解码深度冥想:唯识学专家的脑电图见解

IF 4 Q2 NEUROSCIENCES
Nicco Reggente , Christian Kothe , Tracy Brandmeyer , Grant Hanada , Ninette Simonian , Sean Mullen , Tim Mullen
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引用次数: 0

摘要

背景冥想实践已证明对心理和生理有诸多益处,但捕捉不同冥想深度的神经相关性仍具有挑战性。在这项研究中,我们旨在使用脑电图(EEG)解码专家练习者自我报告的随时间变化的冥想深度。参与者使用传统的探究方法和一种新颖的自发出现方法,按照个人定义的 1 到 5 级量表报告他们的冥想深度。脑电图活动以及θ、α和γ波段的有效连通性被用于使用机器/深度学习预测冥想深度,包括一种融合源活动和连通性信息的新方法。与传统的探测法相比,自发涌现法提高了解码性能,并且与会后结果测量的相关性更强。融合空间、频谱和连接信息的新型机器学习方法取得了最佳性能。传统的脑电图通道级方法和预选默认模式网络区域无法捕捉到与不同冥想深度相关的复杂神经动态。研究结果凸显了冥想过程中神经活动的复杂性和多元性,并将自发出现作为一种生态学上有效且干扰较少的体验取样方法。这些结果对促进神经反馈技术的发展和加深我们对冥想实践的理解具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decoding Depth of Meditation: Electroencephalography Insights From Expert Vipassana Practitioners

Background

Meditation practices have demonstrated numerous psychological and physiological benefits, but capturing the neural correlates of varying meditative depths remains challenging. In this study, we aimed to decode self-reported time-varying meditative depth in expert practitioners using electroencephalography (EEG).

Methods

Expert Vipassana meditators (n = 34) participated in 2 separate sessions. Participants reported their meditative depth on a personally defined 1 to 5 scale using both traditional probing and a novel spontaneous emergence method. EEG activity and effective connectivity in theta, alpha, and gamma bands were used to predict meditative depth using machine/deep learning, including a novel method that fused source activity and connectivity information.

Results

We achieved significant accuracy in decoding self-reported meditative depth across unseen sessions. The spontaneous emergence method yielded improved decoding performance compared with traditional probing and correlated more strongly with postsession outcome measures. Best performance was achieved by a novel machine learning method that fused spatial, spectral, and connectivity information. Conventional EEG channel-level methods and preselected default mode network regions fell short in capturing the complex neural dynamics associated with varying meditation depths.

Conclusions

This study demonstrates the feasibility of decoding personally defined meditative depth using EEG. The findings highlight the complex, multivariate nature of neural activity during meditation and introduce spontaneous emergence as an ecologically valid and less obtrusive experiential sampling method. These results have implications for advancing neurofeedback techniques and enhancing our understanding of meditative practices.
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来源期刊
Biological psychiatry global open science
Biological psychiatry global open science Psychiatry and Mental Health
CiteScore
4.00
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审稿时长
91 days
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