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基于振幅-周期二维特征的脑电样本熵分析∗

郭家梁 钟宁 马小萌 张明辉 周海燕

物理学报2016,Vol.65Issue(19):190501-1-190501-9,9.
物理学报2016,Vol.65Issue(19):190501-1-190501-9,9.DOI:10.7498/aps.65.190501

基于振幅-周期二维特征的脑电样本熵分析∗

Sample entropy analysis of electro encephalogram based on the two-dimensional feature of amplitude and p erio d

郭家梁 1钟宁 2马小萌 3张明辉 4周海燕1

作者信息

  • 1. 北京工业大学,北京未来网络科技高精尖创新中心,北京 100124
  • 2. 北京工业大学,国际WIC研究院,北京 100124
  • 3. 磁共振成像脑信息学北京市重点实验室,北京 100124
  • 4. 脑信息智慧服务北京市国际科技合作基地,北京 100124
  • 折叠

摘要

Abstract

Sample entropy, a complexity measure that quantifies the new pattern generation rate of time series, has been widely applied to physiological signal analysis. It can effectively reflect the pattern complexity of one-dimensional sequences, such as the information contained in amplitude or period features. However, the traditional method usually ignores the interaction between amplitude and period in time series, such as electroencephalogram (EEG) signals. To address this issue, in this study, we propose a new method to describe the pattern complexity of waveform in a two-dimensional space. In this method, the local peaks of the signals are first extracted, and the variation range and the duration time between the adjacent peaks are calculated as the instantaneous amplitude and period. Then the amplitude and period sequences are combined into a two-dimensional sequence to calculate the sample entropy based on the amplitude and period information. In addition, in order to avoid the influence of the different units in the two dimensions, we use the Jaccard distance to measure the similarity of the amplitude-period bi-vectors in the waveforms, which is different from the one-dimensional method. The Jaccard distance is defined as the ratio of the different area to the combined area of two rectangles containing the amplitude-period bi-vectors in the Cartesian coordinate system. To verify the effectiveness of the method, we construct five sets of simulative waveforms in which the numbers of patterns are completely equal in one-dimensional space of amplitude or period but the numbers in two-dimensional space are significantly different (P < 0.00001). Simulation results show that the two-dimensional sample entropy could effectively reflect the different complexities of the five signals (P <0.00001), while the sample entropy in one-dimensional space of amplitude or period cannot do. The results indicate that compared with the one-dimensional sample entropy, the two-dimensional sample entropy is very effective to describe and distinguish the complexity of interactive patterns based on amplitude and period features in waveforms. The entropy is also used to analyze the resting state EEG signals between well-matched depression patient and healthy control groups. Signals in three separated frequency bands (Theta, Alpha, Beta) and ten brain regions (bilateral: frontal, central, parietal, temporal, occipital) are analyzed. Experimental results show that in the Alpha band and in the left parietal and occipital regions, the two-dimensional sample entropy in depression is significantly lower than that in the healthy group (P<0.01), indicating the disability of depression patients in generation of various EEG patterns. These features might become potential biomarkers of depressions.

关键词

样本熵/二维/脑电/抑郁症

Key words

sample entropy/two-dimension/electroencephalogram/major depressive disorder

引用本文复制引用

郭家梁,钟宁,马小萌,张明辉,周海燕..基于振幅-周期二维特征的脑电样本熵分析∗[J].物理学报,2016,65(19):190501-1-190501-9,9.

基金项目

国家重点基础研究发展计划(批准号:2014CB744600)、国家国际科技合作专项(批准号:2013DFA32180)和国家自然科学基金(批准号:61420106005,61272345)资助的课题 (批准号:2014CB744600)

物理学报

OA北大核心CSCDCSTPCDSCI

1000-3290

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