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Automatic Epileptic Seizure Detection in EEG Signals Using Multi-Domain Feature Extraction and Nonlinear Analysis

机译:使用多域特征提取和非线性分析的EEG信号自动癫痫发作检测

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Epileptic seizure detection is commonly implemented by expert clinicians with visual observation of electroencephalography (EEG) signals, which tends to be time consuming and sensitive to bias. The epileptic detection in most previous research suffers from low power and unsuitability for processing large datasets. Therefore, a computerized epileptic seizure detection method is highly required to eradicate the aforementioned problems, expedite epilepsy research and aid medical professionals. In this work, we propose an automatic epilepsy diagnosis framework based on the combination of multi-domain feature extraction and nonlinear analysis of EEG signals. Firstly, EEG signals are pre-processed by using the wavelet threshold method to remove the artifacts. We then extract representative features in the time domain, frequency domain, time-frequency domain and nonlinear analysis features based on the information theory. These features are further extracted in five frequency sub-bands based on the clinical interest, and the dimension of the original feature space is then reduced by using both a principal component analysis and an analysis of variance. Furthermore, the optimal combination of the extracted features is identified and evaluated via different classifiers for the epileptic seizure detection of EEG signals. Finally, the performance of the proposed method is investigated by using a public EEG database at the University Hospital Bonn, Germany. Experimental results demonstrate that the proposed epileptic seizure detection method can achieve a high average accuracy of 99.25%, indicating a powerful method in the detection and classification of epileptic seizures. The proposed seizure detection scheme is thus hoped to eliminate the burden of expert clinicians when they are processing a large number of data by visual observation and to speed-up the epilepsy diagnosis.
机译:癫痫性癫痫发作检测通常由专业临床医生通过对脑电图(EEG)信号进行目测来实现,这往往既耗时又对偏见敏感。先前大多数研究中的癫痫检测都存在功耗低和不适合处理大型数据集的问题。因此,迫切需要一种计算机化的癫痫发作检测方法来消除上述问题,加速癫痫研究并帮助医学专业人员。在这项工作中,我们提出了一种基于多域特征提取和脑电信号非线性分析相结合的自动癫痫诊断框架。首先,利用小波阈值方法对脑电信号进行预处理,去除伪影。然后,根据信息理论,提取时域,频域,时频域和非线性分析特征中的代表性特征。根据临床兴趣,在五个频率子带中进一步提取这些特征,然后通过使用主成分分析和方差分析来减小原始特征空间的尺寸。此外,通过不同的分类器识别和评估提取特征的最佳组合,以用于癫痫性脑电信号检测。最后,通过使用德国波恩大学医院的公共EEG数据库研究了该方法的性能。实验结果表明,所提出的癫痫病发作检测方法可达到99.25%的较高平均准确度,表明在癫痫病发作的检测和分类中有力的方法。因此,希望提出的癫痫发作检测方案消除专家临床医生在通过视觉观察处理大量数据时的负担,并加快癫痫的诊断速度。

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