Discrimination of Tourette Syndrome Based on the Spatial Patterns of the Resting–State EEG Network

被引:0
|
作者
Keyi Duan
Qian Wu
Yuanyuan Liao
Yajing Si
Joyce Chelangat Bore
Fali Li
Qin Tao
Li Lin
Wei Lei
Xudong Hu
Dezhong Yao
Changfu Pei
Tao Zhang
Lin Huang
Peng Xu
机构
[1] University of Electronic Science and Technology of China,The Clinical Hospital of Chengdu Brain Science Institute, MOE Key Lab for Neuroinformation
[2] SiChuan Vocational College of Health and Rehabilitation,Humanities and Social Science Department
[3] Zi Gong First People’s Hospital,The Neuroelectrophysiology Department, Department of Neurology, The Children Health Care Department
[4] University of Electronic Science and Technology of China,School of Life Science and Technology, Center for Information in Medicine
[5] Xihua University,School of Science
来源
Brain Topography | 2021年 / 34卷
关键词
Tourette syndrome; Electroencephalogram; Brain network; Discrimination;
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中图分类号
学科分类号
摘要
Tourette syndrome (TS) is a neuropsychiatric disorder with childhood onset characterized by chronic motor and vocal tics; however, the current diagnosis of TS patients is subjective, as it is mainly assessed based on the parents’ description alongside specific evaluations. The early and accurate diagnosis of TS based on its potential symptoms in children would be of benefit in their future therapy, but reliable diagnoses are difficult due to the lack of objective knowledge of the etiology and pathogenesis of TS. In this study, resting–state electroencephalograms were first collected from 36 patients and 21 healthy controls (HCs); the corresponding resting–state functional networks were then constructed, and the potential differences in network topology between the two groups were extracted by using the topology of the spatial pattern of the network (SPN). Compared to the HCs, the TS patients exhibited decreased frontotemporal/occipital/parietal connectivity. When classifying the two groups, compared to the network properties, the derived SPN features achieved a much higher accuracy of 92.31%. The intrinsic long-range connectivity between the frontal and the temporal/occipital/parietal lobes was damaged in the patient group, and this dysfunctional network pattern might serve as a reliable biomarker to differentiate TS patients from HCs as well as to assess the severity of tic symptoms.
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页码:78 / 87
页数:9
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