TL;DR
This paper introduces topoGAN, a novel graph GAN architecture that predicts multiple brain graphs from a single source graph, preserving both global and local topological features, and outperforms baseline methods.
Contribution
The paper presents a topology-aware graph GAN that jointly predicts multiple brain graphs from one source, incorporating local and global topological constraints, and uses clustering to mitigate mode collapse.
Findings
Outperforms baseline methods in brain multigraph prediction
Effectively preserves topological structures in generated graphs
Handles multiple target domains with a single model
Abstract
Brain graphs (i.e, connectomes) constructed from medical scans such as magnetic resonance imaging (MRI) have become increasingly important tools to characterize the abnormal changes in the human brain. Due to the high acquisition cost and processing time of multimodal MRI, existing deep learning frameworks based on Generative Adversarial Network (GAN) focused on predicting the missing multimodal medical images from a few existing modalities. While brain graphs help better understand how a particular disorder can change the connectional facets of the brain, synthesizing a target brain multigraph (i.e, multiple brain graphs) from a single source brain graph is strikingly lacking. Additionally, existing graph generation works mainly learn one model for each target domain which limits their scalability in jointly predicting multiple target domains. Besides, while they consider the global…
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