Multipattern graph convolutional network-based autism spectrum disorder identification

Author:

Zhou Wenhao12,Sun Mingxiang3,Xu Xiaowen45,Ruan Yudi2,Sun Chenhao6,Li Weikai127ORCID,Gao Xin3

Affiliation:

1. College of Mathematics and Statistics, Chongqing Jiaotong University , Chongqing 400074 , China

2. College of Information Science and Technology, Chongqing Jiaotong University , Chongqing 400074 , China

3. Shanghai Universal Medical Imaging Diagnostic Center , Shanghai 200233 , China

4. Tongji University School of Medicine, Tongji University , Shanghai 200092 , China

5. Department of Medical Imaging, Tongji Hospital , Shanghai 200092 , China

6. Department of Radiology, Rugao Jian’an Hospital , Rugao, Jiangsu 226500 , China

7. Hubei Province Key Laboratory of Molecular Imaging , Wuhan 430022 , China

Abstract

Abstract The early diagnosis of autism spectrum disorder (ASD) has been extensively facilitated through the utilization of resting-state fMRI (rs-fMRI). With rs-fMRI, the functional brain network (FBN) has gained much attention in diagnosing ASD. As a promising strategy, graph convolutional networks (GCN) provide an attractive approach to simultaneously extract FBN features and facilitate ASD identification, thus replacing the manual feature extraction from FBN. Previous GCN studies primarily emphasized the exploration of topological simultaneously connection weights of the estimated FBNs while only focusing on the single connection pattern. However, this approach fails to exploit the potential complementary information offered by different connection patterns of FBNs, thereby inherently limiting the performance. To enhance the diagnostic performance, we propose a multipattern graph convolution network (MPGCN) that integrates multiple connection patterns to improve the accuracy of ASD diagnosis. As an initial endeavor, we endeavored to integrate information from multiple connection patterns by incorporating multiple graph convolution modules. The effectiveness of the MPGCN approach is evaluated by analyzing rs-fMRI scans from a cohort of 92 subjects sourced from the publicly accessible Autism Brain Imaging Data Exchange database. Notably, the experiment demonstrates that our model achieves an accuracy of 91.1% and an area under ROC curve score of 0.9742. The implementation codes are available at https://github.com/immutableJackz/MPGCN.

Funder

National Natural Science Foundation of China

Shanghai Committee of Science and Technology Project

Research project of Shanghai Municipal Health Commission

Joint Training Base Construction Project for Graduate Students in Chongqing

Group Building Scientific Innovation Project for universities in Chongqing

Science and Technology Research Program of Chongqing Municipal Education Commission

Open Program of Hubei Province Key Laboratory of Molecular Imaging

Scientific Research Subjects of Shanghai Universal Medical Imaging Technology

Publisher

Oxford University Press (OUP)

Reference43 articles.

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3. Convolutional neural networks on graphs with fast localized spectral filtering;Defferrard,2016

4. The autism brain imaging data exchange: towards a large-scale evaluation of the intrinsic brain architecture in autism;Di Martino,2014

5. Movement-related effects in fMRI time-series;Friston;Magn Reson Med,1996

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