A deep connectome learning network using graph convolution for connectome-disease association study

被引:15
|
作者
Yang, Yanwu [1 ,2 ]
Ye, Chenfei [2 ,3 ]
Ma, Ting [1 ,2 ,3 ,4 ,5 ]
机构
[1] Harbin Inst Technol Shenzhen, Dept Elect & Informat Engn, Shenzhen, Peoples R China
[2] Peng Cheng Lab, Shenzhen, Peoples R China
[3] Harbin Inst Technol Shenzhen, Int Res Inst Artificial Intelligence, Shenzhen, Peoples R China
[4] Harbin Inst Technol Shenzhen, Guangdong Prov Key Lab Aerosp Commun & Networking, Shenzhen, Peoples R China
[5] Harbin Inst Technol Shenzhen, Dept Elect & Informat, Rm 1206,Informat Bldg,HIT Campus, Shenzhen 518055, Guangdong, Peoples R China
基金
中国国家自然科学基金;
关键词
Deep connectome learning; Distance-based connectome network; Connectome-wide association study; Graph neural network; PREFRONTAL CORTEX; WIDE ASSOCIATION; BRAIN NETWORKS; AUTISM; FMRI; ATTENTION; DISORDERS; ADULTS; ADHD;
D O I
10.1016/j.neunet.2023.04.025
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Multivariate analysis approaches provide insights into the identification of phenotype associations in brain connectome data. In recent years, deep learning methods including convolutional neural network (CNN) and graph neural network (GNN), have shifted the development of connectomewide association studies (CWAS) and made breakthroughs for connectome representation learning by leveraging deep embedded features. However, most existing studies remain limited by potentially ignoring the exploration of region-specific features, which play a key role in distinguishing brain disorders with high intra-class variations, such as autism spectrum disorder (ASD), and attention deficit hyperactivity disorder (ADHD). Here, we propose a multivariate distance-based connectome network (MDCN) that addresses the local specificity problem by efficient parcellation-wise learning, as well as associating population and parcellation dependencies to map individual differences. The approach incorporating an explainable method, parcellation-wise gradient and class activation map (p-GradCAM), is feasible for identifying individual patterns of interest and pinpointing connectome associations with diseases. We demonstrate the utility of our method on two largely aggregated multicenter public datasets by distinguishing ASD and ADHD from healthy controls and assessing their associations with underlying diseases. Extensive experiments have demonstrated the superiority of MDCN in classification and interpretation, where MDCN outperformed competitive state-of-the-art methods and achieved a high proportion of overlap with previous findings. As a CWAS-guided deep learning method, our proposed MDCN framework may narrow the bridge between deep learning and CWAS approaches, and provide new insights for connectome-wide association studies. (c) 2023 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
引用
收藏
页码:91 / 104
页数:14
相关论文
共 50 条
  • [31] Functional Brain Network Alterations in Clinically Isolated Syndrome and Multiple Sclerosis: A Graph-based Connectome Study
    Liu, Yaou
    Wang, Hao
    Duan, Yunyun
    Huang, Jing
    Ren, Zhuoqiong
    Ye, Jing
    Dong, Huiqing
    Shi, Fudong
    Li, Kuncheng
    Wang, Jinhui
    RADIOLOGY, 2017, 282 (02) : 534 - 541
  • [32] Unravelling the Parkinson's disease network: Taking the connectome beyond the brain
    Geraedts, V. J.
    van Hilten, J. J.
    Contarino, M. F.
    Tannemaat, M. R.
    CLINICAL NEUROPHYSIOLOGY, 2019, 130 (11) : 2017 - 2018
  • [33] A dynamic graph convolutional neural network framework reveals new insights into connectome dysfunctions in ADHD
    Zhao, Kanhao
    Duka, Boris
    Xie, Hua
    Oathes, Desmond J.
    Calhoun, Vince
    Zhang, Yu
    NEUROIMAGE, 2022, 246
  • [34] Multisensory integration in the mouse cortical connectome using a network diffusion model
    Shadi, Kamal
    Dyer, Eva
    Dovrolis, Constantine
    NETWORK NEUROSCIENCE, 2020, 4 (04): : 1030 - 1054
  • [35] Dissociating individual connectome traits using low-rank learning
    Qin, Jian
    Shen, Hui
    Zeng, Ling-Li
    Gao, Kai
    Luo, Zhiguo
    Hu, Dewen
    BRAIN RESEARCH, 2019, 1722
  • [36] GCNGAT: Drug-disease association prediction based on graph convolution neural network and graph attention network
    Yang, Runtao
    Fu, Yao
    Zhang, Qian
    Zhang, Lina
    ARTIFICIAL INTELLIGENCE IN MEDICINE, 2024, 150
  • [37] Learning Graph Representation of Bug Reports to Triage Bugs using Graph Convolution Network
    Zaidi, Syed Farhan Alam
    Lee, Chan-Gun
    35TH INTERNATIONAL CONFERENCE ON INFORMATION NETWORKING (ICOIN 2021), 2021, : 504 - 507
  • [38] A Statistical Approach in Human Brain Connectome of Parkinson Disease in Elderly People Using Network Based Statistics
    Aarabi, Mohammad Hadi
    Kamalian, Aida
    Mohajer, Bahram
    Shandiz, Mahdi Shirin
    Eqlimi, Ehsan
    Shojaei, Ahmad
    Safabakhsh, Hamidreza
    2015 37TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2015, : 4310 - 4313
  • [39] Dissociable salience and default mode network modulation in generalized anxiety disorder: a connectome-wide association study
    Li, Rong
    Shen, Fei
    Sun, Xiyue
    Zou, Ting
    Li, Liyuan
    Wang, Xuyang
    Deng, Chijun
    Duan, Xujun
    He, Zongling
    Yang, Mi
    Li, Zezhi
    Chen, Huafu
    CEREBRAL CORTEX, 2023, 33 (10) : 6354 - 6365
  • [40] Identifying disease-related subnetwork connectome biomarkers by sparse hypergraph learning
    Zu, Chen
    Gao, Yue
    Munsell, Brent
    Kim, Minjeong
    Peng, Ziwen
    Cohen, Jessica R.
    Zhang, Daoqiang
    Wu, Guorong
    BRAIN IMAGING AND BEHAVIOR, 2019, 13 (04) : 879 - 892