Geometric deep learning for local growth prediction on abdominal aortic aneurysm surfaces
Dieuwertje Alblas, Patryk Rygiel, Julian Suk, Kaj O. Kappe, Marieke Hofman, Christoph Brune, Kak Khee Yeung, Jelmer M. Wolterink

TL;DR
This paper introduces a geometric deep learning model that predicts abdominal aortic aneurysm growth directly on the vascular surface, potentially enabling personalized monitoring and improving clinical decision-making.
Contribution
It presents a novel SE(3)-symmetric transformer model that preserves the vascular surface's geometry for accurate AAA growth prediction from longitudinal CTA data.
Findings
Median diameter prediction error of 1.18 mm
High accuracy (0.93) in predicting need for surgical repair within two years
Model generalizes well to external validation data
Abstract
Abdominal aortic aneurysms (AAAs) are progressive focal dilatations of the abdominal aorta. AAAs may rupture, with a survival rate of only 20\%. Current clinical guidelines recommend elective surgical repair when the maximum AAA diameter exceeds 55 mm in men or 50 mm in women. Patients that do not meet these criteria are periodically monitored, with surveillance intervals based on the maximum AAA diameter. However, this diameter does not take into account the complex relation between the 3D AAA shape and its growth, making standardized intervals potentially unfit. Personalized AAA growth predictions could improve monitoring strategies. We propose to use an SE(3)-symmetric transformer model to predict AAA growth directly on the vascular model surface enriched with local, multi-physical features. In contrast to other works which have parameterized the AAA shape, this representation…
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Taxonomy
TopicsAortic aneurysm repair treatments · Connective tissue disorders research · Surgical Simulation and Training
MethodsSparse Evolutionary Training
