Behnam Morteza, Pourghassem Hossein
Digital Processing and Machine Vision Research Center, Najafabad Branch, Islamic Azad University, Najafabad, Iran; Department of Electrical Engineering, Najafabad Branch, Islamic Azad University, Najafabad, Iran.
Digital Processing and Machine Vision Research Center, Najafabad Branch, Islamic Azad University, Najafabad, Iran; Department of Electrical Engineering, Najafabad Branch, Islamic Azad University, Najafabad, Iran.
J Neurosci Methods. 2017 Jan 30;276:84-107. doi: 10.1016/j.jneumeth.2016.10.011. Epub 2016 Oct 18.
EEG signal analysis of pediatric patients plays vital role for making a decision to intervene in presurgical stages.
In this paper, an offline seizure detection algorithm based on definition of a seizure-specific wavelet (Seizlet) is presented. After designing the Seizlet, by forming cone of influence map of the EEG signal, four types of layouts are analytically designed that are called Seizure Modulus Maximas Patterns (SMMP). By mapping CorrEntropy Induced Metric (CIM) series, four structural features based on least square estimation of fitted non-tilt conic ellipse are extracted that are called CorrEntropy Ellipse Features (CEF). The parameters of the SMMP and CEF are tuned by employing a hybrid optimization algorithm based on honeybee hive optimization in combination with Las Vegas randomized algorithm and Elman recurrent classifier. Eventually, the optimal features by AdaBoost classifiers in a cascade structure are classified into the seizure and non-seizure signals.
The proposed algorithm is evaluated on 844h signals with 163 seizure events recorded from 23 patients with intractable seizure disorder and accuracy rate of 91.44% and false detection rate of 0.014 per hour are obtained by 7-channel EEG signals.
COMPARISON WITH EXISTING METHOD(S): To overcome the restrictions of general kernels and wavelet coefficient-based features, we designed the Seizlet as an exclusive kernel of seizure signal for first time. Also, the Seizlet-based patterns of EEG signals have been modeled to extract the seizure.
The reported results demonstrate that our proposed Seizlet is effectiveness to extract the patterns of the epileptic seizure.
儿科患者的脑电图(EEG)信号分析对于术前阶段的干预决策起着至关重要的作用。
本文提出了一种基于癫痫特异性小波(Seizlet)定义的离线癫痫检测算法。设计Seizlet后,通过形成EEG信号的影响锥图,解析设计了四种类型的布局,称为癫痫模极大值模式(SMMP)。通过映射相关熵诱导度量(CIM)序列,提取了基于拟合非倾斜圆锥椭圆最小二乘估计的四个结构特征,称为相关熵椭圆特征(CEF)。采用基于蜂群优化与拉斯维加斯随机算法和埃尔曼递归分类器相结合的混合优化算法对SMMP和CEF的参数进行调整。最终,通过级联结构中的AdaBoost分类器将最优特征分类为癫痫发作和非癫痫发作信号。
该算法在23例顽固性癫痫患者记录的844小时信号上进行评估,7通道EEG信号的准确率为91.44%,每小时误检率为0.014。
为克服通用核和基于小波系数特征的限制,我们首次将Seizlet设计为癫痫信号的专属核。此外,对基于Seizlet的EEG信号模式进行建模以提取癫痫发作。
报告结果表明,我们提出的Seizlet在提取癫痫发作模式方面是有效的。