Sun Changcheng, Yang Fei, Wang Chunfang, Wang Zhonghan, Zhang Ying, Ming Dong, Du Jingang
Rehabilitation Medical Department, Tianjin Union Medical Centre, Tianjin, China.
Department of Health and Exercise Science, Tianjin University of Sport, Tianjin, China.
Front Hum Neurosci. 2018 Jul 17;12:285. doi: 10.3389/fnhum.2018.00285. eCollection 2018.
Post-stroke depression (PSD) is the most common stroke-related emotional disorder, and it severely affects the recovery process. However, more than half cases are not correctly diagnosed. This study was designed to develop a new method to assess PSD using EEG signal to analyze the specificity of PSD patients' brain network. We have 107 subjects attended in this study (72 stabilized stroke survivors and 35 non-depressed healthy subjects). A Hamilton Depression Rating Scale (HDRS) score was determined for all subjects before EEG data collection. According to HDRS score, the 72 patients were divided into 3 groups: post-stroke non-depression (PSND), post-stroke mild depression (PSMD) and post-stroke depression (PSD). Mutual information (MI)-based graph theory was used to analyze brain network connectivity. Statistical analysis of brain network characteristics was made with a threshold of 10-30% of the strongest MIs. The results showed significant weakened interhemispheric connections and lower clustering coefficient in post-stroke depressed patients compared to those in healthy controls. Stroke patients showed a decreasing trend in the connection between the parietal-occipital and the frontal area as the severity of the depression increased. PSD subjects showed abnormal brain network connectivity and network features based on EEG, suggesting that MI-based brain network may have the potential to assess the severity of depression post stroke.
中风后抑郁(PSD)是最常见的与中风相关的情绪障碍,它严重影响恢复过程。然而,超过半数的病例未得到正确诊断。本研究旨在开发一种利用脑电图(EEG)信号评估PSD的新方法,以分析PSD患者脑网络的特异性。本研究纳入了107名受试者(72名病情稳定的中风幸存者和35名无抑郁的健康受试者)。在收集EEG数据之前,为所有受试者确定汉密尔顿抑郁量表(HDRS)评分。根据HDRS评分,将72例患者分为3组:中风后无抑郁(PSND)、中风后轻度抑郁(PSMD)和中风后抑郁(PSD)。基于互信息(MI)的图论用于分析脑网络连通性。采用最强互信息的10%-30%作为阈值对脑网络特征进行统计分析。结果显示,与健康对照组相比,中风后抑郁患者的半球间连接显著减弱,聚类系数降低。随着抑郁严重程度的增加,中风患者顶枕叶与额叶之间的连接呈下降趋势。PSD受试者基于EEG显示出异常的脑网络连通性和网络特征,这表明基于MI的脑网络可能具有评估中风后抑郁严重程度的潜力。