An Empirical Analysis of Different Machine Learning Techniques for Classification of EEG Signal to Detect Epileptic Seizure

Electroencephalogram (EEG) signal is a modest measure of electric flow in a human brain. It is responsible for information flow through the neurons in the brain which controls and monitors the full torso. Hence, to widening and in-depth understanding of effectiveness in EEG signal analysis is the primary focus of this paper. Moreover, machine learning techniques often proven as more efficacious compared to other techniques. To this effect, the present study primarily focuses on the analysis of EEG signal through the classification of the processed data by discrete wavelet transform (DWT) for identification of epileptic seizures using machine learning techniques. Machine learning techniques like neural networks and support vector machine (SVM) are the focus of this paper for classification of EEG signals to label epilepsy patients. In neural networks, the empirical analysis gives focus on multi-layer perceptron, probabilistic neural network, radial basis function neural networks, and recurrent neural networks. Further, for multi-layer neural networks different propagation training algorithms are examined such as BackPropagation, Resilient-Propagation, and Quick-Propagation. For SVM, several kernel methods are considered such as Linear, Polynomial, and RBF for empirical analysis. The analysis confirms with the present setting that, recurrent neural network performs poor in all the cases of prepared epilepsy data. However, SVM and probabilistic neural networks are quite effective and competitive.

[1]  Abdulhamit Subasi,et al.  Wavelet neural network classification of EEG signals by using AR model with MLE preprocessing , 2005, Neural Networks.

[2]  Weidong Zhou,et al.  Epileptic EEG classification based on extreme learning machine and nonlinear features , 2011, Epilepsy Research.

[3]  Donald C. Wunsch,et al.  Recurrent neural network based prediction of epileptic seizures in intra- and extracranial EEG , 2000, Neurocomputing.

[4]  Elif Derya Übeyli,et al.  Recurrent neural networks employing Lyapunov exponents for EEG signals classification , 2005, Expert Syst. Appl..

[5]  U. Rajendra Acharya,et al.  Application of Non-Linear and Wavelet Based Features for the Automated Identification of Epileptic EEG signals , 2012, Int. J. Neural Syst..

[6]  Clodoaldo Ap. M. Lima,et al.  Tackling EEG signal classification with least squares support vector machines: A sensitivity analysis study , 2010, Comput. Biol. Medicine.

[7]  Abdulhamit Subasi,et al.  EEG signal classification using PCA, ICA, LDA and support vector machines , 2010, Expert Syst. Appl..

[8]  Hasan Ocak,et al.  Automatic detection of epileptic seizures in EEG using discrete wavelet transform and approximate entropy , 2009, Expert Syst. Appl..

[9]  R. Schiffer,et al.  Recurrent neural network-based approach for early recognition of Alzheimer's disease in EEG , 2001, Clinical Neurophysiology.

[10]  Andreas Schulze-Bonhage,et al.  Epileptic seizure predictors based on computational intelligence techniques: A comparative study with 278 patients , 2014, Comput. Methods Programs Biomed..

[11]  Ali H. Shoeb,et al.  A machine-learning algorithm for detecting seizure termination in scalp EEG , 2011, Epilepsy & Behavior.

[12]  Elif Derya íbeyli Lyapunov exponents/probabilistic neural networks for analysis of EEG signals , 2010 .

[13]  Saeid Sanei,et al.  EEG signal processing , 2000, Clinical Neurophysiology.

[14]  Lalit Gupta,et al.  Investigating the prediction capabilities of the simple recurrent neural network on real temporal sequences , 2000, Pattern Recognit..

[15]  Mahmut Ozer,et al.  EEG signals classification using the K-means clustering and a multilayer perceptron neural network model , 2011, Expert Syst. Appl..

[16]  N Pradhan,et al.  Detection of seizure activity in EEG by an artificial neural network: a preliminary study. , 1996, Computers and biomedical research, an international journal.

[17]  Martin A. Riedmiller,et al.  A direct adaptive method for faster backpropagation learning: the RPROP algorithm , 1993, IEEE International Conference on Neural Networks.

[18]  Ernst Fernando Lopes Da Silva Niedermeyer,et al.  Electroencephalography, basic principles, clinical applications, and related fields , 1982 .

[19]  Elif Derya Übeyli Lyapunov exponents/probabilistic neural networks for analysis of EEG signals , 2010, Expert Syst. Appl..

[20]  Lalit Gupta,et al.  Classification of temporal sequences via prediction using the simple recurrent neural network , 2000, Pattern Recognit..

[21]  R Ferri,et al.  Chaotic behavior of EEG slow-wave activity during sleep. , 1996, Electroencephalography and clinical neurophysiology.

[22]  Yan Li,et al.  Classification of EEG Signals Using Sampling Techniques and Least Square Support Vector Machines , 2009, RSKT.

[23]  Elif Derya Übeyli Analysis of EEG signals by implementing eigenvector methods/recurrent neural networks , 2009, Digit. Signal Process..

[24]  K Lehnertz,et al.  Non-linear time series analysis of intracranial EEG recordings in patients with epilepsy--an overview. , 1999, International journal of psychophysiology : official journal of the International Organization of Psychophysiology.

[25]  Nello Cristianini,et al.  An Introduction to Support Vector Machines and Other Kernel-based Learning Methods , 2000 .

