Zhao Xiaole, Xiao Pan, Gui Honge, Xu Bintao, Wang Hongyu, Tao Li, Chen Huiyue, Wang Hansheng, Lv Fajin, Luo Tianyou, Cheng Oumei, Luo Jing, Man Yun, Xiao Zheng, Fang Weidong
Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.
Department of Neurology, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.
Neuroscience. 2024 Dec 17;563:239-251. doi: 10.1016/j.neuroscience.2024.11.030. Epub 2024 Nov 15.
Essential tremor with resting tremor (rET) and tremor-dominant Parkinson's disease (tPD) share many similar clinical symptoms, leading to frequent misdiagnoses. Functional connectivity (FC) matrix analysis derived from resting-state functional MRI (Rs-fMRI) offers a promising approach for early diagnosis and for exploring FC network pathogenesis in rET and tPD. However, methods relying solely on a single connection pattern may overlook the complementary roles of different connectivity patterns, resulting in reduced diagnostic differentiation. Therefore, we propose a multi-pattern connection Graph Convolutional Network (MCGCN) method to integrate information from various connection modes, distinguishing between rET and healthy controls (HC), tPD and HC, and rET and tPD. We constructed FC matrices using three different connectivity modes for each subject and used these as inputs to the MCGCN model for disease classification. The classification performance of the model was evaluated for each connectivity mode. Subsequently, gradient-weighted class activation mapping (Grad-CAM) was used to identify the most discriminative brain regions. The important brain regions identified were primarily distributed within cerebellar-motor and non-motor cortical networks. Compared with single-pattern GCN, our proposed MCGCN model demonstrated superior classification accuracy, underscoring the advantages of integrating multiple connectivity modes. Specifically, the model achieved an average accuracy of 88.0% for distinguishing rET from HC, 88.8% for rET from tPD, and 89.6% for tPD from HC. Our findings indicate that combining graph convolutional networks with multi-connection patterns can not only effectively discriminate between tPD, rET, and HC but also enhance our understanding of the functional network mechanisms underlying rET and tPD.
伴有静止性震颤(rET)的特发性震颤和震颤为主型帕金森病(tPD)有许多相似的临床症状,导致误诊频繁。基于静息态功能磁共振成像(Rs-fMRI)的功能连接(FC)矩阵分析为rET和tPD的早期诊断以及探索FC网络发病机制提供了一种有前景的方法。然而,仅依赖单一连接模式的方法可能会忽略不同连接模式的互补作用,从而降低诊断区分度。因此,我们提出一种多模式连接图卷积网络(MCGCN)方法,以整合来自各种连接模式的信息,区分rET与健康对照(HC)、tPD与HC以及rET与tPD。我们为每个受试者使用三种不同的连接模式构建FC矩阵,并将其作为输入用于MCGCN模型进行疾病分类。针对每种连接模式评估模型的分类性能。随后,使用梯度加权类激活映射(Grad-CAM)来识别最具区分性的脑区。识别出的重要脑区主要分布在小脑运动和非运动皮层网络内。与单模式GCN相比,我们提出的MCGCN模型表现出更高的分类准确率,突出了整合多种连接模式的优势。具体而言,该模型区分rET与HC的平均准确率为88.0%,区分rET与tPD的平均准确率为88.8%,区分tPD与HC的平均准确率为89.6%。我们的研究结果表明,将图卷积网络与多连接模式相结合不仅可以有效区分tPD、rET和HC,还能增强我们对rET和tPD潜在功能网络机制的理解。