Sharma Priyanka, Khan Yusuf Uzzaman, Farooq Omar, Tripathi Manjari, Adeli Hojjat
Z. H. College of Engineering and Technology, Aligarh Muslim University, Aligarh, Uttar Pradesh, India.
Z. H. College of Engineering and Technology, Aligarh Muslim University, Aligarh, Uttar Pradesh, India
Clin EEG Neurosci. 2014 Oct;45(4):274-284. doi: 10.1177/1550059414535465. Epub 2014 Jun 16.
The detection of nonconvulsive seizures (NCSz) is a challenge because of the lack of physical symptoms, which may delay the diagnosis of the disease. Many researchers have reported automatic detection of seizures. However, few investigators have concentrated on detection of NCSz. This article proposes a method for reliable detection of NCSz. The electroencephalography (EEG) signal is usually contaminated by various nonstationary noises. Signal denoising is an important preprocessing step in the analysis of such signals. In this study, a new wavelet-based denoising approach using cubical thresholding has been proposed to reduce noise from the EEG signal prior to analysis. Three statistical features were extracted from wavelet frequency bands, encompassing the frequency range of 0 to 8, 8 to 16, 16 to 32, and 0 to 32 Hz. Extracted features were used to train linear classifier to discriminate between normal and seizure EEGs. The performance of the method was tested on a database of nine patients with 24 seizures in 80 hours of EEG recording. All the seizures were successfully detected, and false positive rate was found to be 0.7 per hour.
非惊厥性癫痫发作(NCSz)的检测是一项挑战,因为缺乏身体症状,这可能会延迟疾病的诊断。许多研究人员报告了癫痫发作的自动检测。然而,很少有研究人员专注于NCSz的检测。本文提出了一种可靠检测NCSz的方法。脑电图(EEG)信号通常会受到各种非平稳噪声的污染。信号去噪是此类信号分析中的一个重要预处理步骤。在本研究中,提出了一种基于小波的使用立方阈值的新去噪方法,以在分析之前减少EEG信号中的噪声。从小波频段提取了三个统计特征,涵盖0至8、8至16、16至32和0至32 Hz的频率范围。提取的特征用于训练线性分类器,以区分正常EEG和癫痫发作EEG。该方法的性能在一个包含9名患者、80小时EEG记录中有24次癫痫发作的数据库上进行了测试。所有癫痫发作均被成功检测到,发现假阳性率为每小时0.7次。