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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Epileptic seizure classifications of single-channel scalp EEG data using wavelet-based features and SVM
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Epileptic seizure classifications of single-channel scalp EEG data using wavelet-based features and SVM

机译:使用基于小波的特征和SVM的单通道头皮EEG数据的癫痫癫痫发布分类

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In this study, wavelet-based features of single-channel scalp EEGs recorded from subjects with intractable seizure are examined for epileptic seizure classification. The wavelet-based features extracted from scalp EEGs are simply based on detail and approximation coefficients obtained from the discrete wavelet transform. Support vector machine (SVM), one of the most commonly used classifiers, is applied to classify vectors of wavelet-based features of scalp EEGs into either seizure or non-seizure class. In patient-based epileptic seizure classification, a training data set used to train SVM classifiers is composed of wavelet-based features of scalp EEGs corresponding to the first epileptic seizure event. Overall, the excellent performance on patient-dependent epileptic seizure classification is obtained with the average accuracy, sensitivity, and specificity of, respectively, 0.9687, 0.7299, and 0.9813. The vector composed of two wavelet-based features of scalp EEGs provide the best performance on patient-dependent epileptic seizure classification in most cases, i.e., 19 cases out of 24. The wavelet-based features corresponding to the 32-64, 8-16, and 4-8 Hz subbands of scalp EEGs are the mostly used features providing the best performance on patient-dependent classification. Furthermore, the performance on both patient-dependent and patient-independent epileptic seizure classifications are also validated using tenfold cross-validation. From the patient-independent epileptic seizure classification validated using tenfold cross-validation, it is shown that the best classification performance is achieved using the wavelet-based features corresponding to the 64-128 and 4-8 Hz subbands of scalp EEGs.
机译:在本研究中,检查从受试者记录的单通道头皮EEG的基于小波的特征,用于癫痫癫痫发作分类。从头皮EEG提取的基于小波的特征简单地基于从离散小波变换获得的细节和近似系数。支持向量机(SVM)是最常用的分类器之一,应用于将Scalp EEG的基于小波的特征的向量分类为癫痫发作或非癫痫发作类。在基于患者的癫痫发作分类中,用于训练SVM分类器的训练数据集由对应于第一癫痫癫痫发作事件的头皮EEG的基于小波的特征组成。总的来说,获得了患者依赖性癫痫癫痫发作分类的优异性能,分别为0.9687,0.7299和0.9813的平均精度,敏感性和特异性获得。由Scalp EEG的两个小波的特征组成的载体在大多数情况下为患者依赖性癫痫癫痫发作分类提供了最佳性能,即19例,其中24例。基于小波的特征对应于32-64,8-16 SPARP EEGS的4-8 Hz子带是主要使用的特征,为患者相关的分类提供最佳性能。此外,还使用十倍交叉验证验证了患者依赖性和患者无关的癫痫癫痫发作分类的性能。通过使用十倍交叉验证验证的患者独立的癫痫癫痫发作分类,示出了使用对应于SPARP EEG的64-128和4-8 Hz子带的基于小波的特征来实现最佳分类性能。

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