Ponencia en Congreso:
Epilepsy seizure onset detection applying 1-NN classifier based on statistical parameters

Resumen

"Epilepsy is a disease caused by an excessive discharge of a group of neurons in the cerebral cortex. Extracting this information using EEG signals is an ongoing challenge in biomedical signal processing. In this paper, a new method is proposed for onset seizure detection in epileptic EEG signals based on parameters from the t-location-scale distribution coupled with the variance and the Pearson correlation coefficient. The 1-nearest neighbor classifier achieved a 91% sensitivity (True positive rate) and 95% specificity (True Negative Rate) with a delay of 4.5 seconds (on average) in the 45 signals analyzed, which suggests that the proposed methodology is potentially useful for seizure onset detection in epileptic EEG signals."

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Palabras clave

ELECTROENCEFALOGRAFIA, PROCESAMIENTO DE SEÑALES DIGITALES, EPILEPSIA

Citación

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