Chen Xiaoyi, Ke Pengfei, Huang Yuanyuan, Zhou Jing, Li Hehua, Peng Runlin, Huang Jiayuan, Liang LiQing, Ma Guolin, Li Xiaobo, Ning Yuping, Wu Fengchun, Wu Kai
Department of Biomedical Engineering, School of Biomedical Sciences and Engineering, South China University of Technology, Guangzhou International Campus, Guangzhou, China.
Department of Emotional Disorders, The Affiliated Brain Hospital of Guangzhou Medical University, Guangzhou, China.
Front Neurosci. 2023 Mar 30;17:1140801. doi: 10.3389/fnins.2023.1140801. eCollection 2023.
Recent studies in human brain connectomics with multimodal magnetic resonance imaging (MRI) data have widely reported abnormalities in brain structure, function and connectivity associated with schizophrenia (SZ). However, most previous discriminative studies of SZ patients were based on MRI features of brain regions, ignoring the complex relationships within brain networks.
We applied a graph convolutional network (GCN) to discriminating SZ patients using the features of brain region and connectivity derived from a combined multimodal MRI and connectomics analysis. Structural magnetic resonance imaging (sMRI) and resting-state functional magnetic resonance imaging (rs-fMRI) data were acquired from 140 SZ patients and 205 normal controls. Eighteen types of brain graphs were constructed for each subject using 3 types of node features, 3 types of edge features, and 2 brain atlases. We investigated the performance of 18 brain graphs and used the TopK pooling layers to highlight salient brain regions (nodes in the graph).
The GCN model, which used functional connectivity as edge features and multimodal features (sMRI + fMRI) of brain regions as node features, obtained the highest average accuracy of 95.8%, and outperformed other existing classification studies in SZ patients. In the explainability analysis, we reported that the top 10 salient brain regions, predominantly distributed in the prefrontal and occipital cortices, were mainly involved in the systems of emotion and visual processing.
Our findings demonstrated that GCN with a combined multimodal MRI and connectomics analysis can effectively improve the classification of SZ at an individual level, indicating a promising direction for the diagnosis of SZ patients. The code is available at https://github.com/CXY-scut/GCN-SZ.git.
近期利用多模态磁共振成像(MRI)数据进行的人类脑连接组学研究广泛报道了与精神分裂症(SZ)相关的脑结构、功能和连接异常。然而,此前大多数针对SZ患者的判别研究都是基于脑区的MRI特征,忽略了脑网络内部的复杂关系。
我们应用图卷积网络(GCN),利用从多模态MRI和连接组学联合分析中得出的脑区特征和连接性来判别SZ患者。从140例SZ患者和205名正常对照者获取了结构磁共振成像(sMRI)和静息态功能磁共振成像(rs-fMRI)数据。使用3种节点特征、3种边特征和2种脑图谱为每个受试者构建了18种类型的脑图。我们研究了18种脑图的性能,并使用TopK池化层突出显著的脑区(图中的节点)。
以功能连接性作为边特征、脑区的多模态特征(sMRI + fMRI)作为节点特征的GCN模型获得了最高平均准确率95.8%,优于此前针对SZ患者的其他现有分类研究。在可解释性分析中,我们报告称,排名前10的显著脑区主要分布在额叶和枕叶皮质,主要参与情绪和视觉处理系统。
我们的研究结果表明,结合多模态MRI和连接组学分析的GCN能够在个体水平上有效提高SZ的分类准确率,为SZ患者的诊断指明了一个有前景的方向。代码可在https://github.com/CXY-scut/GCN-SZ.git获取。