Classification of propofol-induced sedation states using brain connectivity analysis.
Annu Int Conf IEEE Eng Med Biol Soc
; 2018: 1-4, 2018 Jul.
Article
em En
| MEDLINE
| ID: mdl-30440245
connectivity measurements can provide key information about ongoing brain processes. In this paper, we propose to investigate the performance of the binary classification of Propofol-induced sedation states using partial granger causality analysis. Based on the brain connectivity measurements obtained from EEG signals in a database that contains four sedation states: baseline, mild, moderate, and recovery, we consider eight sensors and evaluate the area under the ROC curve with five classifiers: the k-nearest neighbor (density method), support vector machine, linear discriminant analysis, Bayesian discriminant analysis, and a model based on extreme learning machine. The results support the conclusion that the different Propofol-induced sedation states can be identified with an AUC of around 0.75, by considering signal segments of only 4 second. These results highlight the discriminant power that can be obtained from scalp level connectivity measures for online brain monitoring.
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MEDLINE
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Encéfalo
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Propofol
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En
Ano de publicação:
2018
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Article