Submitted:
06 October 2025
Posted:
07 October 2025
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Abstract
Keywords:
1. Introduction
1.1. Epidemiology and Global Burden of Musculoskeletal Disorders
1.2. Evolution of Orthopaedic Surgical Practice and Rehabilitation Needs
1.3. Limitations of Conventional Rehabilitation Models
1.4. Emergence of Digital Therapeutics as a Solution
1.5. Objectives and Scope of This Review
2. Methods
2.1. Search Strategy and Information Sources
2.2. Inclusion and Exclusion Criteria
2.3. Data Extraction and Synthesis
2.4. Regulatory and Economic Framework Analysis
3. Core Technologies Underpinning Musculoskeletal DTx
3.1. Motion Analysis and Computer Vision
3.2. Wearable Sensors and Continuous Monitoring
3.3. Cloud-Based Platforms and Artificial Intelligence
3.4. Virtual and Augmented Reality
4. Clinical Applications Across Orthopaedic Subspecialties
4.1. Shoulder and Upper Extremity
4.2. Spine Care
4.2.1. Chronic Low Back Pain
4.2.2. Adolescent Idiopathic Scoliosis
4.3. Lower Extremity Applications
4.3.1. Total Knee Arthroplasty
4.3.2. Anterior Cruciate Ligament Reconstruction
4.4. Fracture Care and Nonunion Prevention
5. Regulatory, Economic, and Implementation Considerations
5.1. Global Regulatory Landscape
5.1.1. United States FDA Framework
5.1.2. European Union Medical Device Regulation
5.1.3. Asia-Pacific Regulatory Systems
5.1.4. Data Privacy and Cybersecurity Requirements
5.2. Health Economics and Reimbursement
5.2.1. Cost-Effectiveness Evidence
5.2.2. Reimbursement Models and Coverage Policies
5.3. Implementation Challenges and Solutions
5.3.1. Clinical Workflow Integration
5.3.2. Patient Engagement Strategies
5.3.3. Technical Infrastructure Requirements
5.3.4. Evidence Generation and Quality Improvement
6. Future Directions and Emerging Innovations
6.1. Digital Twin Technology and Precision Rehabilitation
6.1.1. Technical Architecture of Digital Twins
6.1.2. Clinical Applications of Digital Twins
6.1.3. Barriers and Development Pathway
6.2. Advanced Predictive Analytics and Complication Prevention
6.2.1. Early Warning Systems
6.2.2. Adherence Prediction and Personalized Support
6.3. Multimodal Integration and Systems Medicine Approach
6.3.1. Biological Markers and -Omics Integration
6.3.2. Psychological and Social Determinants
6.3.3. Integration with Robotic and Assistive Technologies
7. Discussion
7.1. Synthesis of Clinical Evidence
7.2. Implementation Science Perspectives
7.3. Balancing Innovation and Evidence
7.4. Future Research Priorities
- Comparative Effectiveness Research: Head-to-head comparisons of different digital therapeutic approaches identifying optimal technological features and clinical protocols
- Personalization Algorithms: Development and validation of algorithms matching specific digital therapeutic characteristics to individual patient profiles
- Implementation Science Studies: Rigorous evaluation of implementation strategies, identifying factors supporting successful adoption, fidelity, and sustainability across diverse settings
- Economic Evaluations: Comprehensive cost-effectiveness analyses from societal perspectives with extended time horizons
- Digital Biomarker Validation: Establishing relationships between digital metrics and clinically meaningful outcomes
- Health Equity Research: Understanding and addressing digital divide impacts, developing strategies ensuring equitable access and outcomes
- Long-Term Outcomes: Extended follow-up assessing durability of treatment effects and potential disease-modification impacts
8. Conclusion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| MSD | musculoskeletal disorders |
| TKA | total knee arthroplasty |
| THA | total hiop arthroplasty |
| DTx | digital therapeuatics |
| AI | artificial intelligence |
| IMU | inertial measurement unit |
| HIPPA | health insurance portability and accountability act |
| GDPR | general data protection regulation |
| VR/AR | virtual reality/augmented reality |
| RCT | randomized controlled trial |
| ARCR | arthroscopic rotator cuff repair |
| CLBP | chronic low back pain |
| FDA | food and drug administration |
| SaMD | software as a medical device |
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