Detection of Epilepsy Using MFCC-Based Feature and XGBoost

This paper develops a MFCC-based feature for detection of epilepsy, since inspired by some methods in speech signal processing, and tests the reliability of the feature through experiments. Our experimental results show that the method using MFCC-based feature and XGBoost has a high accuracy of 99.5% in epilepsy detection, reaching the level of the state-of-the-art method. This work has some inspiration for exploring better epilepsy detection methods.

[1]  Julius Georgiou,et al.  Detection of epileptic electroencephalogram based on Permutation Entropy and Support Vector Machines , 2012, Expert Syst. Appl..

[2]  Maja Stikic,et al.  EEG-based classification of positive and negative affective states , 2014 .

[3]  Olga Sourina,et al.  EEG Based Stress Monitoring , 2015, 2015 IEEE International Conference on Systems, Man, and Cybernetics.

[4]  V. Srinivasan,et al.  Artificial Neural Network Based Epileptic Detection Using Time-Domain and Frequency-Domain Features , 2005, Journal of Medical Systems.

[5]  Jasmin Kevric,et al.  Performance evaluation of empirical mode decomposition, discrete wavelet transform, and wavelet packed decomposition for automated epileptic seizure detection and prediction , 2018, Biomed. Signal Process. Control..

[6]  Akash Dwivedi,et al.  International Journal of Advanced Research in Electrical , Electronics and Instrumentation Engineering , 2017 .

[7]  U. Rajendra Acharya,et al.  AUTOMATIC IDENTIFICATION OF EPILEPTIC EEG SIGNALS USING NONLINEAR PARAMETERS , 2009 .

[8]  Tianqi Chen,et al.  XGBoost: A Scalable Tree Boosting System , 2016, KDD.

[9]  Daniel Graupe,et al.  A neural-network-based detection of epilepsy , 2004, Neurological research.

[10]  A. Stancák,et al.  Altered theta oscillations in resting EEG of fibromyalgia syndrome patients , 2017, European journal of pain.

[11]  张国亮,et al.  Comparison of Different Implementations of MFCC , 2001 .

[12]  J. Friedman Stochastic gradient boosting , 2002 .

[13]  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..

[14]  Zheng Fang,et al.  Comparison of different implementations of MFCC , 2001 .

[15]  H. Adeli,et al.  Wavelet-based EEG processing for computer-aided seizure detection and epilepsy diagnosis , 2015, Seizure.

[16]  Pau-Choo Chung,et al.  Seizure detection on prolonged-EEG videos , 2008, 2008 IEEE International Symposium on Circuits and Systems.

[17]  S. B. Akben,et al.  Classification of multi-channel EEG signals for migraine detection. , 2016 .

[18]  U. Rajendra Acharya,et al.  Automated Diagnosis of epilepsy using CWT, HOS and Texture parameters , 2013, Int. J. Neural Syst..

[19]  U. Rajendra Acharya,et al.  Author's Personal Copy Biomedical Signal Processing and Control Automated Diagnosis of Epileptic Eeg Using Entropies , 2022 .

[20]  Olga Sourina,et al.  Real-time EEG-based emotion monitoring using stable features , 2015, The Visual Computer.

[21]  Serkan Kiranyaz,et al.  Automated patient-specific classification of long-term Electroencephalography , 2014, J. Biomed. Informatics.

[22]  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.

[23]  Kemal Polat,et al.  Classification of epileptiform EEG using a hybrid system based on decision tree classifier and fast Fourier transform , 2007, Appl. Math. Comput..

[24]  Yazdan Ahmad Qadri,et al.  Early Detection of Epilepsy using Automatic Speech Recognition , 2016 .