A Causal Framework for Precision Rehabilitation
R. James Cotton, Bryant A. Seamon, Richard L. Segal, Randal D. Davis,, Amrita Sahu, Michelle M. McLeod, Pablo Celnik, Sharon L. Ramey

TL;DR
This paper proposes a causal modeling framework that leverages big data and AI to optimize personalized rehabilitation strategies, aiming to improve long-term functional outcomes.
Contribution
It introduces a novel causal inference-based framework that integrates heterogeneous data to identify optimal dynamic treatment regimens in rehabilitation.
Findings
Framework can learn from diverse data sources.
Models serve as digital twins of patient recovery.
Supports personalized, outcome-focused treatment decisions.
Abstract
Precision rehabilitation offers the promise of an evidence-based approach for optimizing individual rehabilitation to improve long-term functional outcomes. Emerging techniques, including those driven by artificial intelligence, are rapidly expanding our ability to quantify the different domains of function during rehabilitation, other encounters with healthcare, and in the community. While this seems poised to usher rehabilitation into the era of big data and should be a powerful driver of precision rehabilitation, our field lacks a coherent framework to utilize these data and deliver on this promise. We propose a framework that builds upon multiple existing pillars to fill this gap. Our framework aims to identify the Optimal Dynamic Treatment Regimens (ODTR), or the decision-making strategy that takes in the range of available measurements and biomarkers to identify interventions…
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Taxonomy
TopicsClinical practice guidelines implementation · Artificial Intelligence in Healthcare and Education · Delphi Technique in Research