[26]  Elif Derya Übeyli,et al.  Adaptive neuro-fuzzy inference system for classification of EEG signals using wavelet coefficients , 2005, Journal of Neuroscience Methods.

[27]  Jukka Saarinen,et al.  Waveform detection with RBF network - Application to automated EEG analysis , 1998, Neurocomputing.

[28]  U. Rajendra Acharya,et al.  Use of principal component analysis for automatic classification of epileptic EEG activities in wavelet framework , 2012, Expert Syst. Appl..

[29]  A. Walker Electroencephalography, Basic Principles, Clinical Applications and Related Fields , 1982 .

[30]  Clodoaldo Ap. M. Lima,et al.  Kernel machines for epilepsy diagnosis via EEG signal classification: A comparative study , 2011, Artif. Intell. Medicine.

[31]  Elif Derya íbeyli Recurrent neural networks employing Lyapunov exponents for analysis of ECG signals , 2010 .

[32]  P. Wen,et al.  Analysis and classification of EEG signals using a hybrid clustering technique , 2010, IEEE/ICME International Conference on Complex Medical Engineering.

[33]  Weidong Zhou,et al.  Automatic Seizure Detection Using Wavelet Transform and SVM in Long-Term Intracranial EEG , 2012, IEEE Transactions on Neural Systems and Rehabilitation Engineering.

[34]  Fernando Lopes da Silva,et al.  Comprar Niedermeyer's Electroencephalography, 6/e (Basic Principles, Clinical Applications, and Related Fields ) | Fernando Lopes Da Silva | 9780781789424 | Lippincott Williams & Wilkins , 2010 .

[35]  Priyanka,et al.  Genetic algorithms tuned expert model for detection of epileptic seizures from EEG signatures , 2014, Appl. Soft Comput..

[36]  Pineda,et al.  Generalization of back-propagation to recurrent neural networks. , 1987, Physical review letters.

[37]  Hojjat Adeli,et al.  A probabilistic neural network for earthquake magnitude prediction , 2009, Neural Networks.

[38]  Hojjat Adeli,et al.  Principal Component Analysis-Enhanced Cosine Radial Basis Function Neural Network for Robust Epilepsy and Seizure Detection , 2008, IEEE Transactions on Biomedical Engineering.

[39]  Elif Derya Übeyli Combined neural network model employing wavelet coefficients for EEG signals classification , 2009, Digit. Signal Process..

[40]  Kenneth Revett,et al.  EEG Signal Classification Using Wavelet Feature Extraction and Neural Networks , 2006, IEEE John Vincent Atanasoff 2006 International Symposium on Modern Computing (JVA'06).

[41]  B. Sidda Reddy,et al.  International Journal of Applied Engineering Research , 2018 .

[42]  K Lehnertz,et al.  Indications of nonlinear deterministic and finite-dimensional structures in time series of brain electrical activity: dependence on recording region and brain state. , 2001, Physical review. E, Statistical, nonlinear, and soft matter physics.

[43]  Nurettin Acir,et al.  Automatic detection of epileptiform events in EEG by a three-stage procedure based on artificial neural networks , 2005, IEEE Transactions on Biomedical Engineering.

[44]  Manoranjan Paul,et al.  Epileptic seizure detection by analyzing EEG signals using different transformation techniques , 2014, Neurocomputing.

[45]  Kaushik Majumdar,et al.  Human scalp EEG processing: Various soft computing approaches , 2011, Appl. Soft Comput..

[46]  Nello Cristianini,et al.  Support vector and kernel machines , 2001 .

[47]  Maryam Vatankhah,et al.  Perceptual pain classification using ANFIS adapted RBF kernel support vector machine for therapeutic usage , 2013, Appl. Soft Comput..

[48]  O. Ozdamar,et al.  Wavelet preprocessing for automated neural network detection of EEG spikes , 1995 .

[49]  Jeff Heaton Programming Neural Networks in Java , 2002 .

[50]  H. Adeli,et al.  Analysis of EEG records in an epileptic patient using wavelet transform , 2003, Journal of Neuroscience Methods.

[51]  Yan Li,et al.  A novel statistical algorithm for multiclass EEG signal classification , 2014, Eng. Appl. Artif. Intell..

[52]  Bijaya K. Panigrahi,et al.  A comparative study of wavelet families for EEG signal classification , 2011, Neurocomputing.

[53]  U. Rajendra Acharya,et al.  Automated EEG analysis of epilepsy: A review , 2013, Knowl. Based Syst..

[54]  Elif Derya Übeyli Recurrent neural networks employing Lyapunov exponents for analysis of ECG signals , 2010, Expert Syst. Appl..

[55]  Yann LeCun,et al.  Classification of patterns of EEG synchronization for seizure prediction , 2009, Clinical Neurophysiology.

[56]  Nello Cristianini,et al.  An Introduction to Support Vector Machines and Other Kernel-based Learning Methods , 2000 .

[57]  Qi Xu,et al.  Fuzzy support vector machine for classification of EEG signals using wavelet-based features. , 2009, Medical engineering & physics.

[58]  Elif Derya íbeyli Least squares support vector machine employing model-based methods coefficients for analysis of EEG signals , 2010 .