A Graph Attention-Guided Diffusion Model for Liver Vessel Segmentation
Improving connectivity and completeness are the most challenging aspects of small liver vessel segmentation. It is difficult for existing methods to obtain segmented liver vessel trees simultaneously with continuous geometry and detail in small vessels. We proposed a diffusion model-based method wit...
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Zusammenfassung: | Improving connectivity and completeness are the most challenging aspects of
small liver vessel segmentation. It is difficult for existing methods to obtain
segmented liver vessel trees simultaneously with continuous geometry and detail
in small vessels. We proposed a diffusion model-based method with a multi-scale
graph attention guidance to break through the bottleneck to segment the liver
vessels. Experiments show that the proposed method outperforms the other
state-of-the-art methods used in this study on two public datasets of
3D-ircadb-01 and LiVS. Dice coefficient and Sensitivity are improved by at
least 11.67% and 24.21% on 3D-ircadb-01 dataset, and are improved by at least
3.21% and 9.11% on LiVS dataset. Connectivity is also quantitatively evaluated
in this study and our method performs best. The proposed method is reliable for
small liver vessel segmentation. |
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DOI: | 10.48550/arxiv.2411.00617 |