Topology-Aware Loss for Aorta and Great Vessel Segmentation in Computed Tomography Images
Seher Ozcelik, Sinan Unver, Ilke Ali Gurses, Rustu Turkay, and Cigdem Gunduz-Demir

TL;DR
This paper introduces a topology-aware loss function based on persistent homology and Vietoris-Rips filtration to improve the segmentation of aorta and great vessels in CT images by capturing shape and geometric invariants.
Contribution
It proposes a novel topology-aware loss using Vietoris-Rips filtration and Wasserstein distance, enhancing segmentation performance by modeling shape and geometry.
Findings
Improved segmentation accuracy over baseline methods.
Effective modeling of shape and geometric invariants.
Validated on 4327 CT images from 24 subjects.
Abstract
Segmentation networks are not explicitly imposed to learn global invariants of an image, such as the shape of an object and the geometry between multiple objects, when they are trained with a standard loss function. On the other hand, incorporating such invariants into network training may help improve performance for various segmentation tasks when they are the intrinsic characteristics of the objects to be segmented. One example is segmentation of aorta and great vessels in computed tomography (CT) images where vessels are found in a particular geometry in the body due to the human anatomy and they mostly seem as round objects on a 2D CT image. This paper addresses this issue by introducing a new topology-aware loss function that penalizes topology dissimilarities between the ground truth and prediction through persistent homology. Different from the previously suggested segmentation…
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