Nazare Karina, Tomescu Miralena I
CINETic Center, Department of Research and Development, National University of Theatre and Film "I.L. Caragiale", Bucharest, Romania.
Faculty of Automatic Control and Computers, POLITEHNICA University of Bucharest, Bucharest, Romania.
Front Psychol. 2024 May 24;15:1300416. doi: 10.3389/fpsyg.2024.1300416. eCollection 2024.
This study aims to explore the temporal dynamics of brain networks involved in self-generated affective states, specifically focusing on modulating these states in both positive and negative valences. The overarching goal is to contribute to a deeper understanding of the neurodynamic patterns associated with affective regulation, potentially informing the development of biomarkers for therapeutic interventions in mood and anxiety disorders.
Utilizing EEG microstate analysis during self-generated affective states, we investigated the temporal dynamics of five distinct microstates across different conditions, including baseline resting state and self-generated states of positive valence (e.g., awe, contentment) and negative valence (e.g., anger, fear).
The study revealed noteworthy modulations in microstate dynamics during affective states. Additionally, valence-specific mechanisms of spontaneous affective regulation were identified. Negative valence affective states were characterized by the heightened presence of attention-associated microstates and reduced occurrence of salience-related microstates during negative valence states. In contrast, positive valence affective states manifested a prevalence of microstates related to visual/autobiographical memory and a reduced presence of auditory/language-associated microstates compared to both baseline and negative valence states.
This study contributes to the field by employing EEG microstate analysis to discern the temporal dynamics of brain networks involved in self-generated affective states. Insights from this research carry significant implications for understanding neurodynamic patterns in affective regulation. The identification of valence-specific modulations and mechanisms has potential applications in developing biomarkers for mood and anxiety disorders, offering novel avenues for therapeutic interventions.
本研究旨在探索参与自我产生的情感状态的脑网络的时间动态,特别关注对积极和消极效价的这些状态进行调节。总体目标是有助于更深入地理解与情感调节相关的神经动力学模式,可能为情绪和焦虑障碍的治疗干预生物标志物的开发提供信息。
利用自我产生情感状态期间的脑电图微状态分析,我们研究了五种不同微状态在不同条件下的时间动态,包括基线静息状态以及积极效价(如敬畏、满足)和消极效价(如愤怒、恐惧)的自我产生状态。
该研究揭示了情感状态期间微状态动态的显著调节。此外,还确定了自发情感调节的效价特异性机制。消极效价情感状态的特征是在消极效价状态期间与注意力相关的微状态高度存在,而与显著性相关的微状态出现减少。相比之下,与基线和消极效价状态相比,积极效价情感状态表现出与视觉/自传体记忆相关的微状态普遍存在,而与听觉/语言相关的微状态存在减少。
本研究通过采用脑电图微状态分析来辨别参与自我产生情感状态的脑网络的时间动态,为该领域做出了贡献。这项研究的见解对理解情感调节中的神经动力学模式具有重要意义。效价特异性调节和机制的识别在开发情绪和焦虑障碍的生物标志物方面具有潜在应用,为治疗干预提供了新途径。