Institute of Cognitive Neuroscience, National Central University, Taiwan; Department of Psychiatry, University of California San Diego, San Diego, USA.
Institute of Cognitive Neuroscience, National Central University, Taiwan.
Neuroscience. 2023 May 21;519:177-197. doi: 10.1016/j.neuroscience.2023.03.012. Epub 2023 Mar 24.
Anxiety and mindfulness are two inversely linked traits shown to be involved in various physiological domains. The current study used resting state electroencephalography (EEG) to explore differences between people with low mindfulness-high anxiety (LMHA) (n = 29) and high mindfulness-low anxiety (HMLA) (n = 27). The resting EEG was collected for a total of 6 min, with a randomized sequence of eyes closed and eyes opened conditions. Two advanced EEG analysis methods, Holo-Hilbert Spectral Analysis and Holo-Hilbert cross-frequency phase clustering (HHCFPC) were employed to estimate the power-based amplitude modulation of carrier frequencies, and cross-frequency coupling between low and high frequencies, respectively. The presence of higher oscillation power across the delta and theta frequencies in the LMHA group than the HMLA group might have been due to the similarity between the resting state and situations of uncertainty, which reportedly triggers motivational and emotional arousal. Although these two groups were formed based on their trait anxiety and trait mindfulness scores, it was anxiety that was found to be significant predictor of the EEG power, not mindfulness. It led us to conclude that it might be anxiety, not mindfulness, which might have contributed to higher electrophysiological arousal. Additionally, a higher δ-β and δ-γ CFC in LMHA suggested greater local-global neural integration, consequently a greater functional association between cortex and limbic system than in the HMLA group. The present cross-sectional study may guide future longitudinal studies on anxiety aiming with interventions such as mindfulness to characterize the individuals based on their resting state physiology.
焦虑和正念是两个相互关联的特征,它们被证明与各种生理领域有关。本研究使用静息态脑电图(EEG)来探索低正念高焦虑(LMHA)(n=29)和高正念低焦虑(HMLA)(n=27)人群之间的差异。静息态 EEG 总共采集了 6 分钟,采用闭眼和睁眼条件的随机序列。使用两种先进的 EEG 分析方法,全希尔伯特谱分析和全希尔伯特交叉频率相位聚类(HHCFPC),分别估计载波频率的基于功率的幅度调制和低频与高频之间的交叉频率耦合。LMHA 组中 delta 和 theta 频率的更高振荡功率可能是由于静息状态与不确定性情况之间的相似性,据报道这种相似性会引发动机和情绪唤醒。尽管这两个组是根据他们的特质焦虑和特质正念得分形成的,但研究发现是焦虑而不是正念是 EEG 功率的显著预测因素。这使我们得出结论,可能是焦虑而不是正念导致了更高的电生理唤醒。此外,LMHA 中较高的 δ-β 和 δ-γ CFC 表明局部-全局神经整合程度更高,因此皮质和边缘系统之间的功能关联比 HMLA 组更大。这项横断面研究可能会指导未来针对焦虑的纵向研究,通过基于静息态生理学的干预措施,如正念,对个体进行特征描述。