使用动态图卷积网络识别重度抑郁症患者。

IF 4.9 2区 医学 Q1 CLINICAL NEUROLOGY
Ni Zhou, Ze Yuan, Hongying Zhou, Dongbin Lyu, Fan Wang, Meiti Wang, Zhongjiao Lu, Qinte Huang, Yiming Chen, Haijing Huang, Tongdan Cao, Chenglin Wu, Weichieh Yang, Wu Hong
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引用次数: 0

摘要

客观、定量的神经影像生物标志物对于重度抑郁症(MDD)的早期诊断至关重要。然而,以往使用机器学习(ML)来区分重度抑郁症的研究通常使用的样本量较小,而且忽略了重度抑郁症的神经连接组和机制。为了弥补这些不足,我们将动态图卷积网络(DGCN)应用于一个大型多站点数据集,该数据集包含来自 16 个 Rest-meta-MDD 联盟站点的 1081 名 MDD 患者和 1236 名健康对照者的 2317 次静息状态功能磁共振成像(RS-fMRI)扫描。我们的 DGCN 模型与个人全脑功能连接(FC)网络相结合,准确率达到 82.5 %(95 % CI:81.6-83.4 %,AUC:0.869),优于其他通用 ML 分类器。最突出的分类域主要集中在默认模式网络、前顶叶网络和丘脑网络。我们的研究支持使用 DGCN 来描述 MDD 的稳定性和有效性,并通过检测 FC 网络拓扑中与临床相关的紊乱,证明了其在增强对 MDD 的神经生物学理解方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using dynamic graph convolutional network to identify individuals with major depression disorder.

Objective and quantitative neuroimaging biomarkers are crucial for early diagnosis of major depressive disorder (MDD). However, previous studies using machine learning (ML) to distinguish MDD have often used small sample sizes and overlooked MDD's neural connectome and mechanism. To address these gaps, we applied Dynamic Graph Convolutional Nets (DGCNs) to a large multi-site dataset of 2317 resting state functional MRI (RS-fMRI) scans from 1081 MDD patients and 1236 healthy controls from 16 Rest-meta-MDD consortium sites. Our DGCN model combined with the personal whole brain functional connectivity (FC) network achieved an accuracy of 82.5 % (95 % CI:81.6-83.4 %, AUC:0.869), outperforming other universal ML classifiers. The most prominent domains for classification were mainly in the default mode network, fronto-parietal and cingulo-opercular network. Our study supports the stability and efficacy of using DGCN to characterize MDD and demonstrates its potential in enhancing neurobiological comprehension of MDD by detecting clinically related disorders in FC network topologies.

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来源期刊
Journal of affective disorders
Journal of affective disorders 医学-精神病学
CiteScore
10.90
自引率
6.10%
发文量
1319
审稿时长
9.3 weeks
期刊介绍: The Journal of Affective Disorders publishes papers concerned with affective disorders in the widest sense: depression, mania, mood spectrum, emotions and personality, anxiety and stress. It is interdisciplinary and aims to bring together different approaches for a diverse readership. Top quality papers will be accepted dealing with any aspect of affective disorders, including neuroimaging, cognitive neurosciences, genetics, molecular biology, experimental and clinical neurosciences, pharmacology, neuroimmunoendocrinology, intervention and treatment trials.
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