Electrocardiogram based neonatal seizure detection

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IEEE

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Greene B.R. and deChazal P. and Boylan G. and Connolly S. and Reilly R.B. 'Electrocardiogram based neonatal seizure detection' in IEEE Transactions on Biomedical Engineering, 54, (4), 2007, pp. 673 ? 681.

Abstract

A method for the detection of seizures in the newborn using the electrocardiogram (ECG) signal is presented. Using a database of eight recordings, a method was developed for automatically annotating each 1-min epoch as "nonseizure" or "seizure." The system uses a linear discriminant classifier to process 41 heartbeat timing interval features. Performance assessment of the method showed that on a patient-specific basis an average accuracy of 70.5% was achieved in detecting seizures with associated sensitivity of 62.2% and specificity of 71.8%. On a patient-independent basis the average accuracy was 68.3% with sensitivity of 54.6% and specificity of 77.3%. Shifting the decision threshold for the patient-independent classifier allowed an increase in sensitivity to 78.4% at the expense of decreased specificity (51.6%), leading to increased false detections. The results of our ECG-based method are comparable with those reported for EEG-based neonatal seizure detection systems and offer the benefit of an easier acquisition methodology for seizure detection

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Sponsor: Science Foundation Ireland

Sponsor: Health Research Board

Publisher: IEEE
Type of material: Journal Article