Publication | Closed Access
Real-Time Epileptic Seizure Prediction Using AR Models and Support Vector Machines
257
Citations
42
References
2010
Year
EngineeringMachine LearningBiomedical Signal AnalysisSupport Vector MachineData SciencePattern RecognitionSupport Vector MachinesSvm ClassifierStatisticsNonlinear Time SeriesPrediction ModellingPredictive AnalyticsForecastingSignal ProcessingBrain-computer InterfaceEeg Signal ProcessingEeg Time SeriesBraincomputer InterfaceEeg Feature ExtractionKernel Method
This paper addresses the prediction of epileptic seizures from the online analysis of EEG data. This problem is of paramount importance for the realization of monitoring/control units to be implanted on drug-resistant epileptic patients. The proposed solution relies in a novel way on autoregressive modeling of the EEG time series and combines a least-squares parameter estimator for EEG feature extraction along with a support vector machine (SVM) for binary classification between preictal/ictal and interictal states. This choice is characterized by low computational requirements compatible with a real-time implementation of the overall system. Moreover, experimental results on the Freiburg dataset exhibited correct prediction of all seizures (100 % sensitivity) and, due to a novel regularization of the SVM classifier based on the Kalman filter, also a low false alarm rate.
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