Exploring Mental State Changes during Hypnotherapy using Adaptive Mixture Independent Component Analysis of EEG

S. Hsu, Yihan Zi, Ying Choon Wu, P. Jackson, T. Jung
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引用次数: 4

Abstract

Advancing our understanding of neurocognitive systems impacted by hypnotherapy may improve therapeutic outcomes. This study addresses the challenge of decoding cortical state changes from continuous electroencephalographic (EEG) data recorded during hypnosis. We model changes in brain state dynamics over the course of hypnosis using Adaptive Mixture Independent Component Analysis (AMICA), an unsupervised approach that learns multiple ICA models for characterizing non-stationary, unlabeled data. Applied to EEG from six sessions of hypnosis, AMICA characterized changes in system-wide brain activity that corresponded to transitions between hypnosis stages. Moreover, the results showed consistent AMICA-based models across sessions and subjects that reflected distinct patterns of source activities in different hypnosis states. By analyzing independent component clusters associated with distinctive classes of model probability patterns, shifts in the theta, alpha, and other spectral features of source activities were characterized over the course of the therapy sessions. The AMICA approach offers a promising tool for linking brain-network changes during hypnotherapy with physiological and cognitive state changes brought about by this form of treatment. It can also ignite new research and developments toward brain-state monitoring for clinical applications.
利用脑电自适应混合独立分量分析探讨催眠治疗过程中的精神状态变化
推进我们对受催眠疗法影响的神经认知系统的理解可能会改善治疗结果。本研究解决了从催眠期间记录的连续脑电图(EEG)数据中解码皮层状态变化的挑战。我们使用自适应混合独立成分分析(AMICA)来模拟催眠过程中大脑状态动态的变化,这是一种无监督的方法,可以学习多个ICA模型来表征非平稳、未标记的数据。应用于六次催眠的脑电图,AMICA表征了与催眠阶段之间的过渡相对应的全系统大脑活动的变化。此外,研究结果显示,基于amica的模型在不同阶段和受试者之间是一致的,反映了不同催眠状态下源活动的不同模式。通过分析与不同类别的模型概率模式相关的独立成分簇,在治疗过程中表征了源活动的theta, alpha和其他频谱特征的变化。AMICA方法提供了一种很有前途的工具,可以将催眠治疗期间大脑网络的变化与这种治疗形式带来的生理和认知状态的变化联系起来。它还可以点燃新的研究和发展,用于临床应用的大脑状态监测。
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