Ma Wenzheng, Wang Yu, Ma Ningxin, Ding Yankai
School of Computer and Artificial Intelligence, Beijing Technology and Business University, Beijing, 100048, China.
School of Computer and Artificial Intelligence, Beijing Technology and Business University, Beijing, 100048, China.
Neuroscience. 2025 Feb 6;566:124-131. doi: 10.1016/j.neuroscience.2024.12.045. Epub 2024 Dec 25.
The diagnosis and analysis of major depressive disorder (MDD) faces some intractable challenges such as dataset limitations and clinical variability. Resting-state functional magnetic resonance imaging (Rs-fMRI) can reflect the fluctuation data of brain activity in a resting state, which can find the interrelationships, functional connections, and network characteristics among brain regions of the patients. In this paper, a brain functional connectivity matrix is constructed using Pearson correlation based on the characteristics of multi-site Rs-fMRI data and brain atlas, and an adaptive propagation operator graph convolutional network (APO-GCN) model is designed. The APO-GCN model can automatically adjust the propagation operator in each hidden layer according to the data features to control the expressive power of the model. By adaptively learning effective information in the graph, this model significantly improves its ability to capture complex graph structural patterns. The experimental results on Rs-fMRI data from 1601 participants (830 MDD and 771 HC) and 16 sites of REST-meta-MDD project show that the APO-GCN achieved a classification accuracy of 91.8%, outperforming those of the state-of-the-art classifier methods. The classification process is driven by multiple significant brain regions, and our method further reveals functional connectivity abnormalities between these brain regions, which are important biomarkers of classification. It is worth noting that the brain regions identified by the classifier and the networks involved are consistent with existing research results, which suggest that the pathogenesis of depression may be related to dysfunction of multiple brain networks.
重度抑郁症(MDD)的诊断与分析面临着一些棘手的挑战,如数据集限制和临床变异性。静息态功能磁共振成像(Rs-fMRI)能够反映静息状态下大脑活动的波动数据,借此可发现患者大脑区域之间的相互关系、功能连接及网络特征。本文基于多站点Rs-fMRI数据和脑图谱的特点,利用皮尔逊相关性构建脑功能连接矩阵,并设计了一种自适应传播算子图卷积网络(APO-GCN)模型。APO-GCN模型能够根据数据特征自动调整各隐藏层中的传播算子,以控制模型的表达能力。通过在图中自适应学习有效信息,该模型显著提升了其捕捉复杂图结构模式的能力。对来自REST-meta-MDD项目16个站点的1601名参与者(830名MDD患者和771名健康对照)的Rs-fMRI数据进行实验,结果表明APO-GCN的分类准确率达到91.8%,优于现有最先进的分类器方法。分类过程由多个重要脑区驱动,我们的方法进一步揭示了这些脑区之间的功能连接异常,这些异常是分类的重要生物标志物。值得注意的是,分类器识别出的脑区和涉及的网络与现有研究结果一致,这表明抑郁症的发病机制可能与多个脑网络功能障碍有关。