
pmid: 22361656
This paper presents a novel model-based patient-specific method for automatic detection of seizures in the intracranial EEG recordings. The proposed method overcomes the complexities in the practical implementation of the patient-specific approach of seizure detection. The method builds a seizure model (set of basis functions) for a priori known seizure (the template seizure pattern), and uses the statistically optimal null filters as a building block for the detection of similar seizures. The process of modeling the template seizure is fully automatic. Overall, the detection method involves the segmentation of the template seizure pattern, rejection of the redundant and noisy segments, extraction of features from the segments to generate a set of models, selection of the best seizure model, and training of the classifier. The trained classifier is used to detect similar seizures in the remaining data. The resulting seizure detection method was evaluated on a total of 304 h of single-channel depth EEG recordings from 14 patients. The system performance is further compared to the Qu-Gotman patient-specific system using the same data. A significant improvement in the proposed system, in terms of specificity, is observed over the compared method.
Seizures, Models, Neurological, Humans, Electroencephalography, Signal Processing, Computer-Assisted, Least-Squares Analysis, Signal-To-Noise Ratio, Sensitivity and Specificity, Electrodes, Implanted
Seizures, Models, Neurological, Humans, Electroencephalography, Signal Processing, Computer-Assisted, Least-Squares Analysis, Signal-To-Noise Ratio, Sensitivity and Specificity, Electrodes, Implanted
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