Department of Electrical Engineering, National Institute of Technology, Calicut, Kerala 673601, India.
Biomed Res Int. 2014;2014:450573. doi: 10.1155/2014/450573. Epub 2014 Jan 29.
This study proposes a method of automatic detection of epileptic seizure event and onset using wavelet based features and certain statistical features without wavelet decomposition. Normal and epileptic EEG signals were classified using linear classifier. For seizure event detection, Bonn University EEG database has been used. Three types of EEG signals (EEG signal recorded from healthy volunteer with eye open, epilepsy patients in the epileptogenic zone during a seizure-free interval, and epilepsy patients during epileptic seizures) were classified. Important features such as energy, entropy, standard deviation, maximum, minimum, and mean at different subbands were computed and classification was done using linear classifier. The performance of classifier was determined in terms of specificity, sensitivity, and accuracy. The overall accuracy was 84.2%. In the case of seizure onset detection, the database used is CHB-MIT scalp EEG database. Along with wavelet based features, interquartile range (IQR) and mean absolute deviation (MAD) without wavelet decomposition were extracted. Latency was used to study the performance of seizure onset detection. Classifier gave a sensitivity of 98.5% with an average latency of 1.76 seconds.
本研究提出了一种使用基于小波的特征和某些无需小波分解的统计特征自动检测癫痫发作事件和起始的方法。使用线性分类器对正常和癫痫 EEG 信号进行分类。对于癫痫发作事件检测,使用了波恩大学 EEG 数据库。对三种类型的 EEG 信号(睁眼健康志愿者记录的 EEG 信号、癫痫发作间期癫痫发作区的癫痫患者和癫痫发作期间的癫痫患者)进行了分类。计算了不同子带的能量、熵、标准差、最大值、最小值和平均值等重要特征,并使用线性分类器进行分类。通过特异性、敏感性和准确性来确定分类器的性能。总体准确率为 84.2%。在癫痫发作起始检测中,使用的数据库是 CHB-MIT 头皮 EEG 数据库。除了基于小波的特征外,还提取了无需小波分解的四分位距 (IQR) 和平均绝对偏差 (MAD)。潜伏期用于研究癫痫发作起始检测的性能。分类器的敏感性为 98.5%,平均潜伏期为 1.76 秒。