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Purpose: To improve the accuracy of 1-stage object detection by modifying the YOLOv7 with the convolutional block attention module (CBAM), known as YOLOv7-CBAM, which can automatically identify torn or intact rotator cuff tendon to assist physicians in diagnosing rotator cuff lesions through ultrasound.
Methods: Between 2020 and 2021, patients who experienced shoulder pain for over 3 months and had both ultrasound and magnetic resonance imaging examinations were categorized into torn and intact groups. To ensure balanced training, we included the same number of patients in both groups. Transfer learning was conducted using a pretrained model of YOLOv7 and an improved model with CBAM. The mean average precision, sensitivity, and F1-score were calculated to evaluate the models. A gradient-weighted class activation mapping method was employed to visualize important regions using a heatmap. A simulation data set was recruited to evaluate the diagnostic performance of clinical physicians using our artificial intelligence-assisted model.
Results: A total of 280 patients were included in this study, with 80% of 840 ultrasound images randomly allocated for model training. The accuracy for the test set was 0.96 for YOLOv7 and 0.98 for YOLOv7-CBAM, and the precision and sensitivity were 0.94 and 0.98 for YOLOv7 and 0.98 and 0.98 for YOLOv7-CBAM. F1-score and mean average precision were higher for YOLOv7-CBAM (0.980 and 0.993) than YOLOv7 (0.961 and 0.965). Furthermore, the gradient-weighted class activation mapping method elucidated that the deep learning model primarily emphasized a hypoechoic anechoic defect within the tendon. Following adopting an artificial intelligence-assisted model (YOLOv7-CBAM model), diagnostic accuracy improved from 80.86% to 88.86% (P = .01), and interobserver reliability improved from 0.49 to 0.71 among physicians.
Conclusions: The YOLOv7-CBAM model shows high accuracy in detecting torn or intact rotator cuff tendon from ultrasound images. Integrating this model into the diagnostic process can assist physicians in improving diagnostic accuracy and interobserver reliability across different physicians.
Clinical Relevance: The attentional deep learning model aids physicians in improving the accuracy and consistency of ultrasound diagnosis of torn or intact rotator cuff tendons.
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http://dx.doi.org/10.1016/j.arthro.2024.12.024 | DOI Listing |
Knee Surg Sports Traumatol Arthrosc
September 2025
Department of Orthopaedic Surgery, Yeosu Baek Hospital, Jeollanam-do, Republic of Korea.
Purpose: This study aimed to compare clinical outcomes between open and arthroscopic anterior latissimus dorsi (LD) transfer techniques for treating irreparable subscapularis (SSC) tears.
Methods: We retrospectively reviewed patients who underwent open or arthroscopic anterior LD transfer for irreparable SSC tears between February 2014 and August 2020. Patients were included if they had irreparable SSC tears with Lafosse Grade 4 or higher and Goutallier Grade 3 or higher, but without advanced arthritis (Hamada Grade < 3).
Front Bioeng Biotechnol
August 2025
Department of Sports Medicine, The First Affiliated Hospital, Guangdong Provincial Key Laboratory of Speed Capability, The Guangzhou Key Laboratory of Precision Orthopedics and Regenerative Medicine, Jinan University, Guangzhou, Guangdong, China.
Introduction: During the healing process, the functional gradient attachment of the rotator cuff (RC) tendon-bone interface fails to regenerate, which severely impedes load transfer and stress dissipation, thereby increasing the risk of retears. As a result, the treatment of rotator cuff tears remains a significant clinical challenge.
Methods: In this study, a dual-crosslinked hyaluronic acid/polyethylene glycol (HA/PEG) hydrogel scaffold was synthesized using hyaluronic acid and polyethylene glycol as base materials.
Ugeskr Laeger
September 2025
fdeling for Led- og Knoglekirurgi, Københavns Universitetshospital - Herlev og Gentofte Hospital.
The clinical presentation of rotator cuff ruptures varies greatly and ranges from no symptoms to severe shoulder impairment. Clinical shoulder tests are an effective screening tool to identify patients who require early specialist assessment or further radiological investigation, but they are not sufficient to rule out smaller ruptures. Small ruptures can often be managed non-surgically, while larger traumatic ruptures may necessitate early surgical intervention.
View Article and Find Full Text PDFJ ISAKOS
September 2025
McMaster University Division of Orthopaedic Surgery, Hamilton, ON, Canada; Oakville Trafalgar Memorial Hospital, Division of Orthopaedic Surgery, Oakville, ON, Canada.
Introduction/objectives: Irreparable subscapularis tears can cause severe functional impairment and present significant clinical challenges. Current treatment options include tendon transfers (TTs), anterior capsular reconstruction, and reverse shoulder arthroplasty. Each approach has distinct biomechanical advantages and limitations, but there remains no consensus regarding the optimal treatment.
View Article and Find Full Text PDFEur J Orthop Surg Traumatol
September 2025
Pontifical Bolivarian University, Medellín, Colombia.
Introduction: Accurate diagnosis of subscapularis tears remains challenging due to the limitations of physical examinations and imaging techniques. Therefore, specific radiological parameters have been proposed as predictors of atraumatic subscapularis tears to improve diagnostic sensitivity and accuracy. These parameters include coracohumeral distance (CHD), coracoglenoid angle (CGA), coracoid angle (CA), coracoid overlap (CO), and coracohumeral angle (CHA).
View Article and Find Full Text PDF