Outcome prediction with resting-state functional connectivity after cardiac arrest.
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BORIS DOI
Date of Publication
July 16, 2020
Publication Type
Article
Division/Institute
Contributor
Subject(s)
Series
Scientific reports
ISSN or ISBN (if monograph)
2045-2322
Publisher
Springer Nature
Language
English
Publisher DOI
PubMed ID
32678212
Description
Predicting outcome in comatose patients after successful cardiopulmonary resuscitation is challenging. Our primary aim was to assess the potential contribution of resting-state-functional magnetic resonance imaging (RS-fMRI) in predicting neurological outcome. RS-fMRI was used to evaluate functional and effective connectivity within the default mode network in a cohort of 90 comatose patients and their impact on functional neurological outcome after 3 months. The RS-fMRI processing protocol comprises the evaluation of functional and effective connectivity within the default mode network. Seed-to-voxel and ROI-to-ROI feature analysis was performed as starting point for a supervised machine-learning approach. Classification of the Cerebral Performance Category (CPC) 1-3 (good to acceptable outcome) versus CPC 4-5 (adverse outcome) achieved a positive predictive value of 91.7%, sensitivity of 90.2%, and accuracy of 87.8%. A direct link to the level of consciousness and outcome after 3 months was identified for measures of segregation in the precuneus, in medial and right frontal regions. Thalamic connectivity appeared significantly reduced in patients without conscious response. Decreased within-network connectivity in the default mode network and within cortico-thalamic circuits correlated with clinical outcome after 3 months. Our results indicate a potential role of these markers for decision-making in comatose patients early after cardiac arrest.
File(s)
File | File Type | Format | Size | License | Publisher/Copright statement | Content | |
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s41598-020-68683-y.pdf | Adobe PDF | 1.1 MB | published |