Deep Learning Diagnosis and Classification of Rotator Cuff Tears on Shoulder MRI

Dana J. Lin, Michael Schwier, Bernhard Geiger, Esther Raithel, Heinrich Von Busch, Jan Fritz, Mitchell Kline, Michael Brooks, Kevin Dunham, Mehool Shukla, Erin F. Alaia, Mohammad Samim, Vivek Joshi, William R. Walter, Jutta M. Ellermann, Hakan Ilaslan, David Rubin, Carl S. Winalski, Michael P. Recht

Research output: Contribution to journalArticlepeer-review

12 Scopus citations

Abstract

Background Detection of rotator cuff tears, a common cause of shoulder disability, can be time-consuming and subject to reader variability. Deep learning (DL) has the potential to increase radiologist accuracy and consistency. Purpose The aim of this study was to develop a prototype DL model for detection and classification of rotator cuff tears on shoulder magnetic resonance imaging into no tear, partial-thickness tear, or full-thickness tear. Materials and Methods This Health Insurance Portability and Accountability Act-compliant, institutional review board-approved study included a total of 11,925 noncontrast shoulder magnetic resonance imaging scans from 2 institutions, with 11,405 for development and 520 dedicated for final testing. A DL ensemble algorithm was developed that used 4 series as input from each examination: fluid-sensitive sequences in 3 planes and a sagittal oblique T1-weighted sequence. Radiology reports served as ground truth for training with categories of no tear, partial tear, or full-thickness tear. A multireader study was conducted for the test set ground truth, which was determined by the majority vote of 3 readers per case. The ensemble comprised 4 parallel 3D ResNet50 convolutional neural network architectures trained via transfer learning and then adapted to the targeted domain. The final tear-type prediction was determined as the class with the highest probability, after averaging the class probabilities of the 4 individual models. Results The AUC overall for supraspinatus, infraspinatus, and subscapularis tendon tears was 0.93, 0.89, and 0.90, respectively. The model performed best for full-thickness supraspinatus, infraspinatus, and subscapularis tears with AUCs of 0.98, 0.99, and 0.95, respectively. Multisequence input demonstrated higher AUCs than single-sequence input for infraspinatus and subscapularis tendon tears, whereas coronal oblique fluid-sensitive and multisequence input showed similar AUCs for supraspinatus tendon tears. Model accuracy for tear types and overall accuracy were similar to that of the clinical readers. Conclusions Deep learning diagnosis of rotator cuff tears is feasible with excellent diagnostic performance, particularly for full-thickness tears, with model accuracy similar to subspecialty-trained musculoskeletal radiologists.

Original languageEnglish (US)
Pages (from-to)405-412
Number of pages8
JournalInvestigative Radiology
Volume58
Issue number6
DOIs
StatePublished - Jun 1 2023

Bibliographical note

Publisher Copyright:
© Wolters Kluwer Health, Inc. All rights reserved.

Keywords

  • MRI
  • artificial intelligence
  • classification
  • convolutional neural network
  • deep learning
  • infraspinatus
  • rotator cuff
  • subscapularis
  • supraspinatus
  • tendons

PubMed: MeSH publication types

  • Journal Article

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