Grupo de Lógica, Lenguaje e Información, Universidad de Sevilla, Seville, Spain.
Departamento de Ecuaciones Diferenciales y Análisis Numérico, Universidad de Sevilla, Seville, Spain.
PLoS Comput Biol. 2022 Sep 6;18(9):e1010412. doi: 10.1371/journal.pcbi.1010412. eCollection 2022 Sep.
The self-organising global dynamics underlying brain states emerge from complex recursive nonlinear interactions between interconnected brain regions. Until now, most efforts of capturing the causal mechanistic generating principles have supposed underlying stationarity, being unable to describe the non-stationarity of brain dynamics, i.e. time-dependent changes. Here, we present a novel framework able to characterise brain states with high specificity, precisely by modelling the time-dependent dynamics. Through describing a topological structure associated to the brain state at each moment in time (its attractor or 'information structure'), we are able to classify different brain states by using the statistics across time of these structures hitherto hidden in the neuroimaging dynamics. Proving the strong potential of this framework, we were able to classify resting-state BOLD fMRI signals from two classes of post-comatose patients (minimally conscious state and unresponsive wakefulness syndrome) compared with healthy controls with very high precision.
大脑状态的自组织全球动力学源自于相互连接的脑区之间复杂的递归非线性相互作用。到目前为止,捕捉因果生成原理的大多数努力都假设了存在基础平稳性,无法描述大脑动力学的非平稳性,即时变。在这里,我们提出了一个新颖的框架,能够以高精度的方式对大脑状态进行特征化,具体方法是对时变动力学进行建模。通过描述与每个时间点的大脑状态相关联的拓扑结构(其吸引子或“信息结构”),我们能够通过使用这些结构在神经影像学动力学中隐藏的时间统计信息来对不同的大脑状态进行分类。通过证明这个框架的强大潜力,我们能够将昏迷后患者(最小意识状态和无反应性觉醒综合征)的静息状态 BOLD fMRI 信号与健康对照组进行非常高的精度分类。