Abstract
The electroencephalogram (EEG), for measuring the electrophysiological activity of the brain, has been widely applied in automatic detection of epilepsy seizures. Various EEG-based seizure detection algorithms have already yielded high sensitivity, but training those algorithms requires a large amount of labelled data. Data labelling is often done with a lot of human efforts, which is very time-consuming. In this study, we propose a hybrid system integrating an unsupervised learning (UL) module and a supervised learning (SL) module, where the UL module can significantly reduce the workload of data labelling. For preliminary seizure screening, UL synthesizes amplitude-integrated EEG (aEEG) extraction, isolation forest-based anomaly detection, adaptive segmentation, and silhouette coefficient-based anomaly detection evaluation. The UL module serves to quickly locate the determinate subjects (seizure segments and seizure-free segments) and the indeterminate subjects (potential seizure candidates). Afterwards, more robust seizure detection for the indeterminate subjects is performed by the SL using an EasyEnsemble algorithm. EasyEnsemble, as a class-imbalance learning method, can potentially decrease the generalization error of the seizure-free segments. The proposed method can significantly reduce the workload of data labelling while guaranteeing satisfactory performance. The proposed seizure detection system is evaluated using the Children’s Hospital Boston - Massachusetts Institute of Technology (CHB-MIT) scalp EEG dataset, and it achieves a mean accuracy of 92.62%, a mean sensitivity of 95.55%, and a mean specificity of 92.57%. To the best of our knowledge, this is the first epilepsy seizure detection study employing the integration of both the UL and the SL modules, achieving a competitive performance superior or similar to that of the state-of-the-art methods.
Original language | English |
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Pages (from-to) | 915-924 |
Number of pages | 10 |
Journal | IEEE Transactions on Neural Systems and Rehabilitation Engineering |
Volume | 30 |
Issue number | 99 |
Early online date | Mar 2022 |
DOIs | |
Publication status | Published - 2022 |
Keywords
- Electroencephalography
- Feature extraction
- Forestry
- Anomaly detection
- Labeling
- Band-pass filters
- Low-pass filters
- seizure detection system
- EEG
- supervised learning
- anomaly detection
- aEEG
- unsupervised learning
- Forests
- Seizures/diagnosis
- Humans
- Algorithms
- Epilepsy/diagnosis
- Signal Processing, Computer-Assisted
- Child