Li Fangzhou, Matsumori Shoya, Egawa Naohiro, Yoshimoto Shusuke, Yamashiro Kotaro, Mizutani Haruo, Uchida Noriko, Kokuryu Atsuko, Kuzuya Akira, Kojima Ryosuke, Hayashi Yu, Takahashi Ryosuke
Department of Neurology, Kyoto University Graduate School of Medicine, Kyoto, Japan.
PGV, Inc., Tokyo, Japan.
Bioelectricity. 2022 Mar 15;4(1):3-11. doi: 10.1089/bioe.2021.0030. eCollection 2022 Mar.
Developing a screening method for mild cognitive impairment in the aging population and intervening early in the progression of dementia based on such a method, remains challenging. Electroencephalography (EEG) is a noninvasive and sensitive tool to assess the functional activity of the brain, and wireless and mobile EEG (wmEEG) could serve as an alternative screening technique that is widely tolerable in patients with dementia from the preclinical to severe stage.
Using wmEEG, we recorded bioelectrical activity (BA) from the forehead in 101 individuals with dementia and nondementia controls (NCs) during 4 tasks and investigated which task could differentiate dementia from NC.
We found significant differences in three power spectra of the time-frequency analysis (3-4, 5-7, and 17-23 Hz) between dementia and NC under an eyes-open condition and a significant consistent difference in a specific slow alpha power spectrum (6-8 Hz) between Alzheimer's disease (AD) and dementia with Lewy bodies (DLB) under an eyes-closed condition. These results were confirmed by classification analysis using a deep learning method based on the whole wmEEG data sets, in which the accuracy of discriminating dementia from NC under the eyes-open condition was higher than that under the eyes-closed condition (0.71 vs. 0.52, respectively). Moreover, the accuracy of discriminating AD from DLB under the eyes-closed condition was higher than that under the eyes-open condition (0.77 vs. 0.64, respectively).
The result of this pilot study suggests that wmEEG can be a useful tool for recording BA, and that analyzing BA may help to detect early dementia and discriminate dementia subtypes effectively and objectively.
为老年人群开发一种轻度认知障碍的筛查方法,并基于该方法在痴呆症进展早期进行干预,仍然具有挑战性。脑电图(EEG)是一种评估大脑功能活动的非侵入性且敏感的工具,而无线和移动脑电图(wmEEG)可作为一种替代筛查技术,在从临床前到重度阶段的痴呆症患者中广泛适用。
我们使用wmEEG记录了101名患有痴呆症的个体和非痴呆对照(NC)在4项任务期间前额的生物电活动(BA),并研究了哪项任务能够区分痴呆症和NC。
我们发现,在睁眼条件下,痴呆症患者和NC之间在时频分析的三个功率谱(3 - 4、5 - 7和17 - 23赫兹)上存在显著差异;在闭眼条件下,阿尔茨海默病(AD)和路易体痴呆(DLB)之间在特定的慢α功率谱(6 - 8赫兹)上存在显著且一致的差异。使用基于整个wmEEG数据集的深度学习方法进行分类分析,证实了这些结果,其中在睁眼条件下区分痴呆症和NC的准确率高于闭眼条件下(分别为0.71和0.52)。此外,在闭眼条件下区分AD和DLB的准确率高于睁眼条件下(分别为0.77和0.64)。
这项初步研究的结果表明,wmEEG可以成为记录BA的有用工具,并且分析BA可能有助于早期检测痴呆症并有效、客观地区分痴呆症亚型。