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Automatic multimodal detection for long-term seizure documentation in epilepsy
Authors:F Fürbass  S Kampusch  E Kaniusas  J Koren  S Pirker  R Hopfengärtner  H Stefan  T Kluge  C Baumgartner
Institution:1. Center for Health & Bioresources, AIT Austrian Institute of Technology GmbH, Vienna, Austria;2. Institute of Electrodynamics, Microwave and Circuit Engineering, TU Wien, Vienna, Austria;3. Department of Neurology, General Hospital Hietzing with Neurological Center Rosenhuegel, Vienna, Austria;4. Department of Epileptology and Clinical Neurophysiology, Sigmund Freud University, Vienna, Austria;5. Karl Landsteiner Institute for Clinical Epilepsy Research and Cognitive Neurology, Vienna, Austria;6. Epilepsy Center, Department of Neurology, University Hospital Erlangen, Germany
Abstract:

Objective

This study investigated sensitivity and false detection rate of a multimodal automatic seizure detection algorithm and the applicability to reduced electrode montages for long-term seizure documentation in epilepsy patients.

Methods

An automatic seizure detection algorithm based on EEG, EMG, and ECG signals was developed. EEG/ECG recordings of 92 patients from two epilepsy monitoring units including 494 seizures were used to assess detection performance. EMG data were extracted by bandpass filtering of EEG signals. Sensitivity and false detection rate were evaluated for each signal modality and for reduced electrode montages.

Results

All focal seizures evolving to bilateral tonic-clonic (BTCS, n = 50) and 89% of focal seizures (FS, n = 139) were detected. Average sensitivity in temporal lobe epilepsy (TLE) patients was 94% and 74% in extratemporal lobe epilepsy (XTLE) patients. Overall detection sensitivity was 86%. Average false detection rate was 12.8 false detections in 24 h (FD/24 h) for TLE and 22 FD/24 h in XTLE patients. Utilization of 8 frontal and temporal electrodes reduced average sensitivity from 86% to 81%.

Conclusion

Our automatic multimodal seizure detection algorithm shows high sensitivity with full and reduced electrode montages.

Significance

Evaluation of different signal modalities and electrode montages paces the way for semi-automatic seizure documentation systems.
Keywords:Multimodal  Automatic  Seizure detection  Algorithm  ECG  EMG  EEG
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