1.Study on nonlinear dynamic characteristic indexes of epileptic electroencephalography and electroencephalography subbands.
Ruimei HUANG ; Shouhong DU ; Ziyi CHEN ; Zhen ZHANG ; Yi ZHOU
Journal of Biomedical Engineering 2014;31(1):18-22
Electroencephalogram (EEG) is the primary tool in investigation of the brain science. It is necessary to carry out a deepgoing study into the characteristics and information hidden in EEGs to meet the needs of the clinical research. In this paper, we present a wavelet-nonlinear dynamic methodology for analysis of nonlinear characteristic of EEGs and delta, theta, alpha, and beta sub-bands. We therefore studied the effectiveness of correlation dimension (CD), largest Lyapunov exponen, and approximate entropy (ApEn) in differentiation between the interictal EEG and ictal EEG based on statistical significance of the differences. The results showed that the nonlinear dynamic char acteristic of EEG and EEG subbands could be used as effective identification statistics in detecting seizures.
Brain
;
physiopathology
;
Electroencephalography
;
Entropy
;
Epilepsy
;
physiopathology
;
Humans
;
Nonlinear Dynamics
;
Seizures
2.The recognition methodology study of epileptic EEGs based on support vector machine.
Ruimel HUANG ; Shouhong DU ; Ziyi CHEN ; Zhangzhen ; Zhouyi
Journal of Biomedical Engineering 2013;30(5):919-924
EEG recordings contain valuable physiological and pathological information in the process of seizure. The dynamic changes of brain electrical activity provide foundation and possibility for research and development of automatic detection system about epilepsy. In this paper, a nonlinear dynamic method is presented for analysis of the nonlinear dynamic characteristics of EEGs and delta, theta, alpha, and beta sub-bands of EEGs based on wavelet transform. The extracted feature is used as the input vector of a support vector machine (SVM) to construct classifiers. The results showed that the classification accuracy of SVM classifier based on nonlinear dynamic characteristics to classify the EEG into interictal EEGs and ictal EEGs reached 90% or higher. The support vector machine has good generalization in detecting the epilepsy EEG signals as a nonlinear classifier.
Algorithms
;
Artifacts
;
Electroencephalography
;
methods
;
Epilepsy
;
diagnosis
;
physiopathology
;
Humans
;
Nonlinear Dynamics
;
Signal Processing, Computer-Assisted
;
Support Vector Machine