Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital, Sichuan University, Chengdu, China.
Department of Psychosis Studies, Institute of Psychiatry, Psychology & Neuroscience, King's College London, London, UK.
Schizophr Bull. 2022 Jun 21;48(4):881-892. doi: 10.1093/schbul/sbac047.
Schizophrenia is increasingly understood as a disorder of brain dysconnectivity. Recently, graph-based approaches such as graph convolutional network (GCN) have been leveraged to explore complex pairwise similarities in imaging features among brain regions, which can reveal abstract and complex relationships within brain networks.
We used GCN to investigate topological abnormalities of functional brain networks in schizophrenia. Resting-state functional magnetic resonance imaging data were acquired from 505 individuals with schizophrenia and 907 controls across 6 sites. Whole-brain functional connectivity matrix was extracted for each individual. We examined the performance of GCN relative to support vector machine (SVM), extracted the most salient regions contributing to both classification models, investigated the topological profiles of identified salient regions, and explored correlation between nodal topological properties of each salient region and severity of symptom.
GCN enabled nominally higher classification accuracy (85.8%) compared with SVM (80.9%). Based on the saliency map, the most discriminative brain regions were located in a distributed network including striatal areas (ie, putamen, pallidum, and caudate) and the amygdala. Significant differences in the nodal efficiency of bilateral putamen and pallidum between patients and controls and its correlations with negative symptoms were detected in post hoc analysis.
The present study demonstrates that GCN allows classification of schizophrenia at the individual level with high accuracy, indicating a promising direction for detection of individual patients with schizophrenia. Functional topological deficits of striatal areas may represent a focal neural deficit of negative symptomatology in schizophrenia.
精神分裂症越来越被认为是一种大脑连接失调的疾病。最近,基于图的方法(如图卷积网络(GCN))被用于探索大脑区域之间成像特征的复杂成对相似性,这可以揭示大脑网络内的抽象和复杂关系。
我们使用 GCN 来研究精神分裂症患者大脑功能网络的拓扑异常。从 6 个地点采集了 505 名精神分裂症患者和 907 名对照者的静息态功能磁共振成像数据。为每个个体提取了全脑功能连接矩阵。我们比较了 GCN 与支持向量机(SVM)的性能,提取了对两种分类模型都有贡献的最显著区域,研究了确定的显著区域的拓扑特征,并探索了每个显著区域的节点拓扑性质与症状严重程度之间的相关性。
GCN 实现了比 SVM 更高的分类准确性(85.8%对 80.9%)。基于显著图,最具区分性的大脑区域位于包括纹状体区域(即壳核、苍白球和尾状核)和杏仁核在内的分布式网络中。在后测分析中发现,患者和对照组之间双侧壳核和苍白球的节点效率存在显著差异,且与阴性症状相关。
本研究表明,GCN 可以以高精度对个体进行精神分裂症分类,表明这是检测个体精神分裂症患者的一个有前途的方向。纹状体区域的功能拓扑缺陷可能代表精神分裂症阴性症状的局部神经缺陷。