Ye Jean, Garrison Kathleen A, Lacadie Cheryl, Potenza Marc N, Sinha Rajita, Goldfarb Elizabeth V, Scheinost Dustin
Interdepartmental Neuroscience Program, Yale School of Medicine, New Haven, CT, USA.
Department of Psychiatry, Yale School of Medicine, New Haven, CT, USA.
Mol Psychiatry. 2025 Feb;30(2):619-628. doi: 10.1038/s41380-024-02708-0. Epub 2024 Aug 25.
Emerging fMRI methods quantifying brain dynamics present an opportunity to capture how fluctuations in brain responses give rise to individual variations in affective and motivation states. Although the experience and regulation of affective states affect psychopathology, their underlying time-varying brain responses remain unclear. Here, we present a novel framework to identify network states matched to an affective experience and examine how the dynamic engagement of these network states contributes to this experience. We apply this framework to investigate network state dynamics underlying basal craving, an affective experience with important clinical implications. In a transdiagnostic sample of healthy controls and individuals diagnosed with or at risk for craving-related disorders (total N = 252), we utilized connectome-based predictive modeling (CPM) to identify brain networks predictive of basal craving. An edge-centric timeseries approach was leveraged to quantify the moment-to-moment engagement of the craving-positive and craving-negative subnetworks during independent scan runs. We found that dynamic markers of network engagement, namely more persistence in a craving-positive network state and less dwelling in a craving-negative network state, characterized individuals with higher craving. We replicated the latter results in a separate dataset, incorporating distinct participants (N = 173) and experimental stimuli. The associations between basal craving and network state dynamics were consistently observed even when craving-predictive networks were defined in the replication dataset. These robust findings suggest that network state dynamics underpin individual differences in basal craving. Our framework additionally presents a new avenue to explore how the moment-to-moment engagement of behaviorally meaningful network states supports our affective experiences.
新兴的功能磁共振成像(fMRI)方法可量化大脑动态,这为捕捉大脑反应的波动如何导致情感和动机状态的个体差异提供了契机。尽管情感状态的体验和调节会影响精神病理学,但它们潜在的随时间变化的大脑反应仍不清楚。在此,我们提出了一个新颖的框架,以识别与情感体验相匹配的网络状态,并研究这些网络状态的动态参与如何促成这种体验。我们应用这个框架来研究基础渴望背后的网络状态动态,基础渴望是一种具有重要临床意义的情感体验。在一个包含健康对照以及被诊断患有或有与渴望相关疾病风险的个体的跨诊断样本(总N = 252)中,我们利用基于连接组的预测模型(CPM)来识别预测基础渴望的大脑网络。采用以边为中心的时间序列方法来量化在独立扫描过程中渴望阳性和渴望阴性子网的瞬间参与情况。我们发现,网络参与的动态标志物,即在渴望阳性网络状态下更持久,在渴望阴性网络状态下停留时间更短,是高渴望个体的特征。我们在一个单独的数据集中重复了后一个结果,该数据集纳入了不同的参与者(N = 173)和实验刺激。即使在复制数据集中定义渴望预测网络时,也始终观察到基础渴望与网络状态动态之间的关联。这些有力的发现表明,网络状态动态是基础渴望个体差异的基础。我们的框架还提供了一条新途径,以探索具有行为意义的网络状态的瞬间参与如何支持我们的情感体验。