呼吸集中冥想中走神的非线性脑电图特征

Yiqing Lu , Julio Rodriguez-Larios
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引用次数: 5

摘要

在将注意力集中在特定对象上的冥想练习中,新手经常会经历分心的时刻(即走神)。先前的研究通过脑电图(EEG)使用线性指标(如振荡功率)调查了冥想练习中走神的神经相关性。然而,他们的结果并不完全一致。由于已知大脑是一个混沌/非线性系统,线性度量可能无法完全捕获脑电图信号中存在的复杂动态。在这项研究中,我们评估了非线性脑电图特征是否可以用来描述呼吸集中冥想时的走神。为此,我们采用了一种经验抽样范式,在25名参与者在冥想练习中被反复打断,以报告他们是专注于呼吸还是在思考其他事情。我们使用Higuchi分形维数(HFD)、Lempel-Ziv复杂度(LZC)和样本熵(SampEn)三种不同的算法比较了走神和呼吸集中状态下脑电图信号的复杂性。我们的研究结果表明,相对于呼吸集中状态,在走神状态下脑电图的复杂性普遍降低。我们得出结论,脑电图复杂性指标适用于新手冥想练习者从呼吸集中状态中解脱走神,因此,它们可以用于未来的脑电图神经反馈方案,以促进冥想练习。
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Nonlinear EEG signatures of mind wandering during breath focus meditation

In meditation practices that involve focused attention to a specific object, novice practitioners often experience moments of distraction (i.e., mind wandering). Previous studies have investigated the neural correlates of mind wandering during meditation practice through Electroencephalography (EEG) using linear metrics (e.g., oscillatory power). However, their results are not fully consistent. Since the brain is known to be a chaotic/nonlinear system, it is possible that linear metrics cannot fully capture complex dynamics present in the EEG signal. In this study, we assess whether nonlinear EEG signatures can be used to characterize mind wandering during breath focus meditation in novice practitioners. For that purpose, we adopted an experience sampling paradigm in which 25 participants were iteratively interrupted during meditation practice to report whether they were focusing on the breath or thinking about something else. We compared the complexity of EEG signals during mind wandering and breath focus states using three different algorithms: Higuchi's fractal dimension (HFD), Lempel-Ziv complexity (LZC), and Sample entropy (SampEn). Our results showed that EEG complexity was generally reduced during mind wandering relative to breath focus states. We conclude that EEG complexity metrics are appropriate to disentangle mind wandering from breath focus states in novice meditation practitioners, and therefore, they could be used in future EEG neurofeedback protocols to facilitate meditation practice.

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