Deep learning-based screening tool for rotator cuff tears on shoulder radiography

J Orthop Sci. 2024 May;29(3):828-834. doi: 10.1016/j.jos.2023.05.004. Epub 2023 May 24.

Abstract

Background: Early diagnosis of rotator cuff tears is essential for appropriate and timely treatment. Although radiography is the most used technique in clinical practice, it is difficult to accurately rule out rotator cuff tears as an initial imaging diagnostic modality. Deep learning-based artificial intelligence has recently been applied in medicine, especially diagnostic imaging. This study aimed to develop a deep learning algorithm as a screening tool for rotator cuff tears based on radiography.

Methods: We used 2803 shoulder radiographs of the true anteroposterior view to develop the deep learning algorithm. Radiographs were labeled 0 and 1 as intact or low-grade partial-thickness rotator cuff tears and high-grade partial or full-thickness rotator cuff tears, respectively. The diagnosis of rotator cuff tears was determined based on arthroscopic findings. The diagnostic performance of the deep learning algorithm was assessed by calculating the area under the curve (AUC), sensitivity, negative predictive value (NPV), and negative likelihood ratio (LR-) of test datasets with a cutoff value of expected high sensitivity determination based on validation datasets. Furthermore, the diagnostic performance for each rotator cuff tear size was evaluated.

Results: The AUC, sensitivity, NPV, and LR- with expected high sensitivity determination were 0.82, 84/92 (91.3%), 102/110 (92.7%), and 0.16, respectively. The sensitivity, NPV, and LR- for full-thickness rotator cuff tears were 69/73 (94.5%), 102/106 (96.2%), and 0.10, respectively, while the diagnostic performance for partial-thickness rotator cuff tears was low at 15/19 (78.9%), NPV of 102/106 (96.2%) and LR- of 0.39.

Conclusions: Our algorithm had a high diagnostic performance for full-thickness rotator cuff tears. The deep learning algorithm based on shoulder radiography helps screen rotator cuff tears by setting an appropriate cutoff value.

Level of evidence: Level III: Diagnostic Study.

Keywords: Arthroscopic findings; Artificial intelligence; Deep learning; Rotator cuff tears; Screening tool; Shoulder radiography.

MeSH terms

  • Adult
  • Aged
  • Algorithms
  • Deep Learning*
  • Female
  • Humans
  • Male
  • Middle Aged
  • Predictive Value of Tests
  • Radiography* / methods
  • Retrospective Studies
  • Rotator Cuff Injuries* / diagnostic imaging
  • Sensitivity and Specificity