Publication | Open Access
Multi-Scale Dynamic Graph Learning for Brain Disorder Detection With Functional MRI
52
Citations
53
References
2023
Year
Graph Representation LearningEngineeringFmri DataNetwork AnalysisBrain MappingFunctional NeuroimagingSocial SciencesRepresentation LearningData ScienceNeurologyNetwork NeuroscienceGraph Neural NetworkFmri FeaturesNeuroinformaticsTopological RepresentationNeuroimagingBrain NetworksDeep LearningMedical Image ComputingNeuroimaging BiomarkersGraph TheoryComputational NeuroscienceConnectomicsNeuroscienceBrain Disorder DetectionHigh-dimensional NetworkGraph AnalysisFunctional ConnectivityFunctional Mri
Resting-state functional magnetic resonance imaging (rs-fMRI) has been widely used in the detection of brain disorders such as autism spectrum disorder based on various machine/deep learning techniques. Learning-based methods typically rely on functional connectivity networks (FCNs) derived from blood-oxygen-level-dependent time series of rs-fMRI data to capture interactions between brain regions-of-interest (ROIs). Graph neural networks have been recently used to extract fMRI features from graph-structured FCNs, but cannot effectively characterize spatiotemporal dynamics of FCNs, e.g., the functional connectivity of brain ROIs is dynamically changing in a short period of time. Also, many studies usually focus on single-scale topology of FCN, thereby ignoring the potential complementary topological information of FCN at different spatial resolutions. To this end, in this paper, we propose a multi-scale dynamic graph learning (MDGL) framework to capture multi-scale spatiotemporal dynamic representations of rs-fMRI data for automated brain disorder diagnosis. The MDGL framework consists of three major components: 1) multi-scale dynamic FCN construction using multiple brain atlases to model multi-scale topological information, 2) multi-scale dynamic graph representation learning to capture spatiotemporal information conveyed in fMRI data, and 3) multi-scale feature fusion and classification. Experimental results on two datasets show that MDGL outperforms several state-of-the-art methods.
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