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Published in: Journal of Clinical Monitoring and Computing 4/2014

01-08-2014 | Original Research

Prognostic value of EEG indexes for the Glasgow outcome scale of comatose patients in the acute phase

Authors: Luca Mesin, Paolo Costa

Published in: Journal of Clinical Monitoring and Computing | Issue 4/2014

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Abstract

The purpose of this work is the estimation of the Glasgow outcome scale (GOS) from a single continuous electroencephalogram (c-EEG) routinely recorded to monitor comatose patients in the neurosurgical intensive care unit. c-EEG was recorded from 13 patients in the acute phase: five with GOS = 5, four with GOS = 3 and four with GOS = 1. Different indexes were extracted from epochs of c-EEG (classical: amplitude and spectral estimators; non classical: from recurrence quantification analysis—RQA—and approximate entropy). Descriptors of different indexes (temporal variation and mean, standard deviation, skewness of the distribution across epochs) were used to train support vector machines to identify the correct GOS. We found classifiers allowing correct classification of the patients. Spectral indexes allowed to get optimal performances in classifying GOS 1 and 3. Nonlinear indexes (especially determinism from RQA) were optimal for identifying GOS = 5. Thus, the integration of information from classical/linear and nonlinear c-EEG descriptors in a multi-index classifier is important for GOS estimation.
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Metadata
Title
Prognostic value of EEG indexes for the Glasgow outcome scale of comatose patients in the acute phase
Authors
Luca Mesin
Paolo Costa
Publication date
01-08-2014
Publisher
Springer Netherlands
Published in
Journal of Clinical Monitoring and Computing / Issue 4/2014
Print ISSN: 1387-1307
Electronic ISSN: 1573-2614
DOI
https://doi.org/10.1007/s10877-013-9544-4

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