默认模式网络
静息状态功能磁共振成像
功能连接
功能磁共振成像
神经科学
萧条(经济学)
任务正网络
心理学
荟萃分析
神经网络
医学
内科学
经济
宏观经济学
作者
Zhihui Zhang,Yijing Zhang,He Wang,Minghuan Lei,Yifan Jiang,Di Xiong,Yayuan Chen,Yujie Zhang,Guoshu Zhao,Yao Wang,Wanwan Zhang,Jinglei Xu,Ying Zhai,Qi An,Li Shen,Xiaoke Hao,Feng Liu
标识
DOI:10.1017/s0033291725000303
摘要
Abstract Background Depression has been linked to disruptions in resting-state networks (RSNs). However, inconsistent findings on RSN disruptions, with variations in reported connectivity within and between RSNs, complicate the understanding of the neurobiological mechanisms underlying depression. Methods A systematic literature search of PubMed and Web of Science identified studies that employed resting-state functional magnetic resonance imaging (fMRI) to explore RSN changes in depression. Studies using seed-based functional connectivity analysis or independent component analysis were included, and coordinate-based meta-analyses were performed to evaluate alterations in RSN connectivity both within and between networks. Results A total of 58 studies were included, comprising 2321 patients with depression and 2197 healthy controls. The meta-analysis revealed significant alterations in RSN connectivity, both within and between networks, in patients with depression compared with healthy controls. Specifically, within-network changes included both increased and decreased connectivity in the default mode network (DMN) and increased connectivity in the frontoparietal network (FPN). Between-network findings showed increased DMN–FPN and limbic network (LN)–DMN connectivity, decreased DMN–somatomotor network and LN–FPN connectivity, and varied ventral attention network (VAN)–dorsal attentional network (DAN) connectivity. Additionally, a positive correlation was found between illness duration and increased connectivity between the VAN and DAN. Conclusions These findings not only provide a comprehensive characterization of RSN disruptions in depression but also enhance our understanding of the neurobiological mechanisms underlying depression.
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