Li Junhui, Zhou Weidong, Yuan Shasha, Zhang Yanli, Li Chengcheng, Wu Qi
1 School of Information Science and Engineering, Shandong University, Jinan 250100, P. R. China.
2 Suzhou Institute of Shandong University, Suzhou 215123, P. R. China.
Int J Neural Syst. 2016 Feb;26(1):1550035. doi: 10.1142/S0129065715500355. Epub 2015 Sep 14.
Automatic seizure detection has played an important role in the monitoring, diagnosis and treatment of epilepsy. In this paper, a patient specific method is proposed for seizure detection in the long-term intracranial electroencephalogram (EEG) recordings. This seizure detection method is based on sparse representation with online dictionary learning and elastic net constraint. The online learned dictionary could sparsely represent the testing samples more accurately, and the elastic net constraint which combines the 11-norm and 12-norm not only makes the coefficients sparse but also avoids over-fitting problem. First, the EEG signals are preprocessed using wavelet filtering and differential filtering, and the kernel function is applied to make the samples closer to linearly separable. Then the dictionaries of seizure and nonseizure are respectively learned from original ictal and interictal training samples with online dictionary optimization algorithm to compose the training dictionary. After that, the test samples are sparsely coded over the learned dictionary and the residuals associated with ictal and interictal sub-dictionary are calculated, respectively. Eventually, the test samples are classified as two distinct categories, seizure or nonseizure, by comparing the reconstructed residuals. The average segment-based sensitivity of 95.45%, specificity of 99.08%, and event-based sensitivity of 94.44% with false detection rate of 0.23/h and average latency of -5.14 s have been achieved with our proposed method.
自动癫痫发作检测在癫痫的监测、诊断和治疗中发挥了重要作用。本文提出了一种针对长期颅内脑电图(EEG)记录进行癫痫发作检测的个性化方法。这种癫痫发作检测方法基于具有在线字典学习和弹性网约束的稀疏表示。在线学习的字典能够更准确地稀疏表示测试样本,而结合了1范数和2范数的弹性网约束不仅使系数稀疏,还避免了过拟合问题。首先,使用小波滤波和差分滤波对EEG信号进行预处理,并应用核函数使样本更接近线性可分。然后,利用在线字典优化算法分别从原始发作期和发作间期训练样本中学习发作和非发作的字典,以构成训练字典。之后,对测试样本在学习到的字典上进行稀疏编码,并分别计算与发作期和发作间期子字典相关的残差。最终,通过比较重构残差将测试样本分为癫痫发作和非癫痫发作两个不同类别。我们提出的方法实现了基于段的平均灵敏度为95.45%、特异性为99.08%,基于事件的灵敏度为94.44%,误检率为0.23/h,平均潜伏期为-5.14秒。