| Literature DB >> 24657096 |
César Alexandre Teixeira1, Bruno Direito2, Mojtaba Bandarabadi2, Michel Le Van Quyen3, Mario Valderrama3, Bjoern Schelter4, Andreas Schulze-Bonhage5, Vincent Navarro6, Francisco Sales7, António Dourado2.
Abstract
The ability of computational intelligence methods to predict epileptic seizures is evaluated in long-term EEG recordings of 278 patients suffering from pharmaco-resistant partial epilepsy, also known as refractory epilepsy. This extensive study in seizure prediction considers the 278 patients from the European Epilepsy Database, collected in three epilepsy centres: Hôpital Pitié-là-Salpêtrière, Paris, France; Universitätsklinikum Freiburg, Germany; Centro Hospitalar e Universitário de Coimbra, Portugal. For a considerable number of patients it was possible to find a patient specific predictor with an acceptable performance, as for example predictors that anticipate at least half of the seizures with a rate of false alarms of no more than 1 in 6 h (0.15 h⁻¹). We observed that the epileptic focus localization, data sampling frequency, testing duration, number of seizures in testing, type of machine learning, and preictal time influence significantly the prediction performance. The results allow to face optimistically the feasibility of a patient specific prospective alarming system, based on machine learning techniques by considering the combination of several univariate (single-channel) electroencephalogram features. We envisage that this work will serve as benchmark data that will be of valuable importance for future studies based on the European Epilepsy Database.Entities:
Keywords: Artificial neural networks; EPILEPSIAE project; Epileptic seizure prediction; European Epilepsy Database; Support vector machines
Mesh:
Year: 2014 PMID: 24657096 DOI: 10.1016/j.cmpb.2014.02.007
Source DB: PubMed Journal: Comput Methods Programs Biomed ISSN: 0169-2607 Impact factor: 5.428