Brain topography

Using Machine Learning to Identify Changes in Brain Communication Pathways in Stroke Patients from Resting Brain Scans

Updated

Abstract

Stroke patients showed significant differences in white matter connectivity compared to healthy controls.

  • There were notable decreases in connectivity in the genu and body of the corpus callosum, and the left anterior corona radiata in stroke patients.
  • Contrastingly, an increase in connectivity was found in the left superior longitudinal fasciculus region.
  • Stroke patients had reduced Regional Homogeneity (ReHo) values in the corpus callosum regions, indicating less coordinated activity.
  • Machine learning classification models demonstrated strong validity, with an AUC of 0.89 for Degree Centrality (DC) and 0.98 for ReHo.
  • These findings could reveal changes in functional connectivity in specific white matter areas after stroke, potentially serving as biomarkers for rehabilitation.

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