Kernel machines for epilepsy diagnosis via EEG signal classification: A comparative study

被引:44
作者
Lima, Clodoaldo A. M. [1 ]
Coelho, Andre L. V. [2 ]
机构
[1] Univ Sao Paulo, Informat Syst Program, Sch Arts Sci & Humanities, BR-03828000 Sao Paulo, Brazil
[2] Univ Fortaleza, Ctr Technol Sci, Grad Program Appl Informat, BR-60811905 Fortaleza, CE, Brazil
关键词
Kernel machines; Feature extraction; EEG signal classification; Epilepsy; SUPPORT VECTOR MACHINES; SELECTION; NETWORK;
D O I
10.1016/j.artmed.2011.07.003
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Objective: We carry out a systematic assessment on a suite of kernel-based learning machines while coping with the task of epilepsy diagnosis through automatic electroencephalogram (EEG) signal classification. Methods and materials: The kernel machines investigated include the standard support vector machine (SVM), the least squares SVM, the Lagrangian SVM, the smooth SVM, the proximal SVM, and the relevance vector machine. An extensive series of experiments was conducted on publicly available data, whose clinical EEG recordings were obtained from five normal subjects and five epileptic patients. The performance levels delivered by the different kernel machines are contrasted in terms of the criteria of predictive accuracy, sensitivity to the kernel function/parameter value, and sensitivity to the type of features extracted from the signal. For this purpose, 26 values for the kernel parameter (radius) of two well-known kernel functions (namely. Gaussian and exponential radial basis functions) were considered as well as 21 types of features extracted from the EEG signal, including statistical values derived from the discrete wavelet transform, Lyapunov exponents, and combinations thereof. Results: We first quantitatively assess the impact of the choice of the wavelet basis on the quality of the features extracted. Four wavelet basis functions were considered in this study. Then, we provide the average accuracy (i.e., cross-validation error) values delivered by 252 kernel machine configurations; in particular, 40%/35% of the best-calibrated models of the standard and least squares SVMs reached 100% accuracy rate for the two kernel functions considered. Moreover, we show the sensitivity profiles exhibited by a large sample of the configurations whereby one can visually inspect their levels of sensitiveness to the type of feature and to the kernel function/parameter value. Conclusions: Overall, the results evidence that all kernel machines are competitive in terms of accuracy, with the standard and least squares SVMs prevailing more consistently. Moreover, the choice of the kernel function and parameter value as well as the choice of the feature extractor are critical decisions to be taken, albeit the choice of the wavelet family seems not to be so relevant. Also, the statistical values calculated over the Lyapunov exponents were good sources of signal representation, but not as informative as their wavelet counterparts. Finally, a typical sensitivity profile has emerged among all types of machines, involving some regions of stability separated by zones of sharp variation, with some kernel parameter values clearly associated with better accuracy rates (zones of optimality). (C) 2011 Elsevier B.V. All rights reserved.
引用
收藏
页码:83 / 95
页数:13
相关论文
共 36 条
[1]   Indications of nonlinear deterministic and finite-dimensional structures in time series of brain electrical activity: Dependence on recording region and brain state [J].
Andrzejak, RG ;
Lehnertz, K ;
Mormann, F ;
Rieke, C ;
David, P ;
Elger, CE .
PHYSICAL REVIEW E, 2001, 64 (06) :8-061907
[2]   The epileptic process as nonlinear deterministic dynamics in a stochastic environment: an evaluation on mesial temporal lobe epilepsy [J].
Andrzejak, RG ;
Widman, G ;
Lehnertz, K ;
Rieke, C ;
David, P ;
Elger, CE .
EPILEPSY RESEARCH, 2001, 44 (2-3) :129-140
[3]  
[Anonymous], 2002, Least Squares Support Vector Machines, DOI DOI 10.1142/5089
[4]  
[Anonymous], 1998, Encyclopedia of Biostatistics
[5]  
Browne T.R., 2003, HDB EPILEPSY
[6]   Practical selection of SVM parameters and noise estimation for SVM regression [J].
Cherkassky, V ;
Ma, YQ .
NEURAL NETWORKS, 2004, 17 (01) :113-126
[7]  
Cristianini N., 2000, INTRO SUPPORT VECTOR, DOI DOI 10.1017/CBO9780511801389
[8]  
Ferri R, 1996, ELECTROEN CLIN NEURO, V99, P539
[9]  
Fung G., 2001, P 7 ACM SIGKDD INT C, P77
[10]   A neural-wavelet architecture for voice conversion [J].
Guido, Rodrigo Capobianco ;
Vieira, Lucimar Sasso ;
Barbon Junior, Sylvio ;
Sanchez, Fabricio Lopes ;
Maciel, Carlos Dias ;
Fonseca, Everthon Silva ;
Pereira, Jose Carlos .
NEUROCOMPUTING, 2007, 71 (1-3) :174-180