Department of Biomedical Engineering, Al-Khwarizmi College of Engineering, University of Baghdad, Baghdad 47146, Iraq.
Department of Electrical, Electronic and Systems Engineering, Faculty of Engineering and Built Environment, Universiti Kebangsaan Malaysia, UKM, Bangi 43600, Selangor, Malaysia.
Sensors (Basel). 2023 Apr 11;23(8):3889. doi: 10.3390/s23083889.
The second leading cause of death and one of the most common causes of disability in the world is stroke. Researchers have found that brain-computer interface (BCI) techniques can result in better stroke patient rehabilitation. This study used the proposed motor imagery (MI) framework to analyze the electroencephalogram (EEG) dataset from eight subjects in order to enhance the MI-based BCI systems for stroke patients. The preprocessing portion of the framework comprises the use of conventional filters and the independent component analysis (ICA) denoising approach. Fractal dimension (FD) and Hurst exponent (Hur) were then calculated as complexity features, and Tsallis entropy (TsEn) and dispersion entropy (DispEn) were assessed as irregularity parameters. The MI-based BCI features were then statistically retrieved from each participant using two-way analysis of variance (ANOVA) to demonstrate the individuals' performances from four classes (left hand, right hand, foot, and tongue). The dimensionality reduction algorithm, Laplacian Eigenmap (LE), was used to enhance the MI-based BCI classification performance. Utilizing k-nearest neighbors (KNN), support vector machine (SVM), and random forest (RF) classifiers, the groups of post-stroke patients were ultimately determined. The findings show that LE with RF and KNN obtained 74.48% and 73.20% accuracy, respectively; therefore, the integrated set of the proposed features along with ICA denoising technique can exactly describe the proposed MI framework, which may be used to explore the four classes of MI-based BCI rehabilitation. This study will help clinicians, doctors, and technicians make a good rehabilitation program for people who have had a stroke.
中风是全球第二大致死原因和最常见的致残原因之一。研究人员发现,脑机接口 (BCI) 技术可以使中风患者得到更好的康复。本研究使用所提出的运动想象 (MI) 框架来分析来自 8 名受试者的脑电图 (EEG) 数据集,以增强基于 MI 的中风患者 BCI 系统。该框架的预处理部分包括使用常规滤波器和独立成分分析 (ICA) 去噪方法。然后计算分形维数 (FD) 和赫斯特指数 (Hur) 作为复杂性特征,评估 Tsallis 熵 (TsEn) 和散布熵 (DispEn) 作为不规则性参数。然后使用双向方差分析 (ANOVA) 从每位参与者中统计检索基于 MI 的 BCI 特征,以展示来自四个类别的个体表现(左手、右手、脚和舌头)。降维算法,拉普拉斯特征映射 (LE),用于增强基于 MI 的 BCI 分类性能。使用 K 最近邻 (KNN)、支持向量机 (SVM) 和随机森林 (RF) 分类器,最终确定了中风后患者组。研究结果表明,LE 与 RF 和 KNN 的准确率分别为 74.48%和 73.20%;因此,所提出的特征集与 ICA 去噪技术的集成可以准确描述所提出的 MI 框架,这可能用于探索基于 MI 的 BCI 康复的四个类别。这项研究将帮助临床医生、医生和技术人员为中风患者制定良好的康复计划。