Generalizable Pancreas Segmentation via a Dual Self-Supervised Learning Framework
Journal:
arXiv
Published Date:
May 12, 2025
Abstract
Recently, numerous pancreas segmentation methods have achieved promising
performance on local single-source datasets. However, these methods don't
adequately account for generalizability issues, and hence typically show
limited performance and low stability on test data from other sources.
Considering the limited availability of distinct data sources, we seek to
improve the generalization performance of a pancreas segmentation model trained
with a single-source dataset, i.e., the single source generalization task. In
particular, we propose a dual self-supervised learning model that incorporates
both global and local anatomical contexts. Our model aims to fully exploit the
anatomical features of the intra-pancreatic and extra-pancreatic regions, and
hence enhance the characterization of the high-uncertainty regions for more
robust generalization. Specifically, we first construct a global-feature
contrastive self-supervised learning module that is guided by the pancreatic
spatial structure. This module obtains complete and consistent pancreatic
features through promoting intra-class cohesion, and also extracts more
discriminative features for differentiating between pancreatic and
non-pancreatic tissues through maximizing inter-class separation. It mitigates
the influence of surrounding tissue on the segmentation outcomes in
high-uncertainty regions. Subsequently, a local-image restoration
self-supervised learning module is introduced to further enhance the
characterization of the high uncertainty regions. In this module, informative
anatomical contexts are actually learned to recover randomly corrupted
appearance patterns in those regions.