Cardiac Segmentation on CT Images through Shape-Aware Contour Attentions
Sanguk Park, Minyoung Chung

TL;DR
This paper introduces a shape-aware contour attention model for cardiac CT segmentation, improving boundary focus and accuracy by leveraging distance regression, outperforming existing methods with a 4.97% Dice score increase.
Contribution
The novel shape-aware attention module utilizing distance regression enhances boundary detection in cardiac segmentation, surpassing traditional contour-based methods.
Findings
Improved Dice similarity coefficient by 4.97%.
Enhanced boundary focus reduces false positives.
Outperforms state-of-the-art networks on the dataset.
Abstract
Cardiac segmentation of atriums, ventricles, and myocardium in computed tomography (CT) images is an important first-line task for presymptomatic cardiovascular disease diagnosis. In several recent studies, deep learning models have shown significant breakthroughs in medical image segmentation tasks. Unlike other organs such as the lungs and liver, the cardiac organ consists of multiple substructures, i.e., ventricles, atriums, aortas, arteries, veins, and myocardium. These cardiac substructures are proximate to each other and have indiscernible boundaries (i.e., homogeneous intensity values), making it difficult for the segmentation network focus on the boundaries between the substructures. In this paper, to improve the segmentation accuracy between proximate organs, we introduce a novel model to exploit shape and boundary-aware features. We primarily propose a shape-aware attention…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Advanced X-ray and CT Imaging · Advanced Neural Network Applications
