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Main Authors: Rickmann, Anne-Marie, Thorn, Stephanie L., Ahn, Shawn S., Lee, Supum, Uman, Selen, Lysyy, Taras, Burns, Rachel, Guerrera, Nicole, Spinale, Francis G., Burdick, Jason A., Sinusas, Albert J., Duncan, James S.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.09564
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author Rickmann, Anne-Marie
Thorn, Stephanie L.
Ahn, Shawn S.
Lee, Supum
Uman, Selen
Lysyy, Taras
Burns, Rachel
Guerrera, Nicole
Spinale, Francis G.
Burdick, Jason A.
Sinusas, Albert J.
Duncan, James S.
author_facet Rickmann, Anne-Marie
Thorn, Stephanie L.
Ahn, Shawn S.
Lee, Supum
Uman, Selen
Lysyy, Taras
Burns, Rachel
Guerrera, Nicole
Spinale, Francis G.
Burdick, Jason A.
Sinusas, Albert J.
Duncan, James S.
contents Cardiac image segmentation is an important step in many cardiac image analysis and modeling tasks such as motion tracking or simulations of cardiac mechanics. While deep learning has greatly advanced segmentation in clinical settings, there is limited work on pre-clinical imaging, notably in porcine models, which are often used due to their anatomical and physiological similarity to humans. However, differences between species create a domain shift that complicates direct model transfer from human to pig data. Recently, foundation models trained on large human datasets have shown promise for robust medical image segmentation; yet their applicability to porcine data remains largely unexplored. In this work, we investigate whether foundation models can generate sufficiently accurate pseudo-labels for pig cardiac CT and propose a simple self-training approach to iteratively refine these labels. Our method requires no manually annotated pig data, relying instead on iterative updates to improve segmentation quality. We demonstrate that this self-training process not only enhances segmentation accuracy but also smooths out temporal inconsistencies across consecutive frames. Although our results are encouraging, there remains room for improvement, for example by incorporating more sophisticated self-training strategies and by exploring additional foundation models and other cardiac imaging technologies.
format Preprint
id arxiv_https___arxiv_org_abs_2505_09564
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Using Foundation Models as Pseudo-Label Generators for Pre-Clinical 4D Cardiac CT Segmentation
Rickmann, Anne-Marie
Thorn, Stephanie L.
Ahn, Shawn S.
Lee, Supum
Uman, Selen
Lysyy, Taras
Burns, Rachel
Guerrera, Nicole
Spinale, Francis G.
Burdick, Jason A.
Sinusas, Albert J.
Duncan, James S.
Computer Vision and Pattern Recognition
Cardiac image segmentation is an important step in many cardiac image analysis and modeling tasks such as motion tracking or simulations of cardiac mechanics. While deep learning has greatly advanced segmentation in clinical settings, there is limited work on pre-clinical imaging, notably in porcine models, which are often used due to their anatomical and physiological similarity to humans. However, differences between species create a domain shift that complicates direct model transfer from human to pig data. Recently, foundation models trained on large human datasets have shown promise for robust medical image segmentation; yet their applicability to porcine data remains largely unexplored. In this work, we investigate whether foundation models can generate sufficiently accurate pseudo-labels for pig cardiac CT and propose a simple self-training approach to iteratively refine these labels. Our method requires no manually annotated pig data, relying instead on iterative updates to improve segmentation quality. We demonstrate that this self-training process not only enhances segmentation accuracy but also smooths out temporal inconsistencies across consecutive frames. Although our results are encouraging, there remains room for improvement, for example by incorporating more sophisticated self-training strategies and by exploring additional foundation models and other cardiac imaging technologies.
title Using Foundation Models as Pseudo-Label Generators for Pre-Clinical 4D Cardiac CT Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.09564