Continuous and complete liver vessel segmentation with graph-attention guided diffusion
- MedIm

Improving connectivity and completeness are the most challenging aspects of liver vessel segmentation, especially for small vessels. These challenges require both learning the continuous vessel geometry and focusing on small vessel detection. However, current methods do not explicitly address these two aspects and cannot generalize well when constrained by inconsistent annotations. Here, we take advantage of the generalization of the diffusion model and explicitly integrate connectivity and completeness in our diffusion-based segmentation model. Specifically, we use a graph-attention module that adds knowledge about vessel geometry. Additionally, we perform the graph-attention at multiple-scales, thus focusing on small liver vessels. Our method outperforms five state-of-the-art medical segmentation methods on two public datasets: 3D-ircadb-01 and LiVS.
View on arXiv@article{zhang2025_2411.00617, title={ Continuous and complete liver vessel segmentation with graph-attention guided diffusion }, author={ Xiaotong Zhang and Alexander Broersen and Gonnie CM van Erp and Silvia L. Pintea and Jouke Dijkstra }, journal={arXiv preprint arXiv:2411.00617}, year={ 2025 } }