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    Please use this identifier to cite or link to this item: https://nccur.lib.nccu.edu.tw/handle/140.119/79584


    Title: How are different neural networks related to consciousness?
    Authors: Qin, Pengmin;Wu, Xuehai;Huang, Zirui;Duncan, Niall W.;Tang, Weijun;Wolff, Annemarie;Hu, Jin;Gao, Liang;Jin, Yi;Wu, Xing;Zhang, Jianfeng;Lu, Lu;Wu, Chunping;Qu, Xiaoying;Mao, Ying;Weng, Xuchu;Zhang, Jun;Georg, Northoff
    Contributors: 心智、大腦與學習研究中心
    Date: 2015-10
    Issue Date: 2015-12-03 17:45:43 (UTC+8)
    Abstract: Objective: We aimed to investigate the roles of different resting-state networks in predicting both the actual level of consciousness and its recovery in brain injury patients. Methods: We investigated resting-state functional connectivity within different networks in patients with varying levels of consciousness: unresponsive wakefulness syndrome (UWS; n = 56), minimally conscious state (MCS; n = 29), and patients with brain lesions but full consciousness (BL; n = 48). Considering the actual level of consciousness, we compared the strength of network connectivity among the patient groups. We then checked the presence of connections between specific regions in individual patients and calculated the frequency of this in the different patient groups. Considering the recovery of consciousness, we split the UWS group into 2 subgroups according to recovery: those who emerged from UWS (UWS-E) and those who remained in UWS (UWS-R). The above analyses were repeated on these 2 subgroups. Results: Functional connectivity strength in salience network (SN), especially connectivity between the supragenual anterior cingulate cortex (SACC) and left anterior insula (LAI), was reduced in the unconscious state (UWS) compared to the conscious state (MCS and BL). Moreover, at the individual level, SACC-LAI connectivity was more present in MCS than in UWS. Default-mode network (DMN) connectivity strength, especially between the posterior cingulate cortex (PCC) and left lateral parietal cortex (LLPC), was reduced in UWS-R compared with UWS-E. Furthermore, PCC-LLPC connectivity was more present in UWS-E than in UWS-R. Interpretation: Our findings show that SN (SACC-LAI) connectivity correlates with behavioral signs of consciousness, whereas DMN (PCC-LLPC) connectivity instead predicts recovery of consciousness.
    Relation: Annals of Neurology, 78(4), 594-605
    Data Type: article
    DOI 連結: http://dx.doi.org/10.1002/ana.24479
    DOI: 10.1002/ana.24479
    Appears in Collections:[心智‧大腦與學習研究中心 ] 期刊論文

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