Temporal Dynamic Synchronous Functional Brain Network for Schizophrenia Classification and Lateralization Analysis.

Cheng Zhu, Ying Tan, Shuqi Yang, Jiaqing Miao, Jiayi Zhu, Huan Huang, Dezhong Yao, Cheng Luo
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Abstract

Available evidence suggests that dynamic functional connectivity can capture time-varying abnormalities in brain activity in resting-state cerebral functional magnetic resonance imaging (rs-fMRI) data and has a natural advantage in uncovering mechanisms of abnormal brain activity in schizophrenia (SZ) patients. Hence, an advanced dynamic brain network analysis model called the temporal brain category graph convolutional network (Temporal-BCGCN) was employed. Firstly, a unique dynamic brain network analysis module, DSF-BrainNet, was designed to construct dynamic synchronization features. Subsequently, a revolutionary graph convolution method, TemporalConv, was proposed based on the synchronous temporal properties of features. Finally, the first modular test tool for abnormal hemispherical lateralization in deep learning based on rs-fMRI data, named CategoryPool, was proposed. This study was validated on COBRE and UCLA datasets and achieved 83.62% and 89.71% average accuracies, respectively, outperforming the baseline model and other state-of-the-art methods. The ablation results also demonstrate the advantages of TemporalConv over the traditional edge feature graph convolution approach and the improvement of CategoryPool over the classical graph pooling approach. Interestingly, this study showed that the lower-order perceptual system and higher-order network regions in the left hemisphere are more severely dysfunctional than in the right hemisphere in SZ, reaffirmings the importance of the left medial superior frontal gyrus in SZ. Our code was available at: https://github.com/swfen/Temporal-BCGCN.

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用于精神分裂症分类和侧化分析的时态动态同步功能脑网络
现有证据表明,动态功能连接可以捕捉静息态脑功能磁共振成像(rs-fMRI)数据中大脑活动的时变异常,在揭示精神分裂症(SZ)患者大脑活动异常机制方面具有天然优势。因此,我们采用了一种先进的动态脑网络分析模型--时空脑类别图卷积网络(Temporal-BCGCN)。首先,设计了一个独特的动态脑网络分析模块--DSF-BrainNet,用于构建动态同步特征。随后,基于特征的同步时间属性,提出了一种革命性的图卷积方法 TemporalConv。最后,提出了第一个基于 rs-fMRI 数据的深度学习异常半球侧化模块化测试工具,名为 CategoryPool。这项研究在 COBRE 和 UCLA 数据集上进行了验证,平均准确率分别达到 83.62% 和 89.71%,优于基线模型和其他最先进的方法。消融结果还证明了 TemporalConv 相对于传统边缘特征图卷积方法的优势,以及 CategoryPool 相对于经典图池方法的改进。有趣的是,这项研究表明,在 SZ 患者中,左半球的低阶感知系统和高阶网络区域的功能障碍比右半球更为严重,这再次证实了左侧内侧额上回在 SZ 中的重要性。我们的代码见:https://github.com/swfen/Temporal-BCGCN。
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