Neuroscience Graduate Program, University of Michigan, Ann Arbor, MI, USA.
Center for Consciousness Science, University of Michigan Medical School, Ann Arbor, MI, USA.
Nat Commun. 2024 Oct 24;15(1):9164. doi: 10.1038/s41467-024-53299-x.
Consciousness requires a dynamic balance of integration and segregation in brain networks. We report an fMRI-based metric, the integration-segregation difference (ISD), which captures two key network properties: network efficiency (integration) and clustering (segregation). With this metric, we quantify brain state transitions from conscious wakefulness to unresponsiveness induced by the anesthetic propofol. The observed changes in ISD suggest a profound shift towards the segregation of brain networks during anesthesia. A common unimodal-transmodal sequence of disintegration and reintegration occurs in brain networks during, respectively, loss and return of responsiveness. Machine learning models using integration and segregation data accurately identify awake vs. unresponsive states and their transitions. Metastability (dynamic recurrence of non-equilibrium transient states) is more effectively explained by integration, while complexity (diversity of neural activity) is more closely linked with segregation. A parallel analysis of sleep states produces similar findings. Our results demonstrate that the ISD reliably indexes states of consciousness.
意识需要大脑网络中整合和分离的动态平衡。我们报告了一种基于 fMRI 的度量标准,即整合-分离差异(ISD),它捕捉了两个关键的网络特性:网络效率(整合)和聚类(分离)。通过这个度量标准,我们量化了从有意识的清醒状态到麻醉诱导的无反应状态的大脑状态转变。观察到的 ISD 变化表明,麻醉期间大脑网络的分离程度明显增加。在大脑网络中,分别在反应性丧失和恢复期间,观察到解整合和再整合的常见单模态-多模态序列。使用整合和分离数据的机器学习模型可以准确识别清醒和无反应状态及其转变。稳定性(非平衡瞬态状态的动态重现)更有效地由整合来解释,而复杂性(神经活动的多样性)与分离更密切相关。对睡眠状态的平行分析产生了类似的发现。我们的结果表明,ISD 可靠地标记了意识状态。