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用于检测低强度电磁场效应的脑电图非线性分析

Non-linear analysis of the electroencephalogram for detecting effects of low-level electromagnetic fields.

作者信息

Bachmann M, Kalda J, Lass J, Tuulik V, Säkki M, Hinrikus H

机构信息

Biomedical Engineering Centre, Tallinn University of Technology, Estonia.

出版信息

Med Biol Eng Comput. 2005 Jan;43(1):142-9. doi: 10.1007/BF02345136.

Abstract

The study compared traditional spectral analysis and a new scale-invariant method, the analysis of the length distribution of low-variability periods (LDLVPs), to distinguish between electro-encephalogram (EEG) signals with and without a weak stressor, a low-level modulated microwave field. During the experiment, 23 healthy volunteers were exposed to a microwave (450 MHz) of 7 Hz frequency on-off modulation. The field power density at the scalp was 0.16 mW cm(-2). The experimental protocol consisted of ten cycles of repetitive microwave exposure. Signals from frontal EEG channels FP1 and FP2 were analysed. Smooth power spectrum and length distribution curves of low-variability periods, as well as probability distribution close to normal, confirmed that stationarity of the EEG signal during recordings was achieved. The quantitative measure of LDLVPs provided a significant detection of the effect of the stressor for the six subjects exposed to the microwave field but for none of the sham recordings. The spectral analysis revealed a significant result for one subject only. A significant effect of the exposure to the EEG signal was detected in 25% of subjects, with microwave exposure increasing EEG variability. The effect was not detectable by power spectral measures.

摘要

该研究比较了传统频谱分析和一种新的尺度不变方法,即低变异性周期长度分布(LDLVPs)分析,以区分有无弱应激源(低水平调制微波场)时的脑电图(EEG)信号。实验期间,23名健康志愿者暴露于频率为7Hz的开-关调制微波(450MHz)中。头皮处的场功率密度为0.16mW/cm²。实验方案包括十个重复微波暴露周期。对额叶EEG通道FP1和FP2的信号进行了分析。低变异性周期的平滑功率谱和长度分布曲线,以及接近正态的概率分布,证实了记录期间EEG信号的平稳性。LDLVPs的定量测量对暴露于微波场的六名受试者的应激源效应有显著检测,但对假记录均未检测到。频谱分析仅对一名受试者得出了显著结果。在25%的受试者中检测到了EEG信号暴露的显著效应,微波暴露增加了EEG变异性。功率谱测量无法检测到该效应。

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