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Deep learning model for automated diagnosis of degenerative cervical spondylosis and altered spinal cord signal on MRI.

Authors :
Lee A
Wu J
Liu C
Makmur A
Ting YH
Muhamat Nor FE
Tan LY
Ong W
Tan WC
Lee YJ
Huang J
Beh JCY
Lim DSW
Low XZ
Teo EC
Chan YH
Lim JI
Lin S
Tan JH
Kumar N
Ooi BC
Quek ST
Hallinan JTPD
Source :
The spine journal : official journal of the North American Spine Society [Spine J] 2025 Feb; Vol. 25 (2), pp. 255-264. Date of Electronic Publication: 2024 Sep 30.
Publication Year :
2025

Abstract

Background Context: A deep learning (DL) model for degenerative cervical spondylosis on MRI could enhance reporting consistency and efficiency, addressing a significant global health issue.<br />Purpose: Create a DL model to detect and classify cervical cord signal abnormalities, spinal canal and neural foraminal stenosis.<br />Study Design/setting: Retrospective study conducted from January 2013 to July 2021, excluding cases with instrumentation.<br />Patient Sample: Overall, 504 MRI cervical spines were analyzed (504 patients, mean=58 years±13.7[SD]; 202 women) with 454 for training (90%) and 50 (10%) for internal testing. In addition, 100 MRI cervical spines were available for external testing (100 patients, mean=60 years±13.0[SD];26 women).<br />Outcome Measures: Automated detection and classification of spinal canal stenosis, neural foraminal stenosis, and cord signal abnormality using the DL model. Recall(%), inter-rater agreement (Gwet's kappa), sensitivity, and specificity were calculated.<br />Methods: Utilizing axial T2-weighted gradient echo and sagittal T2-weighted images, a transformer-based DL model was trained on data labeled by an experienced musculoskeletal radiologist (12 years of experience). Internal testing involved data labeled in consensus by 2 musculoskeletal radiologists (reference standard, both with 12-years-experience), 2 subspecialist radiologists, and 2 in-training radiologists. External testing was performed.<br />Results: The DL model exhibited substantial agreement surpassing all readers in all classes for spinal canal (κ=0.78, p<.001 vs κ range=0.57-0.70 for readers) and neural foraminal stenosis (κ=0.80, p<.001 vs κ range=0.63-0.69 for readers) classification. The DL model's recall for cord signal abnormality (92.3%) was similar to all readers (range: 92.3-100.0%). Nearly perfect agreement was demonstrated for binary classification (grades 0/1 vs 2/3) (κ=0.95, p<.001 for spinal canal; κ=0.90, p<.001 for neural foramina). External testing showed substantial agreement using all classes (κ=0.76, p<.001 for spinal canal; κ=0.66, p<.001 for neural foramina) and high recall for cord signal abnormality (91.9%). The DL model demonstrated high sensitivities (range:83.7%-92.4%) and specificities (range:87.8%-98.3%) on both internal and external datasets for spinal canal and neural foramina classification.<br />Conclusions: Our DL model for degenerative cervical spondylosis on MRI showed good performance, demonstrating substantial agreement with the reference standard. This tool could assist radiologists in improving the efficiency and consistency of MRI cervical spondylosis assessments in clinical practice.<br />Competing Interests: Declaration of competing interest One or more of the authors declare financial or professional relationships on ICMJE-TSJ disclosure forms.<br /> (Copyright © 2024 Elsevier Inc. All rights reserved.)

Details

Language :
English
ISSN :
1878-1632
Volume :
25
Issue :
2
Database :
MEDLINE
Journal :
The spine journal : official journal of the North American Spine Society
Publication Type :
Academic Journal
Accession number :
39357744
Full Text :
https://doi.org/10.1016/j.spinee.2024.09.015