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初发未用药、复发及用药的重度抑郁症患者的有效连接性改变:一项多中心功能磁共振成像研究

Altered effective connectivity in patients with drug-naïve first-episode, recurrent, and medicated major depressive disorder: A multi-site fMRI study.

作者信息

Dai Peishan, Huang Kaineng, Hu Ting, Chen Qiongpu, Liao Shenghui, Grecucci Alessandro, Yi Xiaoping, Chen Bihong T

机构信息

School of Computer Science and Engineering, Central South University, Changsha, Hunan 410083, PR China.

Department of Psychology and Cognitive Science, University of Trento, Italy; Center for Medical Sciences, University of Trento, Italy.

出版信息

Behav Brain Res. 2025 Oct 18;495:115756. doi: 10.1016/j.bbr.2025.115756. Epub 2025 Aug 5.

Abstract

BACKGROUND

Major depressive disorder (MDD) has been diagnosed through subjective and inconsistent clinical assessments. Resting-state functional magnetic resonance imaging (rs-fMRI) with connectivity analysis has been valuable for identifying neural correlates of patients with MDD, yet most studies rely on single-site and small sample sizes.

METHODS

This study utilized large-scale, multi-site rs-fMRI data from the Rest-meta-MDD consortium to assess effective connectivity in patients with MDD and its subtypes, i.e., drug-naïve first-episode (FEDN), recurrent (RMDD), and medicated MDD (MMDD) subtypes. To mitigate site-related variability, the ComBat algorithm was applied, and multivariate linear regression was used to control for age and gender effects. A random forest classification model was developed to identify the most predictive features. Nested five-fold cross-validation was used to assess model performance.

RESULTS

The model effectively distinguished FEDN subtype from healthy controls (HC) group, achieving 90.13 % accuracy and 96.41 % AUC. However, classification performance for RMDD vs. FEDN and MMDD vs. FEDN was lower, suggesting that differences between the subtypes were less pronounced than differences between the patients with MDD and the HC group. Patients with RMDD exhibited more extensive connectivity abnormalities in the frontal-limbic system and default mode network than the patients with FEDN, implying heightened rumination. Additionally, treatment with medication appeared to partially modulate the aberrant connectivity, steering it toward normalization.

CONCLUSION

This study showed altered brain connectivity in patients with MDD and its subtypes, which could be classified with machine learning models with robust performance. Abnormal connectivity could be the potential neural correlates for the presenting symptoms of patients with MDD. These findings provide novel insights into the neural pathogenesis of patients with MDD.

摘要

背景

重度抑郁症(MDD)一直通过主观且不一致的临床评估来诊断。静息态功能磁共振成像(rs-fMRI)结合连通性分析对于识别MDD患者的神经关联很有价值,但大多数研究依赖于单中心且样本量较小。

方法

本研究利用来自Rest-meta-MDD联盟的大规模、多中心rs-fMRI数据,评估MDD患者及其亚型(即未用药的首发(FEDN)、复发(RMDD)和用药的MDD(MMDD)亚型)的有效连通性。为了减轻与部位相关的变异性,应用了ComBat算法,并使用多元线性回归来控制年龄和性别效应。开发了一种随机森林分类模型来识别最具预测性的特征。采用嵌套五折交叉验证来评估模型性能。

结果

该模型有效地将FEDN亚型与健康对照组(HC)区分开来,准确率达到90.13%,曲线下面积(AUC)为96.41%。然而,RMDD与FEDN以及MMDD与FEDN的分类性能较低,这表明亚型之间的差异不如MDD患者与HC组之间的差异明显。与FEDN患者相比,RMDD患者在额叶-边缘系统和默认模式网络中表现出更广泛的连通性异常,这意味着沉思增加。此外,药物治疗似乎部分调节了异常连通性,使其趋于正常化。

结论

本研究表明MDD患者及其亚型存在大脑连通性改变,这可以通过具有强大性能的机器学习模型进行分类。异常连通性可能是MDD患者现有症状的潜在神经关联。这些发现为MDD患者的神经发病机制提供了新的见解。

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