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A graph based characterization of functional resting state networks for patients with disorders of consciousness

机译:基于术语术语表征的曲线图表明意识障碍患者

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Disorder of consciousness (DOC) is a consequence of severe brain injuries. Diagnosis of DOC is very challenging because it requires the patient collaboration. Research in hemodynamic brain activity in resting state conditions suggests that healthy brain is organized into large-scale resting state networks (RSNs) of sensory/cognitive relevance. Recently, relationships among these RSNs have been explored as a possible biomarker of loss of consciousness. The RSN functional connectivity is computed as the temporal relationship between pairs of RSNs time-courses. It results in the so called functional network of brain connectivity (FNC). The properties of this network in the DOC conditions remains poorly understood. In this work, we investigated some local complex network properties of the brain FNC,, during altered states of consciousness. For this, we characterized a population of 49 DOC patients and 27 healthy controls. fMRI data was acquired and processed for each subject to built a FNC for each one. Network characterization was performed by computing the strength and the clustering coefficient measurements at individual level on the corresponding FNC. These nodal measurements allows to understand brain alterations of single RSN in the FNC. Our results show that strength and clustering variations may reflect brain network reconfiguration, and they may be associated to loss of consciousness states in patients with DOCs.
机译:意识紊乱(DOC)是严重的脑损伤的结果。 DOC的诊断非常具有挑战性,因为它需要患者协作。静态状态条件下血流动力学大脑活动的研究表明,健康的大脑被组织成大规模休息状态网络(RSNS)的感官/认知相关性。最近,这些RSNS之间的关系被探索为可能的意识丧失的可能生物标志物。 RSN功能连接被计算为RSNS时间课程对之间的时间关系。它导致所谓的脑连接功能网络(FNC)。 DOC条件中该网络的属性仍然难以理解。在这项工作中,我们在改变意识状态期间调查了大脑FNC的一些本地复杂网络属性。为此,我们的表征了49名Doc患者和27名健康对照的人口。为每个主题获取和处理FMRI数据,为每个主题构建FNC。通过在相应的FNC上计算各个电平的强度和聚类系数测量来执行网络表征。这些节点测量允许了解FNC中单个RSN的脑改变。我们的结果表明,强度和聚类变化可能反映脑网络重新配置,并且它们可能与文档患者的意识状态丧失相关。

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