School of Information Science and Engineering, Shandong Normal University, Jinan 250358, P. R. China.
Department of Electrical Engineering and Information Technology, Shandong University of Science and Technology, Jinan 250031, P. R. China.
Int J Neural Syst. 2020 Nov;30(11):2050017. doi: 10.1142/S0129065720500173. Epub 2020 May 23.
Feature selection plays a vital role in the detection and discrimination of epileptic seizures in electroencephalogram (EEG) signals. The state-of-the-art EEG classification techniques commonly entail the extraction of the multiple features that would be fed into classifiers. For some techniques, the feature selection strategies have been used to reduce the dimensionality of the entire feature space. However, most of these approaches focus on the performance of classifiers while neglecting the association between the feature and the EEG activity itself. To enhance the inner relationship between the feature subset and the epileptic EEG task with a promising classification accuracy, we propose a machine learning-based pipeline using a novel feature selection algorithm built upon a knockoff filter. First, a number of temporal, spectral, and spatial features are extracted from the raw EEG signals. Second, the proposed feature selection algorithm is exploited to obtain the optimal subgroup of features. Afterwards, three classifiers including [Formula: see text]-nearest neighbor (KNN), random forest (RF) and support vector machine (SVM) are used. The experimental results on the Bonn dataset demonstrate that the proposed approach outperforms the state-of-the-art techniques, with accuracy as high as for normal and interictal EEG discrimination and for interictal and ictal EEG classification. Meanwhile, it has achieved satisfactory sensitivity (95.67% in average), specificity (98.83% in average), and accuracy (98.89% in average) over the Freiburg dataset.
特征选择在脑电图 (EEG) 信号中癫痫发作的检测和区分中起着至关重要的作用。最先进的 EEG 分类技术通常需要提取多个特征,然后将这些特征输入到分类器中。对于一些技术,特征选择策略已被用于降低整个特征空间的维度。然而,这些方法大多侧重于分类器的性能,而忽略了特征与 EEG 活动本身之间的关联。为了提高特征子集与具有有前途的分类准确性的癫痫 EEG 任务之间的内在关系,我们提出了一种基于机器学习的流水线,使用基于 knockoff 滤波器的新型特征选择算法。首先,从原始 EEG 信号中提取出许多时间、频谱和空间特征。其次,利用所提出的特征选择算法获得最优特征子集。然后,使用三种分类器,包括 K 最近邻 (KNN)、随机森林 (RF) 和支持向量机 (SVM)。在 Bonn 数据集上的实验结果表明,所提出的方法优于最先进的技术,正常和间期 EEG 区分的准确率高达 ,间期和癫痫 EEG 分类的准确率高达 。同时,在弗莱堡数据集上实现了令人满意的灵敏度(平均 95.67%)、特异性(平均 98.83%)和准确性(平均 98.89%)。