Artificial Intelligence and Machine Learning in Rotator Cuff Tears

Author:

Rodriguez Hugo C.12,Rust Brandon3,Hansen Payton Yerke4,Maffulli Nicola5678,Gupta Manu9,Potty Anish G.10,Gupta Ashim11101213

Affiliation:

1. Department of Orthopaedic Surgery, Larkin Community Hospital, South Miami

2. Department of Orthopaedic Surgery, Hospital for Special Surgery Florida, West Palm Beach

3. Nova Southeastern University, Dr. Kiran Patel College of Osteopathic Medicine, Fort Lauderdale

4. Charles E. Schmidt College of Medicine, Florida Atlantic University, Boca Raton, FL

5. Department of Musculoskeletal Disorders, School of Medicine and Surgery, University of Salerno, Fisciano

6. San Giovanni di Dio e Ruggi D’Aragona Hospital “Clinica Ortopedica” Department, Hospital of Salerno, Salerno, Italy

7. Barts and the London School of Medicine and Dentistry, Centre for Sports and Exercise Medicine, Queen Mary University of London, London

8. School of Pharmacy and Bioengineering, Keele University School of Medicine, Stoke on Trent, UK

9. Polar Aesthetics Dental & Cosmetic Centre, Noida, Uttar Pradesh

10. South Texas Orthopaedic Research Institute (STORI Inc.), Laredo, TX

11. Regenerative Orthopaedics, Noida, India

12. Future Biologics

13. BioIntegrate, Lawrenceville, GA

Abstract

Rotator cuff tears (RCTs) negatively impacts patient well-being. Artificial intelligence (AI) is emerging as a promising tool in medical decision-making. Within AI, deep learning allows to autonomously solve complex tasks. This review assesses the current and potential applications of AI in the management of RCT, focusing on diagnostic utility, challenges, and future perspectives. AI demonstrates promise in RCT diagnosis, aiding clinicians in interpreting complex imaging data. Deep learning frameworks, particularly convoluted neural networks architectures, exhibit remarkable diagnostic accuracy in detecting RCTs on magnetic resonance imaging. Advanced segmentation algorithms improve anatomic visualization and surgical planning. AI-assisted radiograph interpretation proves effective in ruling out full-thickness tears. Machine learning models predict RCT diagnosis and postoperative outcomes, enhancing personalized patient care. Challenges include small data sets and classification complexities, especially for partial thickness tears. Current applications of AI in RCT management are promising yet experimental. The potential of AI to revolutionize personalized, efficient, and accurate care for RCT patients is evident. The integration of AI with clinical expertise holds potential to redefine treatment strategies and optimize patient outcomes. Further research, larger data sets, and collaborative efforts are essential to unlock the transformative impact of AI in orthopedic surgery and RCT management.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Physical Therapy, Sports Therapy and Rehabilitation,Orthopedics and Sports Medicine

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