Do Segmentation Models Understand Vascular Structure? A Blob-Based XAI Framework
Journal:
arXiv
Published Date:
Apr 11, 2025
Abstract
Deep learning models have achieved impressive performance in medical image
segmentation, yet their black-box nature limits clinical adoption. In vascular
applications, trustworthy segmentation should rely on both local image cues and
global anatomical structures, such as vessel connectivity or branching.
However, the extent to which models leverage such global context remains
unclear. We present a novel explainability pipeline for 3D vessel segmentation,
combining gradient-based attribution with graph-guided point selection and a
blob-based analysis of Saliency maps. Using vascular graphs extracted from
ground truth, we define anatomically meaningful points of interest (POIs) and
assess the contribution of input voxels via Saliency maps. These are analyzed
at both global and local scales using a custom blob detector. Applied to IRCAD
and Bullitt datasets, our analysis shows that model decisions are dominated by
highly localized attribution blobs centered near POIs. Attribution features
show little correlation with vessel-level properties such as thickness,
tubularity, or connectivity -- suggesting limited use of global anatomical
reasoning. Our results underline the importance of structured explainability
tools and highlight the current limitations of segmentation models in capturing
global vascular context.