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A novel spatiotemporal graph convolutional network framework for functional connectivity biomarkers identification of Alzheimer's disease

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机构: [1]School of Communication and Information Engineering, ShanghaiUniversity, Shanghai 200444, China [2]Department of Nuclear Medicine, the Second Hospital of ZhejiangUniversity School of Medicine, Hangzhou 310009, Zhejiang, China [3]Institute of Biomedical Engineering, School of Life Sciences, ShanghaiUniversity, Shanghai 200444, China [4]Department of Neurology, Xuanwu Hospital of Capital MedicalUniversity, Beijing 100053, China [5]Department of Neurology, Shanghai Pudong Hospital, Fudan UniversityPudong Medical Center, 2800 Gongwei Road, Shanghai 201399, Pudong,China
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关键词: Alzheimer’s disease Imaging biomarkers Functional connectivity Graph neural network Multi-site

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Functional connectivity (FC) biomarkers play a crucial role in the early diagnosis and mechanistic study of Alzheimer's disease (AD). However, the identification of effective FC biomarkers remains challenging. In this study, we introduce a novel approach, the spatiotemporal graph convolutional network (ST-GCN) combined with the gradient-based class activation mapping (Grad-CAM) model (STGC-GCAM), to effectively identify FC biomarkers for AD.This multi-center cross-racial retrospective study involved 2,272 participants, including 1,105 cognitively normal (CN) subjects, 790 mild cognitive impairment (MCI) individuals, and 377 AD patients. All participants underwent functional magnetic resonance imaging (fMRI) and T1-weighted MRI scans. In this study, firstly, we optimized the STGC-GCAM model to enhance classification accuracy. Secondly, we identified novel AD-associated biomarkers using the optimized model. Thirdly, we validated the imaging biomarkers using Kaplan-Meier analysis. Lastly, we performed correlation analysis and causal mediation analysis to confirm the physiological significance of the identified biomarkers.The STGC-GCAM model demonstrated great classification performance (The average area under the curve (AUC) values for different categories were: CN vs MCI = 0.98, CN vs AD = 0.95, MCI vs AD = 0.96, stable MCI vs progressive MCI = 0.79). Notably, the model identified specific brain regions, including the sensorimotor network (SMN), visual network (VN), and default mode network (DMN), as key differentiators between patients and CN individuals. These brain regions exhibited significant associations with the severity of cognitive impairment (p < 0.05). Moreover, the topological features of important brain regions demonstrated excellent predictive capability for the conversion from MCI to AD (Hazard ratio = 3.885, p < 0.001). Additionally, our findings revealed that the topological features of these brain regions mediated the impact of amyloid beta (Aβ) deposition (bootstrapped average causal mediation effect: β = -0.01 [-0.025, 0.00], p < 0.001) and brain glucose metabolism (bootstrapped average causal mediation effect: β = -0.02 [-0.04, -0.001], p < 0.001) on cognitive status.This study presents the STGC-GCAM framework, which identifies FC biomarkers using a large multi-site fMRI dataset.© 2024. The Author(s).

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出版当年[2023]版:
大类 | 1 区 医学
小类 | 1 区 临床神经病学 1 区 神经科学
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大类 | 1 区 医学
小类 | 1 区 临床神经病学 1 区 神经科学
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出版当年[2022]版:
Q1 CLINICAL NEUROLOGY Q1 NEUROSCIENCES
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Q1 CLINICAL NEUROLOGY Q1 NEUROSCIENCES

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第一作者机构: [1]School of Communication and Information Engineering, ShanghaiUniversity, Shanghai 200444, China
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