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Altered resting-state dynamic functional brain networks in major depressive disorder: Findings from the REST-meta-MDD consortium

Authors :
Li Wang
Jingping Zhao
Jia Duan
Ying-Ying Yin
Wenbin Guo
Zhening Liu
Yu-Shu Shi
Hong Zhang
Jiang Qiu
Weidan Pu
Calais Kin Yuen Chan
Jia-Shu Yao
Yi-Ru Fang
Qi-Jing Bo
Hai-Tang Qiu
Daihui Peng
Qing-Hua Luo
Ning-Xuan Chen
Xiao Chen
Chao-Gan Yan
Ying Wang
Kaiming Li
Yu-Qi Cheng
Lei Zhang
Xi-Long Cui
Le Li
Ai-Xia Zhang
Lan Hu
Xiang Wang
Tian-Mei Si
Chang Cheng
Chuanyue Wang
Hong Yang
Yonggui Yuan
Xiao-Ping Wu
Ru-Bai Zhou
Xinran Wu
Chunming Xie
Tao Li
Zheng-Hua Hou
Chao-Jie Zou
Yue-Di Shen
Guanmao Chen
Hengyi Cao
Hua-Qing Meng
Qiyong Gong
Hai-Yan Xie
Peng Xie
Francisco X. Castellanos
Kai Wang
Wei Chen
Zhijun Zhang
Yi-Ting Zhou
Yan-Song Liu
Jian Yang
Li Kuang
Tong-Jian Bai
Guang-Rong Xie
Yu-Feng Zang
Fei Wang
Jun-Juan Zhu
Xiufeng Xu
Shuqiao Yao
Kerang Zhang
Feng Li
Yi-Cheng Long
Source :
NeuroImage: Clinical, Vol 26, Iss, Pp-(2020), NeuroImage : Clinical
Publication Year :
2020
Publisher :
Elsevier, 2020.

Abstract

Background: Major depressive disorder (MDD) is known to be characterized by altered brain functional connectivity (FC) patterns. However, whether and how the features of dynamic FC would change in patients with MDD are unclear. In this study, we aimed to characterize dynamic FC in MDD using a large multi-site sample and a novel dynamic network-based approach. Methods: Resting-state functional magnetic resonance imaging (fMRI) data were acquired from a total of 460 MDD patients and 473 healthy controls, as a part of the REST-meta-MDD consortium. Resting-state dynamic functional brain networks were constructed for each subject by a sliding-window approach. Multiple spatio-temporal features of dynamic brain networks, including temporal variability, temporal clustering and temporal efficiency, were then compared between patients and healthy subjects at both global and local levels. Results: The group of MDD patients showed significantly higher temporal variability, lower temporal correlation coefficient (indicating decreased temporal clustering) and shorter characteristic temporal path length (indicating increased temporal efficiency) compared with healthy controls (corrected p < 3.14×10−3). Corresponding local changes in MDD were mainly found in the default-mode, sensorimotor and subcortical areas. Measures of temporal variability and characteristic temporal path length were significantly correlated with depression severity in patients (corrected p < 0.05). Moreover, the observed between-group differences were robustly present in both first-episode, drug-naïve (FEDN) and non-FEDN patients. Conclusions: Our findings suggest that excessive temporal variations of brain FC, reflecting abnormal communications between large-scale bran networks over time, may underlie the neuropathology of MDD.

Details

Language :
English
ISSN :
22131582
Volume :
26
Database :
OpenAIRE
Journal :
NeuroImage: Clinical
Accession number :
edsair.doi.dedup.....327f779f8f5eb11a6dad43327617b86e