Department of Electrical Engineering, The University of Lahore, Lahore 54000, Pakistan.
Department of Biomedical Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran.
J Healthc Eng. 2021 Aug 27;2021:6283900. doi: 10.1155/2021/6283900. eCollection 2021.
For drug resistance patients, removal of a portion of the brain as a cause of epileptic seizures is a surgical remedy. However, before surgery, the detailed analysis of the epilepsy localization area is an essential and logical step. The Electroencephalogram (EEG) signals from these areas are distinct and are referred to as focal, while the EEG signals from other normal areas are known as nonfocal. The visual inspection of multiple channels for detecting the focal EEG signal is time-consuming and prone to human error. To address this challenge, we propose a novel method based on differential operator and Tunable Q-factor wavelet transform (TQWT) to distinguish the focal and nonfocal signals. For this purpose, first, the EEG signal was differenced and then decomposed by TQWT. Second, several entropy-based features were derived from the TQWT subbands. Third, the efficacy of the six binary feature selection algorithms, binary bat algorithm (BBA), binary differential evolution (BDE) algorithm, firefly algorithm (FA), genetic algorithm (GA), grey wolf optimization (GWO), and particle swarm optimization (PSO), was evaluated. In the end, the selected features were fed to several machine learning and neural network classifiers. We observed that the PSO with neural networks provides an effective solution for the application of focal EEG signal detection. The proposed framework resulted in an average classification accuracy of 97.68%, a sensitivity of 97.26%, and a specificity of 98.11% in a tenfold cross-validation strategy, which is higher than the state of the art used in the public Bern-Barcelona EEG database.
对于耐药性患者,作为癫痫发作病因的大脑部分切除是一种手术治疗方法。然而,在手术前,对癫痫定位区域的详细分析是一个必不可少且合乎逻辑的步骤。这些区域的脑电图 (EEG) 信号是明显的,被称为局灶性,而来自其他正常区域的 EEG 信号则称为非局灶性。通过多个通道进行视觉检查以检测局灶性 EEG 信号既耗时又容易出错。为了解决这个挑战,我们提出了一种基于差分算子和可调 Q 因子小波变换 (TQWT) 的新方法来区分局灶性和非局灶性信号。为此,首先对 EEG 信号进行差分,然后通过 TQWT 进行分解。其次,从 TQWT 子带中提取了几个基于熵的特征。然后,评估了六种二进制特征选择算法(二进制蝙蝠算法 (BBA)、二进制差分进化算法 (BDE)、萤火虫算法 (FA)、遗传算法 (GA)、灰狼优化算法 (GWO) 和粒子群优化算法 (PSO))的效果。最后,将选定的特征输入到几种机器学习和神经网络分类器中。我们观察到,PSO 与神经网络相结合为局灶性 EEG 信号检测的应用提供了有效的解决方案。该框架在十折交叉验证策略中的平均分类准确率为 97.68%,灵敏度为 97.26%,特异性为 98.11%,高于公共 Bern-Barcelona EEG 数据库中使用的最新技术。