Clinician-Directed Large Language Model Software Generation for Therapeutic Interventions in Physical Rehabilitation
Edward Kim, Yuri Cho, Jose Eduardo E. Lima, Julie Muccini, Jenelle Jindal, Alison Scheid, Erik Nelson, Seong Hyun Park, Yuchen Zeng, Alton Sturgis, Caesar Li, Jackie Dai, Sun Min Kim, Yash Prakash, Liwen Sun, Isabella Hu, Hongxuan Wu, Daniel He, Wiktor Rajca, Cathra Halabi

TL;DR
This study demonstrates that large language models can effectively translate clinicians' personalized exercise prescriptions into executable therapeutic software, enhancing customization and feasibility in physical rehabilitation.
Contribution
It introduces a novel paradigm where LLMs generate personalized intervention software based on clinician input, enabling tailored therapy at the point of care.
Findings
100% of prescriptions translated into software
99.7% accuracy in instruction delivery
88.4% accuracy in performance monitoring
Abstract
Digital health interventions increasingly deliver home exercise programs via sensor-equipped devices such as smartphones, enabling remote monitoring of adherence and performance. However, current software is usually authored before clinical encounters as libraries of modules for broad impairment categories. At the point of care, clinicians can only choose from these modules and adjust a few parameters (for example, duration or repetitions). As a result, individual limitations, goals, and environmental constraints are often not reflected, limiting personalization and benefit. We propose a paradigm in which large language models (LLMs) act as constrained translators that convert clinicians' exercise prescriptions into intervention software. Clinicians remain the decision makers: they design exercises during the encounter, tailored to each patient's impairments, goals, and environment, and…
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Taxonomy
TopicsStroke Rehabilitation and Recovery · Mobile Health and mHealth Applications · Artificial Intelligence in Healthcare and Education
