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Synchronization analysis of short EEG data through time-evolving relative wavelet entropy and IAPS affective visual stimuli

机译:通过时间演化的相对小波熵和IAPS情感视觉刺激对短EEG数据进行同步分析

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Synchronization analysis of EEG data has been so far performed by means of coherence functions or non-linear similarity quantifications. However, linear methods fail to provide information about the entire frequency spectrum or the direction of the interaction, while non-linear estimates require time-consuming computations, difficult parameter tuning and huge amounts of data. This paper, aims to overcome the above limitations by investigating the feasibility of using the time-evolving Relative Wavelet Entropy (RWE) for the quantification of the similarity degree between homologous electrodes on either hemisphere. Emotional stimuli selected from the International Affective Picture Stimuli (IAPS) collection are employed in order to induce neurophysiological responses. The methodological framework involves the analysis of the EEG data in time intervals of 128 ms duration. The results showing increased similarity during early, mid and late emotional processing indicate the method's robustness providing hope for the dynamic characterization of the cooperative brain activity during cognitive functioning.
机译:迄今为止,已经通过相干函数或非线性相似性量化来进行EEG数据的同步分析。但是,线性方法无法提供有关整个频谱或交互作用方向的信息,而非线性估计需要耗时的计算,困难的参数调整和大量数据。本文旨在通过研究使用时变相对小波熵(RWE)量化任一半球上同源电极之间相似度的可行性来克服上述局限性。为了诱导神经生理反应,采用了选自国际情感图片刺激(IAPS)集合的情感刺激。该方法框架涉及以128 ms持续时间的时间间隔对EEG数据进行分析。结果表明,在早期,中期和晚期情绪处理过程中相似性增加,表明该方法的鲁棒性为认知功能过程中合作性大脑活动的动态表征提供了希望。

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