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作者机构:Laboratory for Brain Science and Artificial Intelligence School of Computer Science and Technology Southwest University of Science and Technology Mianyang China MOE Key Laboratory for NeuroInformation Clinical Hospital of Chengdu Brain Science Institute Center for Information in BioMedicine School of Life Science and Technology University of Electronic Science and Technology of China Chengdu China Department of Neurology Sichuan Provincial People’s Hospital University of Electronic Science and Technology of China Chengdu China Chinese Academy of Sciences Sichuan Translational Medicine Research Hospital Chengdu China
出 版 物:《arXiv》 (arXiv)
年 卷 期:2024年
核心收录:
主 题:Magnetic resonance imaging
摘 要:Autism Spectrum Disorder (ASD) is a pervasive developmental disorder of the central nervous system, primarily manifesting in childhood. It is characterized by atypical and repetitive behaviors. Currently, diagnostic methods mainly rely on questionnaire surveys and behavioral observations, which are prone to misdiagnosis due to their subjective nature. With advancements in medical imaging, MR imaging-based diagnostics have emerged as a more objective alternative. In this paper, we propose a Hierarchical Neural Network model for ASD identification, termed ASD-HNet, which hierarchically extracts features from functional brain networks based on resting-state functional magnetic resonance imaging (rs-fMRI) data. This hierarchical approach enhances the extraction of brain representations, improving diagnostic accuracy and aiding in the identification of brain regions associated with ASD. Specifically, features are extracted at three levels: (1) the local region of interest (ROI) scale, (2) the community scale, and (3) the global representation scale. At the ROI scale, graph convolution is employed to transfer features between ROIs. At the community scale, functional gradients are introduced, and a K-Means clustering algorithm is applied to group ROIs with similar functional gradients into communities. Features from ROIs within the same community are then extracted to characterize the communities. At the global representation scale, we extract global features from the whole community-scale brain networks to represent the entire brain. We validate the effectiveness of our method using the publicly available Autism Brain Imaging Data Exchange I (ABIDE-I) dataset. Experimental results demonstrate that ASD-HNet outperforms existing methods. The code is available at https://***/LYQbyte/ASD-HNet. Copyright © 2024, The Authors. All rights reserved.