TRELLIS -enhanced surface features for comprehensive intracranial aneurysm analysis - 18/01/26
, Paul Garnier
, Jonathan Viquerat
, Elie Hachem 
Abstract |
Intracranial aneurysms pose a significant clinical risk yet are difficult to detect, delineate, and model due to limited annotated 3D data. We propose a cross-domain feature-transfer approach that leverages the latent geometric embeddings learned by TRELLIS, a generative model trained on large-scale non-medical 3D datasets, to augment neural networks for aneurysm analysis. By replacing conventional point normals or mesh descriptors with TRELLIS surface features, we systematically enhance three downstream tasks: (i) classifying aneurysms versus healthy vessels in the Intra3D dataset, (ii) segmenting aneurysm and vessel regions on 3D meshes, and (iii) predicting time-evolving blood-flow fields using a graph neural network on the AnXplore dataset. Our experiments show that the inclusion of these features yields strong gains in accuracy, F1-score, and segmentation quality over state-of-the-art baselines, and reduces simulation error by 15%. These results illustrate the broader potential of transferring 3D representations from general-purpose generative models to specialized medical tasks.
Le texte complet de cet article est disponible en PDF.Keywords : Intracranial aneurysm, Machine learning, Graph neural networks, TRELLIS
Plan
Vol 6 - N° 1
Article 100259- mars 2026 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.
