Performance assessment for EEG-based neonatal seizure detectors
- PMID: 20716492
- PMCID: PMC3036796
- DOI: 10.1016/j.clinph.2010.06.035
Performance assessment for EEG-based neonatal seizure detectors
Abstract
Objective: This study discusses an appropriate framework to measure system performance for the task of neonatal seizure detection using EEG. The framework is used to present an extended overview of a multi-channel patient-independent neonatal seizure detection system based on the Support Vector Machine (SVM) classifier.
Methods: The appropriate framework for performance assessment of neonatal seizure detectors is discussed in terms of metrics, experimental setups, and testing protocols. The neonatal seizure detection system is evaluated in this framework. Several epoch-based and event-based metrics are calculated and curves of performance are reported. A new metric to measure the average duration of a false detection is proposed to accompany the event-based metrics. A machine learning algorithm (SVM) is used as a classifier to discriminate between seizure and non-seizure EEG epochs. Two post-processing steps proposed to increase temporal precision and robustness of the system are investigated and their influence on various metrics is shown. The resulting system is validated on a large clinical dataset of 267h.
Results: In this paper, it is shown how a complete set of metrics and a specific testing protocol are necessary to extensively describe neonatal seizure detection systems, objectively assess their performance and enable comparison with existing alternatives. The developed system currently represents the best published performance to date with an ROC area of 96.3%. The sensitivity and specificity were ~90% at the equal error rate point. The system was able to achieve an average good detection rate of ~89% at a cost of 1 false detection per hour with an average false detection duration of 2.7 min.
Conclusions: It is shown that to accurately assess the performance of EEG-based neonatal seizure detectors and to facilitate comparison with existing alternatives, several metrics should be reported and a specific testing protocol should be followed. It is also shown that reporting only event-based metrics can be misleading as they do not always reflect the true performance of the system.
Significance: This is the first study to present a thorough method for performance assessment of EEG-based seizure detection systems. The evaluated SVM-based seizure detection system can greatly assist clinical staff, in a neonatal intensive care unit, to interpret the EEG.
Copyright © 2010 International Federation of Clinical Neurophysiology. Published by Elsevier Ireland Ltd. All rights reserved.
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Comment in
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Development of neonatal seizure detectors: an elusive _target and stretching measuring tapes.Clin Neurophysiol. 2011 Mar;122(3):435-437. doi: 10.1016/j.clinph.2010.07.021. Epub 2010 Aug 16. Clin Neurophysiol. 2011. PMID: 20719559 No abstract available.
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