Literature DB >> 23567810

Preprocessing effects of 22 linear univariate features on the performance of seizure prediction methods.

Jalil Rasekhi1, Mohammad Reza Karami Mollaei, Mojtaba Bandarabadi, Cesar A Teixeira, Antonio Dourado.   

Abstract

Combining multiple linear univariate features in one feature space and classifying the feature space using machine learning methods could predict epileptic seizures in patients suffering from refractory epilepsy. For each patient, a set of twenty-two linear univariate features were extracted from 6 electroencephalogram (EEG) signals to make a 132 dimensional feature space. Preprocessing and normalization methods of the features, which affect the output of the seizure prediction algorithm, were studied in terms of alarm sensitivity and false prediction rate (FPR). The problem of choosing an optimal preictal time was tackled using 4 distinct values of 10, 20, 30, and 40 min. The seizure prediction problem has traditionally been considered a two-class classification problem, which is also exercised here. These studies have been conducted on the features obtained from 10 patients. For each patient, 48 different combinations of methods are compared to find the best configuration. Normalization by dividing by the maximum and smoothing are found to be the best configuration in most of the patients. The results also indicate that applying machine learning methods on a multidimensional feature space of 22 univariate features predicted seizure onsets with high performance. On average, the seizures were predicted in 73.9% of the cases (34 out of 46 in 737.9h of test data), with a FPR of 0.15 h(-1).
Copyright © 2013 Elsevier B.V. All rights reserved.

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Year:  2013        PMID: 23567810     DOI: 10.1016/j.jneumeth.2013.03.019

Source DB:  PubMed          Journal:  J Neurosci Methods        ISSN: 0165-0270            Impact factor:   2.390


  8 in total

1.  Real-time epileptic seizure prediction based on online monitoring of pre-ictal features.

Authors:  Hoda Sadeghzadeh; Hossein Hosseini-Nejad; Sina Salehi
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2.  SVM-Based System for Prediction of Epileptic Seizures From iEEG Signal.

Authors:  Han-Tai Shiao; Vladimir Cherkassky; Jieun Lee; Brandon Veber; Edward E Patterson; Benjamin H Brinkmann; Gregory A Worrell
Journal:  IEEE Trans Biomed Eng       Date:  2016-06-29       Impact factor: 4.538

3.  Automatic epileptic seizure detection using scalp EEG and advanced artificial intelligence techniques.

Authors:  Paul Fergus; David Hignett; Abir Hussain; Dhiya Al-Jumeily; Khaled Abdel-Aziz
Journal:  Biomed Res Int       Date:  2015-01-29       Impact factor: 3.411

4.  Epileptic Seizure Prediction based on Ratio and Differential Linear Univariate Features.

Authors:  Jalil Rasekhi; Mohammad Reza Karami Mollaei; Mojtaba Bandarabadi; César A Teixeira; António Dourado
Journal:  J Med Signals Sens       Date:  2015 Jan-Mar

5.  A personalized and evolutionary algorithm for interpretable EEG epilepsy seizure prediction.

Authors:  Mauro F Pinto; Adriana Leal; Fábio Lopes; António Dourado; Pedro Martins; César A Teixeira
Journal:  Sci Rep       Date:  2021-02-09       Impact factor: 4.379

6.  Interpretable EEG seizure prediction using a multiobjective evolutionary algorithm.

Authors:  Mauro Pinto; Tiago Coelho; Adriana Leal; Fábio Lopes; António Dourado; Pedro Martins; César Teixeira
Journal:  Sci Rep       Date:  2022-03-15       Impact factor: 4.379

7.  Epileptic Seizures Prediction Using Machine Learning Methods.

Authors:  Syed Muhammad Usman; Muhammad Usman; Simon Fong
Journal:  Comput Math Methods Med       Date:  2017-12-19       Impact factor: 2.238

8.  BECTS Substate Classification by Granger Causality Density Based Support Vector Machine Model.

Authors:  Xi-Jian Dai; Qiang Xu; Jianping Hu; QiRui Zhang; Yin Xu; Zhiqiang Zhang; Guangming Lu
Journal:  Front Neurol       Date:  2019-11-14       Impact factor: 4.003

  8 in total

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