Article ID Journal Published Year Pages File Type
558913 Biomedical Signal Processing and Control 2012 8 Pages PDF
Abstract

Epilepsy, a neurological disorder in which patients suffer from recurring seizures, affects approximately 1% of the world population. In spite of available drug and surgical treatment options, more than 25% of individuals with epilepsy have seizures that are uncontrollable. For these patients with intractable epilepsy, the unpredictability of seizure occurrence underlies an enhanced risk of sudden unexpected death or morbidity. A system that could warn the patient of the impending event or trigger an antiepileptic device would dramatically increase the quality of life for those patients. Here, we proposed a patient-specific algorithm for possible seizure warning using machine learning classification of 34 algorithmic features derived from EEG–ECG recordings. We evaluated our algorithm on unselected and continuous recordings of 12 patients (total of 108 seizures and 3178-h). Good out-of-sample performances were observed around 25% of the patients with an average preictal period around 30 min and independently of the EEG type (scalp or intracranial). Inspection of the most discriminative EEG–ECG features revealed that good classification rates reflected specific physiological precursors, particularly related to certain stages of sleep. From these observations, we conclude that our algorithmic strategy enables a quantitative way to identify “pro-ictal” states with a high risk of seizure generation.

► The risk of epileptic seizures was evaluated with a multi-feature system. ► We propose a machine learning classification of 34 features from EEG-ECG recordings. ► Good out-of-sample performances were observed for around 25% of the patients. ► Good rates reflected specific physiological precursors related to some sleep stages. ► Our strategy enables a quantitative way to identify “pro-ictal” epileptic states.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
Authors
, , , , , , ,