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Social Anxiety Disorder Evaluation using Effective Connectivity Measures: EEG Phase Slope Index Study

机译:使用有效连通措施评估社交焦虑症:EEG相坡指数研究

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Social Anxiety Disorder (SAD) is a prevalent, debilitating, and psychiatric condition marked by intense anxiety of being evaluated of negative appraisal or criticism in social events, which results in greater functional impairment in the brain. The main objective of this study is to quantify the severity of SAD by using effective connectivity (EC). Electroencephalography (EEG) is a suitable estimation mechanism to assess the EC network underlying the SAD data, due to its high temporal resolution. EEG data were acquired from 20 subjects divided to 5 severe, 5 average, 5 mild, and 5 healthy control (HC) in the anticipation time (before delivering a speech in public). The EEG data was used to estimate the EC network using the phase slope index (PSI) algorithm in the alpha band (8–13 Hz). The difference between the PSI metrics in all the SAD groups was significant ($mathrm{p} < 0.024$). EEG results showed that the severe and average groups have greater EC in the left hemisphere for alpha networks, while mild and HC groups have shown greater EC networks in the right hemisphere. The midparietal lobe has shown to be the main brain hub in the severe group, while the right frontal cortex has shown to be the major brain hub for HC. The current results confirm that the involvement of the PSI algorithm in alpha oscillations is providing higher recognition of SAD level due to its sensitivity to characterize mental illness such as SAD and depression.
机译:社交焦虑症(悲伤)是在社会事件中评估负面评估或批评的激烈焦虑,这是一种普遍的,衰弱和精神病的病情,这导致大脑中的功能损害更大。本研究的主要目的是通过使用有效连接(EC)来量化悲伤的严重程度。脑电图(EEG)是一种适当的估计机制,用于评估悲伤数据的欧共态网网络,由于其高的时间分辨率。在预期时间(在公开发表演讲之前,从20名受试者中获得eEG数据。 EEG数据用于使用Alpha Band中的相位斜率指数(PSI)算法(8-13 Hz)估计EC网络。所有悲伤群体中PSI指标之间的差异很大( $ mathrm {p} < 0.024 $ )。 EEG结果表明,严重和平均基团在左半球中具有较大的EC,用于α网络,而Mild和HC组在右半球中显示了较大的EC网络。中共叶片已显示是严重组的主要脑集线器,而正确的额叶皮质显示为HC的主要脑集线器。目前的结果证实,由于其对悲伤和抑郁等精神疾病的敏感性,PSI算法在α振荡中的参与提供了对悲伤水平的识别。

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