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精神分裂症患者静息态脑功能连接异常。

Abnormality of Functional Connections in the Resting State Brains of Schizophrenics.

作者信息

Zhu Yan, Zhu Geng, Li Bin, Yang Yueqi, Zheng Xiaohan, Xu Qi, Li Xiaoou

机构信息

College of Medical Instruments, Shanghai University of Medicine & Health Sciences, Shanghai, China.

College of Medical Instrument and Food Engineering, University of Shanghai for Science and Technology, Shanghai, China.

出版信息

Front Hum Neurosci. 2022 Mar 10;16:799881. doi: 10.3389/fnhum.2022.799881. eCollection 2022.

Abstract

To explore the change of brain connectivity in schizophrenics (SCZ), the resting-state EEG source functional connections of SCZ and healthy control (HC) were investigated in this paper. Different band single-layer networks, multilayer networks, and improved multilayer networks were constructed and their topological attributes were extracted. The topological attributes of SCZ and HC were automatically distinguished using ensemble learning methods called Ensemble Learning based on Trees and Soft voting method, and the effectiveness of different network construction methods was compared based on the classification accuracy. The results showed that the classification accuracy was 89.38% for α band network, 82.5% for multilayer network, and 86.88% for improved multilayer network. Comparing patients with SCZ to those with Alzheimer's disease (AD), the classification accuracy of improved multilayer network was the highest, which was 88.12%. The power spectrum in the α band of SCZ was significantly lower than HC, whereas there was no significant difference between SCZ and AD. This indicated that the improved multilayer network can effectively distinguish SCZ and other groups not only when their power spectrum was significantly different. The results also suggested that the improved multilayer topological attributes were regarded as biological markers in the clinical diagnosis of patients with schizophrenia and even other mental disorders.

摘要

为探究精神分裂症患者(SCZ)脑连接性的变化,本文研究了SCZ患者和健康对照(HC)的静息态脑电图源功能连接。构建了不同频段的单层网络、多层网络和改进的多层网络,并提取了它们的拓扑属性。使用基于树的集成学习方法和软投票方法等集成学习方法自动区分SCZ和HC的拓扑属性,并基于分类准确率比较不同网络构建方法的有效性。结果表明,α频段网络的分类准确率为89.38%,多层网络为82.5%,改进的多层网络为86.88%。将SCZ患者与阿尔茨海默病(AD)患者进行比较,改进的多层网络分类准确率最高,为88.12%。SCZ患者α频段的功率谱显著低于HC,而SCZ与AD之间无显著差异。这表明改进的多层网络不仅在功率谱有显著差异时能有效区分SCZ和其他组。结果还表明,改进的多层拓扑属性可作为精神分裂症患者甚至其他精神障碍患者临床诊断的生物学标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a686/8959982/edf37fa4a86d/fnhum-16-799881-g001.jpg

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