痴呆症患者脑电图活动的工作记忆分类增强:比较研究

N. Al-Qazzaz, Sawal Hamid Bin Mohd Ali, Siti Anom Ahmad
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引用次数: 0

摘要

本研究的目的是根据背景脑电图(EEG)活动来区分5例血管性痴呆患者()、15例脑卒中后轻度认知障碍患者()和15例健康对照者()的工作记忆()。本研究展示了利用小波预处理去噪消除脑电信号伪影的方法。本研究主要探讨了谱熵()、置换熵()和近似熵()。为了改进使用k近邻(NN)分类器方案的分类,将-分解()作为降维技术的模糊邻域保持分析与改进的二元引力搜索()优化算法作为信道选择方法进行了比较研究。采用降维技术和通道选择算法,将神经网络的分类准确率分别从86.67%提高到88.09%和90.52%。根据研究结果,可靠地增强了对、、和参与者的歧视。因此,小波变换、熵特征、IBGSA和神经网络分类器提供了一种有效的痴呆指数,用于观察脑电背景活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Working Memory Classification Enhancement of EEG Activity in Dementia: A Comparative Study
The purpose of the current investigation is to distinguish between working memory ( ) in five patients with vascular dementia ( ), fifteen post-stroke patients with mild cognitive impairment ( ), and fifteen healthy control individuals ( ) based on background electroencephalography (EEG) activity. The elimination of EEG artifacts using wavelet (WT) pre-processing denoising is demonstrated in this study. In the current study, spectral entropy ( ), permutation entropy ( ), and approximation entropy ( ) were all explored. To improve the  classification using the k-nearest neighbors ( NN) classifier scheme, a comparative study of using fuzzy neighbourhood preserving analysis with -decomposition ( ) as a dimensionality reduction technique and the improved binary gravitation search ( ) optimization algorithm as a channel selection method has been conducted. The NN classification accuracy was increased from 86.67% to 88.09% and 90.52% using the  dimensionality reduction technique and the  channel selection algorithm, respectively. According to the findings,  reliably enhances  discrimination of , , and  participants. Therefore, WT, entropy features, IBGSA and NN classifiers provide a valid dementia index for looking at EEG background activity in patients with  and .  
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