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时窗复杂度序列在睡眠脑电分期中的应用
引用本文:龙飞,张道信,范羚,吴小培,冯焕清.时窗复杂度序列在睡眠脑电分期中的应用[J].生物医学工程学杂志,2003,20(1):60-63.
作者姓名:龙飞  张道信  范羚  吴小培  冯焕清
作者单位:1. 安徽大学,计算智能与信号处理教育部重点实验室,合肥,230039
2. 安徽大学,计算智能与信号处理教育部重点实验室,合肥,230039;中国科技大学,电子科学与技术系,合肥,230026
3. 中国科技大学,电子科学与技术系,合肥,230026
基金项目:国家自然科学基金资助项目 ( 60 0 710 2 3),安徽省自然科学基金资助项目 ( 0 0 42 14)
摘    要:运用时窗复杂度序列来分析睡眠脑电,减少了非平稳性及状态空间的不均匀性造成的脑状态信息的丢失,在一定程度上克服了复杂度自身的局限,有助于不同睡眠期状态特征的提取。另外采用独立分量分析(ICA),小波变换等方法对脑电进行预处理,实验表明它们能有效地去除脑电中的一些生理干扰,有利于提高复杂度算法在睡眠分期应用中的精确度。

关 键 词:时窗复杂度序列  睡眠脑电分期  独立分量分析  小波变换

Application of Complexity Sequence in Sleep Staging Based on Sleep EEG Data
Long Fei Zhang Daoxin Fan Ling Wu Xiaopei , Feng Huanqing.Application of Complexity Sequence in Sleep Staging Based on Sleep EEG Data[J].Journal of Biomedical Engineering,2003,20(1):60-63.
Authors:Long Fei Zhang Daoxin Fan Ling Wu Xiaopei  Feng Huanqing
Institution:Intelligent Computing & Signal Processing Key Laboratory of Ministry of Education, Anhui University, Hefei 230039.
Abstract:In this paper an approach of time-window complexity sequence is applied to sleep EEG analysis. This approach can reduce the loss of state information due to the nonstationarity of EEG signal and the unevenness of state space, and can overcome certain limitations of the complexity itself to some extent. It will help to extract the state features of EEG in different sleep stages. In addition, we preprocess EEG by adopting ICA and wavelet transform (WT). The results show that some physiological artifact in EEG can be eliminated effectively by these methods, and the sleep staging based on sleep EEG data will be more exact.
Keywords:EEG    Complexity sequence    Sleep staging
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