Edge-Centric Brain Connectome Representations Reveal Increased Brain Functional Diversity of Reward Circuit in Patients With Major Depressive Disorder.

IF 9 1区 医学 Q1 NEUROSCIENCES
Kun Qin, Chunqi Ai, Pengyu Zhu, Jialin Xiang, Xiong Chen, Lisha Zhang, Conghui Wang, Lulu Zou, Fang Chen, Xuhang Pan, Yuxi Wang, Junchen Gu, Nanfang Pan, Wen Chen
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引用次数: 0

Abstract

Background: Major depressive disorder (MDD) has been increasingly understood as a disorder of network-level functional dysconnectivity. However, previous brain connectome studies have primarily relied on node-centric approaches, neglecting critical edge-edge interactions that may capture essential features of network dysfunction.

Methods: This study included resting-state functional magnetic resonance imaging data from 838 patients with MDD and 881 healthy control (HC) participants across 23 sites. We applied a novel edge-centric connectome model to estimate edge functional connectivity and identify overlapping network communities. Regional functional diversity was quantified via normalized entropy based on community overlap patterns. Neurobiological decoding was performed to map brain-wide relationships between functional diversity alterations and patterns of gene expression and neurotransmitter distribution. Comparative machine learning analyses further evaluated the diagnostic utility of edge-centric versus node-centric connectome representations.

Results: Compared with HC participants, patients with MDD exhibited significantly increased functional diversity within the prefrontal-striatal-thalamic reward circuit. Neurobiological decoding analysis revealed that functional diversity alterations in MDD were spatially associated with transcriptional patterns enriched for inflammatory processes, as well as distribution of 5-HT1B receptors. Machine learning analyses demonstrated superior classification performance of edge-centric models over traditional node-centric approaches in distinguishing patients with MDD from HC participants at the individual level.

Conclusions: Our findings highlight that abnormal functional diversity within the reward processing system might underlie multilevel neurobiological mechanisms of MDD. The edge-centric connectome approach offers a valuable tool for identifying disease biomarkers, characterizing individual variation and advancing current understanding of complex network configuration in psychiatric disorders.

边缘中心脑连接组表征揭示重度抑郁症患者奖赏回路的脑功能多样性增加。
背景:重度抑郁症(MDD)被越来越多地理解为一种网络级功能连接障碍。然而,先前的脑连接组研究主要依赖于以节点为中心的方法,忽视了可能捕捉网络功能障碍基本特征的关键边缘相互作用。方法:本研究包括来自23个地点的838名MDD患者和881名健康对照(HC)的静息状态功能MRI数据。我们应用了一种新的以边缘为中心的连接体模型来估计边缘功能连通性并识别重叠的网络社区。利用归一化熵方法对区域功能多样性进行量化。进行神经生物学解码以绘制功能多样性改变与基因表达模式和神经递质分布之间的全脑关系。比较机器学习分析进一步评估了以边缘为中心与以节点为中心的连接组表示的诊断效用。结果:与HC相比,重度抑郁症患者前额叶-纹状体-丘脑奖赏回路的功能多样性显著增加。神经生物学解码分析显示,MDD的功能多样性改变在空间上与炎症过程中富集的转录模式以及5-HT1B受体的分布有关。机器学习分析表明,在个体水平上区分MDD患者和HC患者方面,以边缘为中心的模型比传统的以节点为中心的方法具有更好的分类性能。结论:我们的研究结果强调了奖励处理系统中异常的功能多样性可能是重度抑郁症多层次神经生物学机制的基础。以边缘为中心的连接组方法为识别疾病生物标志物、表征个体差异和推进当前对精神疾病复杂网络结构的理解提供了有价值的工具。
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来源期刊
Biological Psychiatry
Biological Psychiatry 医学-精神病学
CiteScore
18.80
自引率
2.80%
发文量
1398
审稿时长
33 days
期刊介绍: Biological Psychiatry is an official journal of the Society of Biological Psychiatry and was established in 1969. It is the first journal in the Biological Psychiatry family, which also includes Biological Psychiatry: Cognitive Neuroscience and Neuroimaging and Biological Psychiatry: Global Open Science. The Society's main goal is to promote excellence in scientific research and education in the fields related to the nature, causes, mechanisms, and treatments of disorders pertaining to thought, emotion, and behavior. To fulfill this mission, Biological Psychiatry publishes peer-reviewed, rapid-publication articles that present new findings from original basic, translational, and clinical mechanistic research, ultimately advancing our understanding of psychiatric disorders and their treatment. The journal also encourages the submission of reviews and commentaries on current research and topics of interest.
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