Impaired topology and connectivity of grey matter structural networks in major depressive disorder: evidence from a multi-site neuroimaging data-set

Jing-Yi Long, Kun Qin, Nanfang Pan, Wen-Liang Fan, Yi Li
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Abstract

Background

Major depressive disorder (MDD) has been increasingly understood as a disruption of brain connectome. Investigating grey matter structural networks with a large sample size can provide valuable insights into the structural basis of network-level neuropathological underpinnings of MDD.

Aims

Using a multisite MRI data-set including nearly 2000 individuals, this study aimed to identify robust topology and connectivity abnormalities of grey matter structural network linked to MDD and relevant clinical phenotypes.

Method

A total of 955 MDD patients and 1009 healthy controls were included from 23 sites. Individualised structural covariance networks (SCN) were established based on grey matter volume maps. Following data harmonisation, network topological metrics and focal connectivity were examined for group-level comparisons, individual-level classification performance and association with clinical ratings. Various validation strategies were applied to confirm the reliability of findings.

Results

Compared with healthy controls, MDD individuals exhibited increased global efficiency, abnormal regional centralities (i.e. thalamus, precentral gyrus, middle cingulate cortex and default mode network) and altered circuit connectivity (i.e. ventral attention network and frontoparietal network). First-episode drug-naive and recurrent patients exhibited different patterns of deficits in network topology and connectivity. In addition, the individual-level classification of topological metrics outperforms that of structural connectivity. The thalamus-insula connectivity was positively associated with the severity of depressive symptoms.

Conclusions

Based on this high-powered data-set, we identified reliable patterns of impaired topology and connectivity of individualised SCN in MDD and relevant subtypes, which adds to the current understanding of neuropathology of MDD and might guide future development of diagnostic and therapeutic markers.

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重度抑郁障碍患者灰质结构网络的拓扑结构和连通性受损:多部位神经影像数据集提供的证据
背景重度抑郁障碍(MDD)已被越来越多地理解为大脑连接组的破坏。本研究旨在利用包括近2000人在内的多部位磁共振成像数据集,确定与MDD及相关临床表型有关的灰质结构网络的稳健拓扑和连接异常。方法共纳入了来自23个部位的955名MDD患者和1009名健康对照者。根据灰质体积图建立了个性化的结构协方差网络(SCN)。数据统一后,对网络拓扑指标和病灶连通性进行了研究,以进行群体水平比较、个体水平分类性能以及与临床评级的关联。结果与健康对照组相比,MDD患者表现出整体效率增加、区域中心异常(即丘脑、前中央回、扣带回中层和默认模式网络)以及回路连接性改变(即腹侧注意网络和额顶网络)。首次发病的未服药患者和复发患者在网络拓扑结构和连接性方面表现出不同的缺陷模式。此外,拓扑指标的个体水平分类优于结构连通性分类。结论基于这一高能数据集,我们发现了MDD及相关亚型个体化SCN拓扑和连接性受损的可靠模式,这增加了目前对MDD神经病理学的理解,并可能指导未来诊断和治疗标记物的开发。
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