4.7 Article

Multimodal Neural and Behavioral Data Predict Response to Rehabilitation in Chronic Poststroke Aphasia

Journal

STROKE
Volume 53, Issue 5, Pages 1606-1614

Publisher

LIPPINCOTT WILLIAMS & WILKINS
DOI: 10.1161/STROKEAHA.121.036749

Keywords

aphasia; language; machine learning; magnetic resonance imaging; neuroimaging; rehabilitation

Funding

  1. National Institutes of Health/National Institute on Deafness and Other Communication Disorders, Clinical Research Center Grant [P50DC012283]
  2. Institute for Health System Innovation Policy at Boston University
  3. Hariri Institute Artificial Intelligence Research Initiative

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This study used machine learning models to investigate the independent and complementary prognostic role of various factors in predicting language rehabilitation response in chronic poststroke aphasia patients. The results showed that functional connectivity of the brain at rest after stroke is an important predictor of treatment responsiveness, both alone and combined with other features.
Background: Poststroke recovery depends on multiple factors and varies greatly across individuals. Using machine learning models, this study investigated the independent and complementary prognostic role of different patient-related factors in predicting response to language rehabilitation after a stroke. Methods: Fifty-five individuals with chronic poststroke aphasia underwent a battery of standardized assessments and structural and functional magnetic resonance imaging scans, and received 12 weeks of language treatment. Support vector machine and random forest models were constructed to predict responsiveness to treatment using pretreatment behavioral, demographic, and structural and functional neuroimaging data. Results: The best prediction performance was achieved by a support vector machine model trained on aphasia severity, demographics, measures of anatomic integrity and resting-state functional connectivity (F1=0.94). This model resulted in a significantly superior prediction performance compared with support vector machine models trained on all feature sets (F1=0.82, P<0.001) or a single feature set (F1 range=0.68-0.84, P<0.001). Across random forest models, training on resting-state functional magnetic resonance imaging connectivity data yielded the best F1 score (F1=0.87). Conclusions: While behavioral, multimodal neuroimaging data and demographic information carry complementary information in predicting response to rehabilitation in chronic poststroke aphasia, functional connectivity of the brain at rest after stroke is a particularly important predictor of responsiveness to treatment, both alone and combined with other patient-related factors.

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