Title of article :
A multi-feature and multi-channel univariate selection process for seizure prediction
Author/Authors :
Maryann DʹAlessandro، نويسنده , , George Vachtsevanos، نويسنده , , Rosana Esteller، نويسنده , , Javier Echauz، نويسنده , , Stephen Cranstoun، نويسنده , , Greg Worrell، نويسنده , , Landi Parish، نويسنده , , Brian Litt، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Objective
To develop a prospective method for optimizing seizure prediction, given an array of implanted electrodes and a set of candidate quantitative features computed at each contact location.
Methods
The method employs a genetic-based selection process, and then tunes a probabilistic neural network classifier to predict seizures within a 10 min prediction horizon. Initial seizure and interictal data were used for training, and the remaining IEEG data were used for testing. The method continues to train and learn over time.
Results
Validation of these results over two workshop patients demonstrated a sensitivity of 100%, and 1.1 false positives per hour for Patient E, using a 2.4 s block predictor, and a failure of the method on Patient B.
Conclusions
This study demonstrates a prospective, exploratory implementation of a seizure prediction method designed to adapt to individual patients with a wide variety of pre-ictal patterns, implanted electrodes and seizure types. Its current performance is limited likely by the small number of input channels and quantitative features employed in this study, and segmentation of the data set into training and testing sets rather than using all continuous data available.
Significance
This technique theoretically has the potential to address the challenge presented by the heterogeneity of EEG patterns seen in medication-resistant epilepsy. A more comprehensive implementation utilizing all electrode sites, a broader feature library, and automated multi-feature fusion will be required to fully judge the methodʹs potential for predicting seizures.
Keywords :
Multiple channels , Multiple features , Feature extraction , Seizure prediction , classification
Journal title :
Clinical Neurophysiology
Journal title :
Clinical Neurophysiology