Jaiswal Abeg Kumar, Banka Haider
Department of Computer Science and Engineering, Indian Institute of Technology (Indian School of Mines), Dhanbad 826004, India.
Biomed Mater Eng. 2017;28(2):141-157. doi: 10.3233/BME-171663.
Epilepsy is one of the most common neurological disorders caused by recurrent seizures. Electroencephalograms (EEGs) record neural activity and can detect epilepsy. Visual inspection of an EEG signal for epileptic seizure detection is a time-consuming process and may lead to human error; therefore, recently, a number of automated seizure detection frameworks were proposed to replace these traditional methods. Feature extraction and classification are two important steps in these procedures. Feature extraction focuses on finding the informative features that could be used for classification and correct decision-making. Therefore, proposing effective feature extraction techniques for seizure detection is of great significance.
Principal Component Analysis (PCA) is a dimensionality reduction technique used in different fields of pattern recognition including EEG signal classification. Global modular PCA (GModPCA) is a variation of PCA. In this paper, an effective framework with GModPCA and Support Vector Machine (SVM) is presented for epileptic seizure detection in EEG signals. The feature extraction is performed with GModPCA, whereas SVM trained with radial basis function kernel performed the classification between seizure and nonseizure EEG signals. Seven different experimental cases were conducted on the benchmark epilepsy EEG dataset. The system performance was evaluated using 10-fold cross-validation. In addition, we prove analytically that GModPCA has less time and space complexities as compared to PCA.
The experimental results show that EEG signals have strong inter-sub-pattern correlations. GModPCA and SVM have been able to achieve 100% accuracy for the classification between normal and epileptic signals. Along with this, seven different experimental cases were tested. The classification results of the proposed approach were better than were compared the results of some of the existing methods proposed in literature. It is also found that the time and space complexities of GModPCA are less as compared to PCA.
This study suggests that GModPCA and SVM could be used for automated epileptic seizure detection in EEG signal.
癫痫是由反复发作引起的最常见的神经系统疾病之一。脑电图(EEG)记录神经活动并可检测癫痫。通过目视检查EEG信号来检测癫痫发作是一个耗时的过程,并且可能导致人为错误;因此,最近提出了许多自动癫痫发作检测框架来取代这些传统方法。特征提取和分类是这些过程中的两个重要步骤。特征提取专注于找到可用于分类和正确决策的信息性特征。因此,提出有效的癫痫发作检测特征提取技术具有重要意义。
主成分分析(PCA)是一种降维技术,用于包括EEG信号分类在内的不同模式识别领域。全局模块化PCA(GModPCA)是PCA的一种变体。本文提出了一种基于GModPCA和支持向量机(SVM)的有效框架,用于EEG信号中的癫痫发作检测。使用GModPCA进行特征提取,而使用径向基函数核训练的SVM对癫痫发作和非癫痫发作的EEG信号进行分类。在基准癫痫EEG数据集上进行了七个不同的实验案例。使用10折交叉验证评估系统性能。此外,我们通过分析证明,与PCA相比,GModPCA具有更低的时间和空间复杂度。
实验结果表明,EEG信号具有很强的个体间模式相关性。GModPCA和SVM能够在正常信号和癫痫信号之间的分类中达到100%的准确率。与此同时,对七个不同的实验案例进行了测试。所提方法的分类结果优于文献中提出的一些现有方法的比较结果。还发现,与PCA相比,GModPCA的时间和空间复杂度更低。
本研究表明,GModPCA和SVM可用于EEG信号中癫痫发作的自动检测。