Discrimination between Dementia Groups and Healthy Elderlies Using Scalp-Recorded-EEG-Based Brain Functional Connectivity Networks

Sakura Nishijima, T. Yada, T. Yamazaki, Y. Kuroiwa, M. Nakane, K. Fujino, T. Hirai, Y. Baba, S. M. Yamada, Sho Tsukiyama
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引用次数: 1

Abstract

Objective: To establish a practical method for discriminating dementia groups and healthy elderlies, by using scalp-recorded electroencephalograms (EEGs). Methods: 16-ch EEGs were recorded during resting state for 39 dementia groups and 11 healthy elderlies. The connectivity between any two electrodes was estimated by synchronization likelihood (SL). The brain networks were constructed by normalized SL values. The present leave-one-out cross validation (LOOCV) required the Euclidean distance between any two subjects having 120-dimensional vectors concerned with the SL values for six frequency bands. In order to investigate factors which would affect the LOOCV results, principal component analysis (PCA) was applied to all the subjects. Results: The accuracy for the upper alpha yielded more than 80% and 70% in the dementia groups and the healthy elderlies, respectively. The LOOCV result could be explained in terms of brain networks such as executive control network (ECN) and default mode network (DMN) characterized by factor loadings of principal components. Conclusions: Dementia groups and healthy elderlies could be characterized by principal components of SL values between all the electrode pairs, even less connections, which revealed disruption and preservation of DMN and ECN. Significance: This study will provide a simple and practical method for discriminating dementia groups from healthy elderlies by scalp-recorded EEGs.
基于头皮记录脑电图的脑功能连接网络对痴呆组和健康老年人的区分
目的:建立一种实用的用头皮记录脑电图(eeg)区分痴呆人群与健康老年人的方法。方法:对39例痴呆组和11例健康老年人静息状态下的16-ch脑电图进行记录。通过同步似然(SL)估计任意两个电极之间的连通性。用归一化的SL值构建脑网络。目前的留一交叉验证(LOOCV)要求任何两个受试者之间的欧几里得距离具有120维向量,涉及6个频段的SL值。为了探讨影响LOOCV结果的因素,对所有受试者进行主成分分析(PCA)。结果:在痴呆组和健康老年人中,上α值的准确率分别超过80%和70%。LOOCV的结果可以用脑网络如执行控制网络(ECN)和默认模式网络(DMN)来解释,这些网络以主成分的因子负荷为特征。结论:痴呆组和健康老年人的所有电极对之间均存在主成分的SL值,甚至连通性更少,显示DMN和ECN的破坏和保存。意义:本研究将提供一种简单实用的通过头皮记录脑电图区分痴呆组和健康老年人的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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