Future cardiovascular events prediction from invasive coronary angiography: A graph representation learning perspective
Xiaowu Sun,
Theofilos Belmpas,
Ortal Senouf
et al.
Abstract:Improving risk stratification for coronary artery disease, the leading cause of death worldwide, continues to present a daily challenge in clinical practice, highlighting the urgent need for innovative approaches to early prediction of future cardiovascular events. In this work, we propose AngioGraphCAD, a deep learning based framework that employs graph neural networks to leverage geometry features and a masked attention to fuse geometry features from multiple coronary stenoses for future events prediction at… Show more
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