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Brain variability in dynamic resting-state networks identified by fuzzy entropy: a scalp EEG study

Authors :
Peng Xu
Xianjun Zhu
Yajing Si
Chanli Yi
Fali Li
Zehong Cao
Dezhong Yao
Zhenglin Yang
Yuanyuan Liao
Yangsong Zhang
Lin Jiang
Li, Fali
Jiang, Lin
Liao, Yuanyuan
Si, Yajing
Yi, Chanli
Zhang, Yangsong
Zhu, Xianjun
Yang, Zhenglin
Yao, Dezhong
Cao, Zehong
Xu, Peng
Source :
Journal of neural engineering. 18(4)
Publication Year :
2021

Abstract

Objective. Exploring the temporal variability in spatial topology during the resting state attracts growing interest and becomes increasingly useful to tackle the cognitive process of brain networks. In particular, the temporal brain dynamics during the resting state may be delineated and quantified aligning with cognitive performance, but few studies investigated the temporal variability in the electroencephalogram (EEG) network as well as its relationship with cognitive performance. Approach. In this study, we proposed an EEG-based protocol to measure the nonlinear complexity of the dynamic resting-state network by applying the fuzzy entropy. To further validate its applicability, the fuzzy entropy was applied into simulated and two independent datasets (i.e. decision-making and P300). Main results. The simulation study first proved that compared to the existing methods, this approach could not only exactly capture the pattern dynamics in time series but also overcame the magnitude effect of time series. Concerning the two EEG datasets, the flexible and robust network architectures of the brain cortex at rest were identified and distributed at the bilateral temporal lobe and frontal/occipital lobe, respectively, whose variability metrics were found to accurately classify different groups. Moreover, the temporal variability of resting-state network property was also either positively or negatively related to individual cognitive performance. Significance. This outcome suggested the potential of fuzzy entropy for evaluating the temporal variability of the dynamic resting-state brain networks, and the fuzzy entropy is also helpful for uncovering the fluctuating network variability that accounts for the individual decision differences.

Details

ISSN :
17412552
Volume :
18
Issue :
4
Database :
OpenAIRE
Journal :
Journal of neural engineering
Accession number :
edsair.doi.dedup.....9afaa963b96d9fbda4dc2ec5f9b6e663