patients were collected and manually evaluated with the Pfirrmann scheme and a modified scheme with transitional grades. A deep learning model was trained to classify the disc images based on the two schemes and tested by comparing its performance with the model processing human images. RESULTS: The determination of the Pfirrmann grade showed sensitivities higher than 83% for all degeneration grades, except for grade 5, which is rare in dog spines, and high specificities. In comparison, the correspondent human model had slightly higher sensitivities, on average 90% versus 85% for the canine model. The modified scheme with the fractional grades did not show significant advantages with respect to the original Pfirrmann grades. CONCLUSIONS: The novel tool was able to accurately and reliably score the severity of disc degeneration in dogs, although with a performance inferior than that of the human model. The tool has potential in the clinical management of disc degeneration in canine patients as well as in longitudinal studies evaluating regenerative therapies in dogs used as animal models of human disorders.

Keywords

canine spine, deep learning, degeneration, image analysis, machine learning, radiological classification, Orthopedics and Sports Medicine

Citation

Niemeyer, F, Galbusera, F, Beukers, M, Jonas, R, Tao, Y, Fusellier, M, Tryfonidou, M A, Neidlinger-Wilke, C, Kienle, A & Wilke, H-J 2024, 'Automatic grading of intervertebral disc degeneration in lumbar dog spines', JOR Spine, vol. 7, no. 2, e1326. https://doi.org/10.1002/jsp2.1326