脑电图
替代数据
非线性系统
关联维数
可预测性
阿尔茨海默病
心理学
疾病
听力学
医学
神经科学
数学
统计
内科学
物理
分形维数
数学分析
量子力学
分形
作者
B. Jelles,R.L.M. Strijers,Ch. Hooijer,C. Jonker,Cornelis J. Stam,E.J. Jonkman
标识
DOI:10.1111/j.1600-0404.1999.tb01054.x
摘要
Nonlinear EEG analysis attempts to characterize the dynamics of neural networks in the brain. Abnormalities in nonlinear EEG measures have been found repeatedly in Alzheimer's disease (AD). The present study was undertaken to investigate whether these abnormalities could already be found in the early stage of AD. In a representative sample of 49 community-dwelling elderly, Alzheimer's disease was diagnosed in 7 subjects. Correlation dimension (D2) and nonlinear prediction were measured at 16 electrodes and in two different activational states. Also, 10 surrogate data sets were generated for each EEG epoch in order to investigate the presence of nonlinear dynamics. Differences between nonlinear statistics derived from original and from surrogate data sets were expressed as Z-scores. We found lower D2 and higher predictability in the demented subjects compared to the normal subjects. The results obtained with the Z-scores pointed to changed nonlinear dynamics in frontal and temporal areas in demented subjects. However, the major differences between demented and healthy subjects are not due to nonlinearity. From this it appears that linear dynamics change first in the course of AD, followed by changes in nonlinear dynamics.
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