Literature DB >> 28666351

Brain networks predict metabolism, diagnosis and prognosis at the bedside in disorders of consciousness.

Srivas Chennu1,2, Jitka Annen3, Sarah Wannez3, Aurore Thibaut3,4, Camille Chatelle3,5,6, Helena Cassol3, Géraldine Martens3, Caroline Schnakers7,8, Olivia Gosseries3, David Menon9, Steven Laureys3.   

Abstract

Recent advances in functional neuroimaging have demonstrated novel potential for informing diagnosis and prognosis in the unresponsive wakeful syndrome and minimally conscious states. However, these technologies come with considerable expense and difficulty, limiting the possibility of wider clinical application in patients. Here, we show that high density electroencephalography, collected from 104 patients measured at rest, can provide valuable information about brain connectivity that correlates with behaviour and functional neuroimaging. Using graph theory, we visualize and quantify spectral connectivity estimated from electroencephalography as a dense brain network. Our findings demonstrate that key quantitative metrics of these networks correlate with the continuum of behavioural recovery in patients, ranging from those diagnosed as unresponsive, through those who have emerged from minimally conscious, to the fully conscious locked-in syndrome. In particular, a network metric indexing the presence of densely interconnected central hubs of connectivity discriminated behavioural consciousness with accuracy comparable to that achieved by expert assessment with positron emission tomography. We also show that this metric correlates strongly with brain metabolism. Further, with classification analysis, we predict the behavioural diagnosis, brain metabolism and 1-year clinical outcome of individual patients. Finally, we demonstrate that assessments of brain networks show robust connectivity in patients diagnosed as unresponsive by clinical consensus, but later rediagnosed as minimally conscious with the Coma Recovery Scale-Revised. Classification analysis of their brain network identified each of these misdiagnosed patients as minimally conscious, corroborating their behavioural diagnoses. If deployed at the bedside in the clinical context, such network measurements could complement systematic behavioural assessment and help reduce the high misdiagnosis rate reported in these patients. These metrics could also identify patients in whom further assessment is warranted using neuroimaging or conventional clinical evaluation. Finally, by providing objective characterization of states of consciousness, repeated assessments of network metrics could help track individual patients longitudinally, and also assess their neural responses to therapeutic and pharmacological interventions.
© The Author (2017). Published by Oxford University Press on behalf of the Guarantors of Brain.

Entities:  

Keywords:  brain networks; disorders of consciousness; electroencephalography; positron emission tomography; resting state

Mesh:

Year:  2017        PMID: 28666351     DOI: 10.1093/brain/awx163

Source DB:  PubMed          Journal:  Brain        ISSN: 0006-8950            Impact factor:   13.501


  67 in total

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Journal:  Brain       Date:  2019-05-01       Impact factor: 13.501

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Review 3.  Disorders of Consciousness in China.

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5.  On the emergence of cognition: from catalytic closure to neuroglial closure.

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6.  Early Consciousness Disorder in Acute Large Hemispheric Infarction: An Analysis Based on Quantitative EEG and Brain Network Characteristics.

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Journal:  Neurocrit Care       Date:  2020-07-23       Impact factor: 3.210

7.  Assessing the depth of language processing in patients with disorders of consciousness.

Authors:  Peng Gui; Yuwei Jiang; Di Zang; Zengxin Qi; Jiaxing Tan; Hiromi Tanigawa; Jian Jiang; Yunqing Wen; Long Xu; Jizong Zhao; Ying Mao; Mu-Ming Poo; Nai Ding; Stanislas Dehaene; Xuehai Wu; Liping Wang
Journal:  Nat Neurosci       Date:  2020-05-25       Impact factor: 24.884

Review 8.  Brain Modularity: A Biomarker of Intervention-related Plasticity.

Authors:  Courtney L Gallen; Mark D'Esposito
Journal:  Trends Cogn Sci       Date:  2019-02-28       Impact factor: 20.229

9.  Intrinsic network reactivity differentiates levels of consciousness in comatose patients.

Authors:  Sina Khanmohammadi; Osvaldo Laurido-Soto; Lawrence N Eisenman; Terrance T Kummer; ShiNung Ching
Journal:  Clin Neurophysiol       Date:  2018-09-07       Impact factor: 3.708

10.  Prognostication of chronic disorders of consciousness using brain functional networks and clinical characteristics.

Authors:  Ming Song; Yi Yang; Jianghong He; Zhengyi Yang; Shan Yu; Qiuyou Xie; Xiaoyu Xia; Yuanyuan Dang; Qiang Zhang; Xinhuai Wu; Yue Cui; Bing Hou; Ronghao Yu; Ruxiang Xu; Tianzi Jiang
Journal:  Elife       Date:  2018-08-14       Impact factor: 8.140

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