Literature DB >> 34294047

GAT-LI: a graph attention network based learning and interpreting method for functional brain network classification.

Jinlong Hu1,2, Lijie Cao3, Tenghui Li3, Shoubin Dong3,4, Ping Li5.   

Abstract

BACKGROUND: Autism spectrum disorders (ASD) imply a spectrum of symptoms rather than a single phenotype. ASD could affect brain connectivity at different degree based on the severity of the symptom. Given their excellent learning capability, graph neural networks (GNN) methods have recently been used to uncover functional connectivity patterns and biological mechanisms in neuropsychiatric disorders, such as ASD. However, there remain challenges to develop an accurate GNN learning model and understand how specific decisions of these graph models are made in brain network analysis.
RESULTS: In this paper, we propose a graph attention network based learning and interpreting method, namely GAT-LI, which learns to classify functional brain networks of ASD individuals versus healthy controls (HC), and interprets the learned graph model with feature importance. Specifically, GAT-LI includes a graph learning stage and an interpreting stage. First, in the graph learning stage, a new graph attention network model, namely GAT2, uses graph attention layers to learn the node representation, and a novel attention pooling layer to obtain the graph representation for functional brain network classification. We experimentally compared GAT2 model's performance on the ABIDE I database from 1035 subjects against the classification performances of other well-known models, and the results showed that the GAT2 model achieved the best classification performance. We experimentally compared the influence of different construction methods of brain networks in GAT2 model. We also used a larger synthetic graph dataset with 4000 samples to validate the utility and power of GAT2 model. Second, in the interpreting stage, we used GNNExplainer to interpret learned GAT2 model with feature importance. We experimentally compared GNNExplainer with two well-known interpretation methods including Saliency Map and DeepLIFT to interpret the learned model, and the results showed GNNExplainer achieved the best interpretation performance. We further used the interpretation method to identify the features that contributed most in classifying ASD versus HC.
CONCLUSION: We propose a two-stage learning and interpreting method GAT-LI to classify functional brain networks and interpret the feature importance in the graph model. The method should also be useful in the classification and interpretation tasks for graph data from other biomedical scenarios.
© 2021. The Author(s).

Entities:  

Keywords:  Classification; Functional brain networks; Graph attention networks; Model interpretation; Resting-state functional connectivity data

Mesh:

Substances:

Year:  2021        PMID: 34294047     DOI: 10.1186/s12859-021-04295-1

Source DB:  PubMed          Journal:  BMC Bioinformatics        ISSN: 1471-2105            Impact factor:   3.169


  2 in total

1.  Identification of Young High-Functioning Autism Individuals Based on Functional Connectome Using Graph Isomorphism Network: A Pilot Study.

Authors:  Sihong Yang; Dezhi Jin; Jun Liu; Ye He
Journal:  Brain Sci       Date:  2022-07-05

2.  CNNG: A Convolutional Neural Networks With Gated Recurrent Units for Autism Spectrum Disorder Classification.

Authors:  Wenjing Jiang; Shuaiqi Liu; Hong Zhang; Xiuming Sun; Shui-Hua Wang; Jie Zhao; Jingwen Yan
Journal:  Front Aging Neurosci       Date:  2022-07-05       Impact factor: 5.702

  2 in total

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