Division of Experimental Therapeutics, Department of Psychiatry, New York State Psychiatric Institute/Columbia University Medical Center, New York, NY, USA.
Centro de Investigacion Biomedica en Red de Salud Mental (CIBERSAM), Madrid, Spain.
Sci Rep. 2019 Mar 25;9(1):5071. doi: 10.1038/s41598-019-41175-4.
There is increasing focus on use of resting-state functional connectivity (RSFC) analyses to subtype depression and to predict treatment response. To date, identification of RSFC patterns associated with response to electroconvulsive therapy (ECT) remain limited, and focused on interactions between dorsal prefrontal and regions of the limbic or default-mode networks. Deficits in visual processing are reported in depression, however, RSFC with or within the visual network have not been explored in recent models of depression. Here, we support prior studies showing in a sample of 18 patients with depression that connectivity between dorsal prefrontal and regions of the limbic and default-mode networks serves as a significant predictor. In addition, however, we demonstrate that including visual connectivity measures greatly increases predictive power of the RSFC algorithm (>80% accuracy of remission). These exploratory results encourage further investigation into visual dysfunction in depression, and use of RSFC algorithms incorporating the visual network in prediction of response to both ECT and transcranial magnetic stimulation (TMS), offering a new framework for the development of RSFC-guided TMS interventions in depression.
目前,越来越多的人关注利用静息态功能连接(RSFC)分析来对抑郁症进行亚型分类,并预测治疗反应。迄今为止,与电惊厥治疗(ECT)反应相关的 RSFC 模式的识别仍然有限,并且主要集中在背侧前额叶与边缘或默认模式网络区域之间的相互作用。已有研究报道抑郁症患者存在视觉处理缺陷,但在最近的抑郁症模型中,尚未探讨 RSFC 与视觉网络内或视觉网络内的关系。在这里,我们支持先前的研究,该研究表明在 18 名抑郁症患者的样本中,背侧前额叶与边缘和默认模式网络区域之间的连接是一个重要的预测指标。但是,除此之外,我们还证明,包括视觉连通性测量极大地提高了 RSFC 算法的预测能力(缓解的准确率超过 80%)。这些探索性结果鼓励进一步研究抑郁症中的视觉功能障碍,并在预测 ECT 和经颅磁刺激(TMS)反应中使用包含视觉网络的 RSFC 算法,为抑郁症的 RSFC 指导 TMS 干预提供了新的框架。