Coma Science Group, GIGA Research Center, University of Liège, Liège, Belgium; Department of Data-analysis, University of Ghent, B9000 Ghent, Belgium.
Department of Data-analysis, University of Ghent, B9000 Ghent, Belgium.
Neuroimage. 2017 Mar 1;148:201-211. doi: 10.1016/j.neuroimage.2017.01.020. Epub 2017 Jan 16.
Examining task-free functional connectivity (FC) in the human brain offers insights on how spontaneous integration and segregation of information relate to human cognition, and how this organization may be altered in different conditions, and neurological disorders. This is particularly relevant for patients in disorders of consciousness (DOC) following severe acquired brain damage and coma, one of the most devastating conditions in modern medical care. We present a novel data-driven methodology, connICA, which implements Independent Component Analysis (ICA) for the extraction of robust independent FC patterns (FC-traits) from a set of individual functional connectomes, without imposing any a priori data stratification into groups. We here apply connICA to investigate associations between network traits derived from task-free FC and cognitive/clinical features that define levels of consciousness. Three main independent FC-traits were identified and linked to consciousness-related clinical features. The first one represents the functional configuration of a "resting" human brain, and it is associated to a sedative (sevoflurane), the overall effect of the pathology and the level of arousal. The second FC-trait reflects the disconnection of the visual and sensory-motor connectivity patterns. It also relates to the time since the insult and to the ability of communicating with the external environment. The third FC-trait isolates the connectivity pattern encompassing the fronto-parietal and the default-mode network areas as well as the interaction between left and right hemispheres, which are also associated to the awareness of the self and its surroundings. Each FC-trait represents a distinct functional process with a role in the degradation of conscious states of functional brain networks, shedding further light on the functional sub-circuits that get disrupted in severe brain-damage.
研究人类大脑无任务功能连接(FC)可以深入了解信息的自发整合和分离如何与人类认知相关,以及这种组织在不同条件和神经障碍下如何改变。对于因严重获得性脑损伤和昏迷而处于意识障碍(DOC)的患者来说,这一点尤为重要,昏迷是现代医疗中最具破坏性的情况之一。我们提出了一种新的基于数据驱动的方法 connICA,该方法实现了独立成分分析(ICA),可从一组个体功能连接体中提取稳健的独立 FC 模式(FC-特征),而无需将任何先验数据分层到组中。我们在此应用 connICA 来研究无任务 FC 衍生的网络特征与定义意识水平的认知/临床特征之间的关联。确定了三个主要的独立 FC-特征,并将其与与意识相关的临床特征联系起来。第一个特征代表了“休息”人脑的功能配置,与镇静剂(七氟醚)、整体病理效应和唤醒水平有关。第二个 FC-特征反映了视觉和感觉运动连通性模式的断开。它还与损伤后的时间以及与外部环境进行沟通的能力有关。第三个 FC-特征隔离了包含额顶叶和默认模式网络区域以及左右半球之间相互作用的连通模式,这也与自我意识及其周围环境有关。每个 FC-特征都代表了一个不同的功能过程,在功能脑网络意识状态的退化中具有作用,进一步阐明了在严重脑损伤中被打乱的功能子电路。