Key Laboratory of Cognition and Personality (SWU), Ministry of Education, Chongqing, China.
Department of Psychology, Southwest University, Chongqing, China.
Psychol Med. 2022 Apr;52(5):813-823. doi: 10.1017/S0033291720002391. Epub 2020 Jul 13.
Many emotional experiences such as anxiety and depression are influenced by negative affect (NA). NA has both trait and state features, which play different roles in physiological and mental health. Attending to NA common to various emotional experiences and their trait-state features might help deepen the understanding of the shared foundation of related emotional disorders.
The principal component of five measures was calculated to indicate individuals' NA level. Applying the connectivity-based correlation analysis, we first identified resting-state functional connectives (FCs) relating to NA in sample 1 (n = 367), which were validated through an independent sample (n = 232; sample 2). Next, based on the variability of FCs across large timescale, we further divided the NA-related FCs into high- and low-variability groups. Finally, FCs in different variability groups were separately applied to predict individuals' neuroticism level (which is assumed to be the core trait-related factor underlying NA), and the change of NA level (which represents the state-related fluctuation of NA).
The low-variability FCs were primarily within the default mode network (DMN) and between the DMN and dorsal attention network/sensory system and significantly predicted trait rather than state NA. The high-variability FCs were primarily between the DMN and ventral attention network, the fronto-parietal network and DMN/sensory system, and significantly predicted the change of NA level.
The trait and state NA can be separately predicted by stable and variable spontaneous FCs with different attentional processes and emotion regulatory mechanisms, which could deepen our understanding of NA.
许多情绪体验,如焦虑和抑郁,都受到负性情绪(NA)的影响。NA 既有特质又有状态特征,它们在生理和心理健康中起着不同的作用。关注各种情绪体验及其特质-状态特征的共同 NA,可能有助于加深对相关情绪障碍共同基础的理解。
采用主成分分析法计算 5 项测量指标的得分来表示个体的 NA 水平。通过基于连接的相关分析,我们首先在样本 1(n = 367)中确定与 NA 相关的静息态功能连接(FC),然后在独立样本(n = 232;样本 2)中进行验证。接下来,基于 FC 在大时间尺度上的可变性,我们进一步将与 NA 相关的 FC 分为高变异性和低变异性两组。最后,分别将不同变异性组的 FC 应用于预测个体的神经质水平(假设为 NA 潜在的核心特质相关因素)和 NA 水平的变化(代表 NA 的状态相关波动)。
低变异性 FC 主要位于默认模式网络(DMN)内和 DMN 与背侧注意网络/感觉系统之间,显著预测了特质而非状态的 NA。高变异性 FC 主要位于 DMN 与腹侧注意网络、额顶网络和 DMN/感觉系统之间,显著预测了 NA 水平的变化。
稳定和可变的自发 FC 可以分别预测特质和状态的 NA,它们具有不同的注意过程和情绪调节机制,这可能加深我们对 NA 的理解。