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抑郁症首发未用药青少年的 EEG 微观状态。

EEG microstate in first-episode drug-naive adolescents with depression.

机构信息

School of Medical Engineering, Xinxiang Medical University, Xinxiang, People's Republic of China.

Engineering Technology Research Center of Neurosense and Control of Henan Province, Xinxiang, People's Republic of China.

出版信息

J Neural Eng. 2022 Sep 15;19(5). doi: 10.1088/1741-2552/ac88f6.

Abstract

A growing number of studies have revealed significant abnormalities in electroencephalography (EEG) microstate in patients with depression, but these findings may be affected by medication. Therefore, how the EEG microstates abnormally change in patients with depression in the early stage and without the influence of medication has not been investigated so far. Resting-state EEG data and Hamilton Depression Rating Scale (HDRS) were collected from 34 first-episode drug-naïve adolescent with depression and 34 matched healthy controls. EEG microstate analysis was applied and nonlinear characteristics of EEG microstate sequences were studied by sample entropy and Lempel-Ziv complexity (LZC). The microstate temporal parameters and complexity were tried to train an SVM for classification of patients with depression. Four typical EEG microstate topographies were obtained in both groups, but microstate C topography was significantly abnormal in depression patients. The duration of microstate B, C, D and the occurrence and coverage of microstate B significantly increased, the occurrence and coverage of microstate A, C reduced significantly in depression group. Sample entropy and LZC in the depression group were abnormally increased and were negatively correlated with HDRS. When the combination of EEG microstate temporal parameters and complexity of microstate sequence was used to classify patients with depression from healthy controls, a classification accuracy of 90.9% was obtained. Abnormal EEG microstate has appeared in early depression, reflecting an underlying abnormality in configuring neural resources and transitions between distinct brain network states. EEG microstate can be used as a neurophysiological biomarker for early auxiliary diagnosis of depression.

摘要

越来越多的研究表明,抑郁症患者的脑电图(EEG)微状态存在显著异常,但这些发现可能受到药物的影响。因此,目前尚未研究未经药物影响的早期抑郁症患者的 EEG 微状态如何异常变化。本研究采集了 34 例首发未用药的青少年抑郁症患者和 34 名匹配的健康对照者的静息态 EEG 数据和汉密尔顿抑郁量表(HDRS)评分。应用 EEG 微状态分析方法,采用样本熵和 Lempel-Ziv 复杂度(LZC)研究 EEG 微状态序列的非线性特征。尝试使用支持向量机(SVM)对患者进行分类,分析 EEG 微状态时间参数和复杂度。在两组中均获得了四个典型的 EEG 微状态地形图,但抑郁症患者的微状态 C 地形图明显异常。微状态 B、C、D 的持续时间以及微状态 B 的出现和覆盖度显著增加,微状态 A、C 的出现和覆盖度显著减少。抑郁症组的样本熵和 LZC 异常增加,与 HDRS 呈负相关。当将 EEG 微状态时间参数和微状态序列复杂度结合起来对抑郁症患者与健康对照者进行分类时,可获得 90.9%的分类准确率。早期抑郁症患者已经出现异常的 EEG 微状态,反映了配置神经资源和不同大脑网络状态之间转换的潜在异常。EEG 微状态可作为早期辅助诊断抑郁症的神经生理学生物标志物。

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