Literature DB >> 23627588

Application of non-linear and wavelet based features for the automated identification of epileptic EEG signals.

U Rajendra Acharya1, S Vinitha Sree, Ang Peng Chuan Alvin, Ratna Yanti, Jasjit S Suri.   

Abstract

Epilepsy, a neurological disorder, is characterized by the recurrence of seizures. Electroencephalogram (EEG) signals, which are used to detect the presence of seizures, are non-linear and dynamic in nature. Visual inspection of the EEG signals for detection of normal, interictal, and ictal activities is a strenuous and time-consuming task due to the huge volumes of EEG segments that have to be studied. Therefore, non-linear methods are being widely used to study EEG signals for the automatic monitoring of epileptic activities. The aim of our work is to develop a Computer Aided Diagnostic (CAD) technique with minimal pre-processing steps that can classify all the three classes of EEG segments, namely normal, interictal, and ictal, using a small number of highly discriminating non-linear features in simple classifiers. To evaluate the technique, segments of normal, interictal, and ictal EEG segments (100 segments in each class) were used. Non-linear features based on the Higher Order Spectra (HOS), two entropies, namely the Approximation Entropy (ApEn) and the Sample Entropy (SampEn), and Fractal Dimension and Hurst Exponent were extracted from the segments. Significant features were selected using the ANOVA test. After evaluating the performance of six classifiers (Decision Tree, Fuzzy Sugeno Classifier, Gaussian Mixture Model, K-Nearest Neighbor, Support Vector Machine, and Radial Basis Probabilistic Neural Network) using a combination of the selected features, we found that using a set of all the selected six features in the Fuzzy classifier resulted in 99.7% classification accuracy. We have demonstrated that our technique is capable of achieving high accuracy using a small number of features that accurately capture the subtle differences in the three different types of EEG (normal, interictal, and ictal) segments. The technique can be easily written as a software application and used by medical professionals without any extensive training and cost. Such software can evolve into an automatic seizure monitoring application in the near future and can aid the doctors in providing better and timely care for the patients suffering from epilepsy.

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Year:  2012        PMID: 23627588     DOI: 10.1142/S0129065712500025

Source DB:  PubMed          Journal:  Int J Neural Syst        ISSN: 0129-0657            Impact factor:   5.866


  21 in total

1.  A machine learning framework involving EEG-based functional connectivity to diagnose major depressive disorder (MDD).

Authors:  Wajid Mumtaz; Syed Saad Azhar Ali; Mohd Azhar Mohd Yasin; Aamir Saeed Malik
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2.  Predicting state transitions in brain dynamics through spectral difference of phase-space graphs.

Authors:  Patrick Luckett; Elena Pavelescu; Todd McDonald; Lee Hively; Juan Ochoa
Journal:  J Comput Neurosci       Date:  2018-10-12       Impact factor: 1.621

3.  Cerebrovascular pattern improved by ozone autohemotherapy: an entropy-based study on multiple sclerosis patients.

Authors:  Filippo Molinari; Daniele Rimini; William Liboni; U Rajendra Acharya; Marianno Franzini; Sergio Pandolfi; Giovanni Ricevuti; Francesco Vaiano; Luigi Valdenassi; Vincenzo Simonetti
Journal:  Med Biol Eng Comput       Date:  2016-10-12       Impact factor: 2.602

4.  Automated Detection of Alzheimer's Disease Using Brain MRI Images- A Study with Various Feature Extraction Techniques.

Authors:  U Rajendra Acharya; Steven Lawrence Fernandes; Joel En WeiKoh; Edward J Ciaccio; Mohd Kamil Mohd Fabell; U John Tanik; V Rajinikanth; Chai Hong Yeong
Journal:  J Med Syst       Date:  2019-08-09       Impact factor: 4.460

5.  Classification of epileptic seizures using wavelet packet log energy and norm entropies with recurrent Elman neural network classifier.

Authors:  S Raghu; N Sriraam; G Pradeep Kumar
Journal:  Cogn Neurodyn       Date:  2016-09-12       Impact factor: 5.082

6.  A deep learning approach in automated detection of schizophrenia using scalogram images of EEG signals.

Authors:  Zülfikar Aslan; Mehmet Akin
Journal:  Phys Eng Sci Med       Date:  2021-11-25

7.  An optimum allocation sampling based feature extraction scheme for distinguishing seizure and seizure-free EEG signals.

Authors:  Sachin Taran; Varun Bajaj; Siuly Siuly
Journal:  Health Inf Sci Syst       Date:  2017-10-27

8.  Hybrid Convolutional Neural Network for Localization of Epileptic Focus Based on iEEG.

Authors:  Linfeng Sui; Xuyang Zhao; Qibin Zhao; Toshihisa Tanaka; Jianting Cao
Journal:  Neural Plast       Date:  2021-04-27       Impact factor: 3.599

Review 9.  Automated Detection of Hypertension Using Physiological Signals: A Review.

Authors:  Manish Sharma; Jaypal Singh Rajput; Ru San Tan; U Rajendra Acharya
Journal:  Int J Environ Res Public Health       Date:  2021-05-29       Impact factor: 3.390

10.  Automated detection of schizophrenia using optimal wavelet-based l 1 norm features extracted from single-channel EEG.

Authors:  Manish Sharma; U Rajendra Acharya
Journal:  Cogn Neurodyn       Date:  2021-01-15       Impact factor: 3.473

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