Journal article

Seizure detection using seizure probability estimation: Comparison of features used to detect seizures

L Kuhlmann, AN Burkitt, MJ Cook, K Fuller, DB Grayden, L Seiderer, IMY Mareels

Annals of Biomedical Engineering | Published : 2009

Abstract

This paper analyses seizure detection features and their combinations using a probability-based scalp EEG seizure detection framework developed by Marc Saab and Jean Gotman. Our method was evaluated on 525 h of data, including 88 seizures in 21 patients. The individual performances of the three features used by Saab and Gotman were compared to six alternative features, and combinations of these nine features were analyzed in order to find a superior detector. On a testing set with the combination of their three features, Saab and Gotman reported a sensitivity of 0.78, a false positive rate of 0.86/h, and a median detection delay of 9.8 s. Based on 10-fold cross-validation the testing perform..

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Grants

Awarded by Australian Research Council


Funding Acknowledgements

This work was supported by an Australian Research Council Linkage Project Grant (LP0560684), The Bionic Ear Institute and St. Vincent's Hospital Melbourne. We are grateful for the EEG data provided by the patients, and to the St. Vincent's Hospital Melbourne Neurophysiology Clinic for collecting the data. EEG data collection was approved by the St. Vincent's Hospital Melbourne Ethics Committee. We also thank Michael Eager for helping to format the manuscript.