TL;DR
This paper introduces MultiGraphGAN, a novel graph generative model that predicts multiple brain graphs from a single graph while preserving both global and local topological features, advancing neuroimaging analysis.
Contribution
The paper presents a scalable GAN architecture for joint prediction of multiple brain graphs from one source, incorporating topological constraints at node and global levels.
Findings
Outperforms existing models in multi-graph prediction accuracy
Effectively preserves local and global topological features
Demonstrates potential for improved neurodiagnostic tools
Abstract
Several works based on Generative Adversarial Networks (GAN) have been recently proposed to predict a set of medical images from a single modality (e.g, FLAIR MRI from T1 MRI). However, such frameworks are primarily designed to operate on images, limiting their generalizability to non-Euclidean geometric data such as brain graphs. While a growing number of connectomic studies has demonstrated the promise of including brain graphs for diagnosing neurological disorders, no geometric deep learning work was designed for multiple target brain graphs prediction from a source brain graph. Despite the momentum the field of graph generation has gained in the last two years, existing works have two critical drawbacks. First, the bulk of such works aims to learn one model for each target domain to generate from a source domain. Thus, they have a limited scalability in jointly predicting multiple…
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