This study demonstrate the feasibility and clinical potential of applying a digital twin framework to chronic post-stroke aphasia, with the model successfully predicting more than half the variance in naming performance during language treatment. Through counterfactual simulation, we demonstrated that modifiable health factors exert measurable, bidirectional influences on predicted treatment outcomes, underscoring the role of systemic health in shaping language recovery. Although the individual effects of these factors were modest in magnitude, their cumulative influence on treatment gains illustrates how multiple small biological contributors can add up to shape meaningful differences in language outcomes. More broadly, these findings illustrate the potential value of digital twin models for aphasia treatment, particularly as a tool to integrate diverse biological factors and generate individualized, dynamically updated predictions.
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Busby et al. (Wed,) studied this question.
synapsesocial.com/papers/69a767dbbadf0bb9e87e2a32 — DOI: https://doi.org/10.64898/2026.02.03.26345022
Natalie Busby
University of South Carolina
Nicholas Riccardi
Stacey Sangtian
National Institutes of Health
University of South Carolina
Medical University of South Carolina
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