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EEG synchronization measures are early outcome predictors in comatose patients after cardiac arrest
Authors:Frédéric Zubler  Andreas Steimer  Rebekka Kurmann  Mojtaba Bandarabadi  Jan Novy  Heidemarie Gast  Mauro Oddo  Kaspar Schindler  Andrea O. Rossetti
Affiliation:1. Department of Neurology, Inselspital, Bern University Hospital, University of Bern, Bern, Switzerland;2. Department of Clinical Neurosciences, Lausanne University Hospital and University of Lausanne, Lausanne, Switzerland;3. Department of Intensive Care Medicine, Lausanne University Hospital and University of Lausanne, Lausanne, Switzerland
Abstract:

Objective

Outcome prognostication in comatose patients after cardiac arrest (CA) remains a major challenge. Here we investigated the prognostic value of combinations of linear and non-linear bivariate EEG synchronization measures.

Methods

94 comatose patients with EEG within 24 h after CA were included. Clinical outcome was assessed at 3 months using the Cerebral Performance Categories (CPC). EEG synchronization between the left and right parasagittal, and between the frontal and parietal brain regions was assessed with 4 different quantitative measures (delta power asymmetry, cross-correlation, mutual information, and transfer entropy). 2/3 of patients were used to assess the predictive power of all possible combinations of these eight features (4 measures × 2 directions) using cross-validation. The predictive power of the best combination was tested on the remaining 1/3 of patients.

Results

The best combination for prognostication consisted of 4 of the 8 features, and contained linear and non-linear measures. Predictive power for poor outcome (CPC 3–5), measured with the area under the ROC curve, was 0.84 during cross-validation, and 0.81 on the test set. At specificity of 1.0 the sensitivity was 0.54, and the accuracy 0.81.

Conclusion

Combinations of EEG synchronization measures can contribute to early prognostication after CA. In particular, combining linear and non-linear measures is important for good predictive power.

Significance

Quantitative methods might increase the prognostic yield of currently used multi-modal approaches.
Keywords:AP  anterior–posterior axis  AUC  area under the ROC curve  CA  cardiac arrest  CC  cross-correlation  CPC  Glasgow–Pittsburg Cerebral Performance Categories  LR  leftright axis  MI  mutual information  qEEG  quantitative electroencephalography  RDP  relative delta power  ROC  receiver operating characteristic curve  TE  transfer entropy  TTM  targeted temperature management  Quantitative EEG  Synchronization  Prognostication  Anoxic-ischemic encephalopathy
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