TL;DR
EvoGraphNet is a novel geometric deep learning framework that predicts the evolution of brain connectomes over time from a single baseline, enabling early diagnosis and personalized treatment planning.
Contribution
It introduces the first end-to-end gGAN-based architecture for time-dependent brain graph prediction from a single timepoint, with cascaded models and specialized loss functions.
Findings
Achieves lowest prediction error in brain graph evolution benchmarks.
Effectively predicts multiple future brain graphs from one baseline.
Demonstrates potential for early diagnosis and intervention in brain disorders.
Abstract
Learning how to predict the brain connectome (i.e. graph) development and aging is of paramount importance for charting the future of within-disorder and cross-disorder landscape of brain dysconnectivity evolution. Indeed, predicting the longitudinal (i.e., time-dependent ) brain dysconnectivity as it emerges and evolves over time from a single timepoint can help design personalized treatments for disordered patients in a very early stage. Despite its significance, evolution models of the brain graph are largely overlooked in the literature. Here, we propose EvoGraphNet, the first end-to-end geometric deep learning-powered graph-generative adversarial network (gGAN) for predicting time-dependent brain graph evolution from a single timepoint. Our EvoGraphNet architecture cascades a set of time-dependent gGANs, where each gGAN communicates its predicted brain graphs at a particular…
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