Publication | Open Access
Multi-Scale Graph Representation Learning for Autism Identification With Functional MRI
30
Citations
47
References
2022
Year
Graph Representation LearningFunctional NeuroimagingSocial SciencesNeurodiversityRepresentation LearningFunctional Connectivity NetworksAutismNeurologyCognitive ScienceGraph Neural NetworkNeuroimaging ModalityPsychiatryAsd DiagnosisAutism IdentificationNeuroimagingDeep LearningFunctional Data AnalysisNeuroimaging BiomarkersGraph TheoryComputational NeuroscienceFcns Feature ExtractionConnectomicsNeuroscienceHigh-dimensional NetworkFunctional ConnectivityMedicine
Resting-state functional MRI (rs-fMRI) has been widely used for the early diagnosis of autism spectrum disorder (ASD). With rs-fMRI, the functional connectivity networks (FCNs) are usually constructed for representing each subject, with each element representing the pairwise relationship between brain region-of-interests (ROIs). Previous studies often first extract handcrafted network features (such as node degree and clustering coefficient) from FCNs and then construct a prediction model for ASD diagnosis, which largely requires expert knowledge. Graph convolutional networks (GCNs) have recently been employed to jointly perform FCNs feature extraction and ASD identification in a data-driven manner. However, existing studies tend to focus on the single-scale topology of FCNs by using one single atlas for ROI partition, thus ignoring potential complementary topology information of FCNs at different spatial scales. In this paper, we develop a multi-scale graph representation learning (MGRL) framework for rs-fMRI based ASD diagnosis. The MGRL consists of three major components: (1) multi-scale FCNs construction using multiple brain atlases for ROI partition, (2) FCNs representation learning via multi-scale GCNs, and (3) multi-scale feature fusion and classification for ASD diagnosis. The proposed MGRL is evaluated on 184 subjects from the public Autism Brain Imaging Data Exchange (ABIDE) database with rs-fMRI scans. Experimental results suggest the efficacy of our MGRL in FCN feature extraction and ASD identification, compared with several state-of-the-art methods.
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