Qiao Jianping, Li Anning, Cao Chongfeng, Wang Zhishun, Sun Jiande, Xu Guangrun
School of Physics and Electronics, Shandong Normal University, Jinan, China.
Shandong Province Key Laboratory of Medical Physics and Image Processing Technology, Shandong Normal University, Jinan, China.
Front Hum Neurosci. 2017 Dec 19;11:626. doi: 10.3389/fnhum.2017.00626. eCollection 2017.
Neural disruptions during emotion regulation are common of generalized anxiety disorder (GAD). Identifying distinct functional and effective connectivity patterns in GAD may provide biomarkers for their diagnoses. This study aims to investigate the differences of features of brain network connectivity between GAD patients and healthy controls (HC), and to assess whether those differences can serve as biomarkers to distinguish GAD from controls. Independent component analysis (ICA) with hierarchical partner matching (HPM-ICA) was conducted on resting-state functional magnetic resonance imaging data collected from 20 GAD patients with medicine-free and 20 matched HC, identifying nine highly reproducible and significantly different functional brain connectivity patterns across diagnostic groups. We then utilized Granger causality (GC) to study the effective connectivity between the regions that identified by HPM-ICA. The linear discriminant analysis was finally used to distinguish GAD from controls with these measures of neural connectivity. The GAD patients showed stronger functional connectivity in amygdala, insula, putamen, thalamus, and posterior cingulate cortex, but weaker in frontal and temporal cortex compared with controls. Besides, the effective connectivity in GAD was decreased from the cortex to amygdala and basal ganglia. Applying the ICA and GC features to the classifier led to a classification accuracy of 87.5%, with a sensitivity of 90.0% and a specificity of 85.0%. These findings suggest that the presence of emotion dysregulation circuits may contribute to the pathophysiology of GAD, and these aberrant brain features may serve as robust brain biomarkers for GAD.
情绪调节过程中的神经紊乱是广泛性焦虑症(GAD)的常见症状。识别GAD中独特的功能和有效连接模式可能为其诊断提供生物标志物。本研究旨在调查GAD患者与健康对照者(HC)之间脑网络连接特征的差异,并评估这些差异是否可作为区分GAD与对照者的生物标志物。对20名未服药的GAD患者和20名匹配的HC收集的静息态功能磁共振成像数据进行了带有分层伙伴匹配的独立成分分析(HPM-ICA),确定了九个跨诊断组高度可重复且显著不同的功能性脑连接模式。然后,我们利用格兰杰因果关系(GC)研究HPM-ICA识别出的区域之间的有效连接。最后使用线性判别分析,通过这些神经连接测量来区分GAD与对照者。与对照者相比,GAD患者在杏仁核、岛叶、壳核、丘脑和后扣带回皮层表现出更强的功能连接,但在额叶和颞叶皮层则较弱。此外,GAD中从皮层到杏仁核和基底神经节的有效连接减少。将ICA和GC特征应用于分类器,分类准确率达到87.5%,敏感性为90.0%,特异性为85.0%。这些发现表明,情绪调节回路的存在可能导致GAD的病理生理学,这些异常的脑特征可能作为GAD可靠的脑生物标志物。