Investigation of Functional Brain Networks in MDD Patients Based on EEG Signals Processing

Fatemeh Hasanzadeh, M. Mohebbi, R. Rostami
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引用次数: 6

Abstract

Analysis of functional brain networks using graph theory metrics reveals informative aspects of brain functions. Major depressive disorder (MDD) which is a widespread disorder worldwide cause disruption in some brain functions and thus leads to brain network changes. To study the abnormality of brain function networks in MDD, functional brain networks were constructed from resting state EEG data of 16 MDD patients and 16 normal subjects. The networks based on phase lag index (PLI) were extracted in delta, theta, alpha, beta and total frequency bands. The extracted networks were binarized by Minimum Connected Component (MCC) technique. Average clustering coefficient, average characteristic path length and node degree for two groups were extracted. Results show significantly lower average characteristic path length in depressed group in alpha and total frequency bands. No significant differences in average clustering coefficient between two groups were observed. Higher average degree and higher average PLI in depressed group in alpha, beta and total frequency bands were also observed that may indicate over activation in some brain networks in depressed individuals.
基于脑电信号处理的重度抑郁症患者脑功能网络研究
使用图论度量分析脑功能网络揭示了脑功能的信息方面。重度抑郁症(MDD)是一种世界范围内广泛存在的疾病,它会导致大脑某些功能的紊乱,从而导致大脑网络的改变。为了研究MDD患者脑功能网络的异常,我们利用16例MDD患者和16例正常人静息状态脑电图数据构建脑功能网络。基于相位滞后指数(PLI)的网络分别在delta、theta、alpha、beta和总频段提取。利用最小连通分量(MCC)技术对提取的网络进行二值化。提取两组的平均聚类系数、平均特征路径长度和节点度。结果表明,抑郁组在α波段和总频段的平均特征路径长度明显降低。两组平均聚类系数无显著差异。抑郁组在α、β和总频带上的平均程度和平均PLI也较高,这可能表明抑郁个体的某些脑网络过度激活。
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