4.7 Article

Dynamic weighted hypergraph convolutional network for brain functional connectome analysis

期刊

MEDICAL IMAGE ANALYSIS
卷 87, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.media.2023.102828

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Functional connectome; Weighted hypergraph; Dynamic hypergraph neural network; Manifold regularization

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A dynamic weighted hypergraph convolutional network (dwHGCN) framework is proposed in this study to learn features from dynamic hypergraphs. The model improves the learning capability of brain functional connectome by assigning larger weights to hyperedges with higher discriminative power and enhances the interpretability of the model by identifying highly active interactions among ROIs shared by a common hyperedge. Experimental results demonstrate the superiority of this model in classification tasks using functional magnetic resonance imaging (fMRI) data.
The hypergraph structure has been utilized to characterize the brain functional connectome (FC) by capturing the high order relationships among multiple brain regions of interest (ROIs) compared with a simple graph. Accordingly, hypergraph neural network (HGNN) models have emerged and provided efficient tools for hypergraph embedding learning. However, most existing HGNN models can only be applied to pre-constructed hypergraphs with a static structure during model training, which might not be a sufficient representation of the complex brain networks. In this study, we propose a dynamic weighted hypergraph convolutional network (dwHGCN) framework to consider a dynamic hypergraph with learnable hyperedge weights. Specifically, we generate hyperedges based on sparse representation and calculate the hyper similarity as node features. The hypergraph and node features are fed into a neural network model, where the hyperedge weights are updated adaptively during training. The dwHGCN facilitates the learning of brain FC features by assigning larger weights to hyperedges with higher discriminative power. The weighting strategy also improves the interpretability of the model by identifying the highly active interactions among ROIs shared by a common hyperedge. We validate the performance of the proposed model on two classification tasks with three paradigms functional magnetic resonance imaging (fMRI) data from Philadelphia Neurodevelopmental Cohort. Experimental results demonstrate the superiority of our proposed method over existing hypergraph neural networks. We believe our model can be applied to other applications in neuroimaging for its strength in representation learning and interpretation.

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