TY - JOUR
T1 - World of Forms
T2 - Deformable geometric templates for one-shot surface meshing in coronary CT angiography
AU - van Herten, Rudolf L. M.
AU - Lagogiannis, Ioannis
AU - Wolterink, Jelmer M.
AU - Bruns, Steffen
AU - Meulendijks, Eva R.
AU - Dey, Damini
AU - de Groot, Joris R.
AU - Henriques, José P.
AU - Planken, R. Nils
AU - Saitta, Simone
AU - Išgum, Ivana
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/7/1
Y1 - 2025/7/1
N2 - Deep learning-based medical image segmentation and surface mesh generation typically involve a sequential pipeline from image to segmentation to meshes, often requiring large training datasets while making limited use of prior geometric knowledge. This may lead to topological inconsistencies and suboptimal performance in low-data regimes. To address these challenges, we propose a data-efficient deep learning method for direct 3D anatomical object surface meshing using geometric priors. Our approach employs a multi-resolution graph neural network that operates on a prior geometric template which is deformed to fit object boundaries of interest. We show how different templates may be used for the different surface meshing targets, and introduce a novel masked autoencoder pretraining strategy for 3D spherical data. The proposed method outperforms nnUNet in a one-shot setting for segmentation of the pericardium, left ventricle (LV) cavity and the LV myocardium. Similarly, the method outperforms other lumen segmentation operating on multi-planar reformatted images. Results further indicate that mesh quality is on par with or improves upon marching cubes post-processing of voxel mask predictions, while remaining flexible in the choice of mesh triangulation prior, thus paving the way for more accurate and topologically consistent 3D medical object surface meshing.
AB - Deep learning-based medical image segmentation and surface mesh generation typically involve a sequential pipeline from image to segmentation to meshes, often requiring large training datasets while making limited use of prior geometric knowledge. This may lead to topological inconsistencies and suboptimal performance in low-data regimes. To address these challenges, we propose a data-efficient deep learning method for direct 3D anatomical object surface meshing using geometric priors. Our approach employs a multi-resolution graph neural network that operates on a prior geometric template which is deformed to fit object boundaries of interest. We show how different templates may be used for the different surface meshing targets, and introduce a novel masked autoencoder pretraining strategy for 3D spherical data. The proposed method outperforms nnUNet in a one-shot setting for segmentation of the pericardium, left ventricle (LV) cavity and the LV myocardium. Similarly, the method outperforms other lumen segmentation operating on multi-planar reformatted images. Results further indicate that mesh quality is on par with or improves upon marching cubes post-processing of voxel mask predictions, while remaining flexible in the choice of mesh triangulation prior, thus paving the way for more accurate and topologically consistent 3D medical object surface meshing.
KW - Cardiac CT angiography
KW - Geometric deep learning
KW - Graph convolutional neural network
KW - Masked autoencoder
KW - Ray casting
UR - https://www.scopus.com/pages/publications/105003913974
U2 - 10.1016/j.media.2025.103582
DO - 10.1016/j.media.2025.103582
M3 - Article
C2 - 40318517
SN - 1361-8415
VL - 103
JO - Medical image analysis
JF - Medical image analysis
M1 - 103582
ER -