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Measuring Instantaneous and Spectral Information Entropies by Shannon Entropy of Choi-Williams Distribution in the Context of Electroencephalography

机译:脑电学背景下Choi-Williams分布的Shannon熵测量瞬时和光谱信息熵

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摘要

The theory of Shannon entropy was applied to the Choi-Williams time-frequency distribution (CWD) of time series in order to extract entropy information in both time and frequency domains. In this way, four novel indexes were defined: (1) partial instantaneous entropy, calculated as the entropy of the CWD with respect to time by using the probability mass function at each time instant taken independently; (2) partial spectral information entropy, calculated as the entropy of the CWD with respect to frequency by using the probability mass function of each frequency value taken independently; (3) complete instantaneous entropy, calculated as the entropy of the CWD with respect to time by using the probability mass function of the entire CWD; (4) complete spectral information entropy, calculated as the entropy of the CWD with respect to frequency by using the probability mass function of the entire CWD. These indexes were tested on synthetic time series with different behavior (periodic, chaotic and random) and on a dataset of electroencephalographic (EEG) signals recorded in different states (eyes-open, eyes-closed, ictal and non-ictal activity). The results have shown that the values of these indexes tend to decrease, with different proportion, when the behavior of the synthetic signals evolved from chaos or randomness to periodicity. Statistical differences (p-value 0.0005) were found between values of these measures comparing eyes-open and eyes-closed states and between ictal and non-ictal states in the traditional EEG frequency bands. Finally, this paper has demonstrated that the proposed measures can be useful tools to quantify the different periodic, chaotic and random components in EEG signals.
机译:将Shannon熵理论应用于时间序列的Choi-Williams时频分布(CWD),以提取时域和频域中的熵信息。通过这种方式,定义了四个新颖的​​指标:(1)部分瞬时熵,通过使用每个独立时刻的概率质量函数来计算CWD相对于时间的熵; (2)部分频谱信息熵,是通过使用独立取的每个频率值的概率质量函数计算为CWD相对于频率的熵; (3)完全瞬时熵,通过使用整个CWD的概率质量函数计算为CWD相对于时间的熵; (4)完整的频谱信息熵,它是通过使用整个CWD的概率质量函数计算为CWD相对于频率的熵。这些指数在具有不同行为(周期性,混沌和随机)的合成时间序列上以及在以不同状态(睁眼,闭眼,眼睛和非眼睛活动)记录的脑电图(EEG)信号数据集中进行了测试。结果表明,当合成信号的行为从混沌或随机性演变为周期性时,这些指标的值倾向于以不同的比例降低。在比较传统EEG频段中睁眼和闭眼状态以及双眼和非双眼状态的这些测量值之间发现统计差异(p值<0.0005)。最后,本文证明了所提出的措施可以作为量化脑电信号中不同的周期性,混沌和随机分量的有用工具。

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