Applying AI to Safely and Effectively Scale Care to Address Chronic MSK Conditions

Author:

Areias Anabela C.1ORCID,Janela Dora1ORCID,Moulder Robert G.12,Molinos Maria1,Bento Virgílio1,Moreira Carolina13,Yanamadala Vijay145,Correia Fernando Dias16,Costa Fabíola1ORCID

Affiliation:

1. Sword Health, Inc., Draper, UT 84043, USA

2. Institute for Cognitive Science, University of Colorado Boulder, Boulder, CO 80309, USA

3. Instituto de Ciências Biomédicas Abel Salazar, 4050-313 Porto, Portugal

4. Department of Surgery, Quinnipiac University Frank H. Netter School of Medicine, Hamden, CT 06473, USA

5. Department of Neurosurgery, Hartford Healthcare Medical Group, Westport, CT 06103, USA

6. Neurology Department, Centro Hospitalar e Universitário do Porto, 4099-001 Porto, Portugal

Abstract

Background/Objectives: The rising prevalence of musculoskeletal (MSK) conditions has not been balanced by a sufficient increase in healthcare providers. Scalability challenges are being addressed through the use of artificial intelligence (AI) in some healthcare sectors, with this showing potential to also improve MSK care. Digital care programs (DCP) generate automatically collected data, thus making them ideal candidates for AI implementation into workflows, with the potential to unlock care scalability. In this study, we aimed to assess the impact of scaling care through AI in patient outcomes, engagement, satisfaction, and adverse events. Methods: Post hoc analysis of a prospective, pre-post cohort study assessing the impact on outcomes after a 2.3-fold increase in PT-to-patient ratio, supported by the implementation of a machine learning-based tool to assist physical therapists (PTs) in patient care management. The intervention group (IG) consisted of a DCP supported by an AI tool, while the comparison group (CG) consisted of the DCP alone. The primary outcome concerned the pain response rate (reaching a minimal clinically important change of 30%). Other outcomes included mental health, program engagement, satisfaction, and the adverse event rate. Results: Similar improvements in pain response were observed, regardless of the group (response rate: 64% vs. 63%; p = 0.399). Equivalent recoveries were also reported in mental health outcomes, specifically in anxiety (p = 0.928) and depression (p = 0.187). Higher completion rates were observed in the IG (79.9% (N = 19,252) vs. CG 70.1% (N = 8489); p < 0.001). Patient engagement remained consistent in both groups, as well as high satisfaction (IG: 8.76/10, SD 1.75 vs. CG: 8.60/10, SD 1.76; p = 0.021). Intervention-related adverse events were rare and even across groups (IG: 0.58% and CG 0.69%; p = 0.231). Conclusions: The study underscores the potential of scaling MSK care that is supported by AI without compromising patient outcomes, despite the increase in PT-to-patient ratios.

Funder

Sword Health Inc.

European Funds

NextGenerationEU

Publisher

MDPI AG

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