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基于谱功率及谱功率比值从颅内脑电图/头皮脑电图进行低复杂度癫痫发作预测

Low-Complexity Seizure Prediction From iEEG/sEEG Using Spectral Power and Ratios of Spectral Power.

作者信息

Zhang Zisheng, Parhi Keshab K

出版信息

IEEE Trans Biomed Circuits Syst. 2016 Jun;10(3):693-706. doi: 10.1109/TBCAS.2015.2477264. Epub 2015 Oct 26.

Abstract

Prediction of seizures is a difficult problem as the EEG patterns are not wide-sense stationary and change from seizure to seizure, electrode to electrode, and from patient to patient. This paper presents a novel patient-specific algorithm for prediction of seizures in epileptic patients from either one or two single-channel or bipolar channel intra-cranial or scalp electroencephalogram (EEG) recordings with low hardware complexity. Spectral power features are extracted and their ratios are computed. For each channel, a total of 44 features including 8 absolute spectral powers, 8 relative spectral powers and 28 spectral power ratios are extracted every two seconds using a 4-second window with a 50% overlap. These features are then ranked and selected in a patient-specific manner using a two-step feature selection. Selected features are further processed by a second-order Kalman filter and then input to a linear support vector machine (SVM) classifier. The algorithm is tested on the intra-cranial EEG (iEEG) from the Freiburg database and scalp EEG (sEEG) from the MIT Physionet database. The Freiburg database contains 80 seizures among 18 patients in 427 hours of recordings. The MIT EEG database contains 78 seizures from 17 children in 647 hours of recordings. It is shown that the proposed algorithm can achieve a sensitivity of 100% and an average false positive rate (FPR) of 0.0324 per hour for the iEEG (Freiburg) database and a sensitivity of 98.68% and an average FPR of 0.0465 per hour for the sEEG (MIT) database. These results are obtained with leave-one-out cross-validation where the seizure being tested is always left out from the training set. The proposed algorithm also has a low complexity as the spectral powers can be computed using FFT. The area and power consumption of the proposed linear SVM are 2 to 3 orders of magnitude less than a radial basis function kernel SVM (RBF-SVM) classifier. Furthermore, the total energy consumption of a system using linear SVM is reduced by 8% to 23% compared to system using RBF-SVM.

摘要

癫痫发作的预测是一个难题,因为脑电图模式并非广义平稳,且会因发作类型、电极位置以及患者个体的不同而变化。本文提出了一种新颖的针对特定患者的算法,用于根据单通道或双通道的颅内或头皮脑电图(EEG)记录来预测癫痫患者的发作,该算法硬件复杂度低。提取频谱功率特征并计算其比率。对于每个通道,使用一个4秒的窗口,重叠率为50%,每两秒提取总共44个特征,包括8个绝对频谱功率、8个相对频谱功率和28个频谱功率比率。然后,通过两步特征选择以特定于患者的方式对这些特征进行排序和选择。选定的特征进一步由二阶卡尔曼滤波器处理,然后输入到线性支持向量机(SVM)分类器中。该算法在来自弗莱堡数据库的颅内脑电图(iEEG)和麻省理工学院生理信号数据库的头皮脑电图(sEEG)上进行了测试。弗莱堡数据库在427小时的记录中有18名患者的80次发作。麻省理工学院脑电图数据库在647小时的记录中有17名儿童的78次发作。结果表明,对于iEEG(弗莱堡)数据库,所提出的算法可以实现100%的灵敏度和每小时0.0324的平均误报率(FPR);对于sEEG(麻省理工学院)数据库,灵敏度为98.68%,平均FPR为每小时0.0465。这些结果是通过留一法交叉验证获得的,其中被测试的发作始终被排除在训练集中。所提出的算法复杂度也较低,因为频谱功率可以使用快速傅里叶变换(FFT)来计算。所提出的线性支持向量机的面积和功耗比径向基函数核支持向量机(RBF - SVM)分类器小2到3个数量级。此外,与使用RBF - SVM的系统相比,使用线性支持向量机的系统总能耗降低了8%至23%。

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