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Autori principali: Ibarra, Sebastian, del Riego, Javier, Catanese, Alessandro, Cuba, Julian, Cardona, Julian, Leon, Nataly, Infante, Jonathan, Lekadir, Karim, Diaz, Oliver, Osuala, Richard
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2508.13776
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author Ibarra, Sebastian
del Riego, Javier
Catanese, Alessandro
Cuba, Julian
Cardona, Julian
Leon, Nataly
Infante, Jonathan
Lekadir, Karim
Diaz, Oliver
Osuala, Richard
author_facet Ibarra, Sebastian
del Riego, Javier
Catanese, Alessandro
Cuba, Julian
Cardona, Julian
Leon, Nataly
Infante, Jonathan
Lekadir, Karim
Diaz, Oliver
Osuala, Richard
contents Dynamic contrast-enhanced (DCE) MRI is essential for breast cancer diagnosis and treatment. However, its reliance on contrast agents introduces safety concerns, contraindications, increased cost, and workflow complexity. To this end, we present pre-contrast conditioned denoising diffusion probabilistic models to synthesize DCE-MRI, introducing, evaluating, and comparing a total of 22 generative model variants in both single-breast and full breast settings. Towards enhancing lesion fidelity, we introduce both tumor-aware loss functions and explicit tumor segmentation mask conditioning. Using a public multicenter dataset and comparing to respective pre-contrast baselines, we observe that subtraction image-based models consistently outperform post-contrast-based models across five complementary evaluation metrics. Apart from assessing the entire image, we also separately evaluate the region of interest, where both tumor-aware losses and segmentation mask inputs improve evaluation metrics. The latter notably enhance qualitative results capturing contrast uptake, albeit assuming access to tumor localization inputs that are not guaranteed to be available in screening settings. A reader study involving 2 radiologists and 4 MRI technologists confirms the high realism of the synthetic images, indicating an emerging clinical potential of generative contrast-enhancement. We share our codebase at https://github.com/sebastibar/conditional-diffusion-breast-MRI.
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publishDate 2025
record_format arxiv
spellingShingle Comparing Conditional Diffusion Models for Synthesizing Contrast-Enhanced Breast MRI from Pre-Contrast Images
Ibarra, Sebastian
del Riego, Javier
Catanese, Alessandro
Cuba, Julian
Cardona, Julian
Leon, Nataly
Infante, Jonathan
Lekadir, Karim
Diaz, Oliver
Osuala, Richard
Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Dynamic contrast-enhanced (DCE) MRI is essential for breast cancer diagnosis and treatment. However, its reliance on contrast agents introduces safety concerns, contraindications, increased cost, and workflow complexity. To this end, we present pre-contrast conditioned denoising diffusion probabilistic models to synthesize DCE-MRI, introducing, evaluating, and comparing a total of 22 generative model variants in both single-breast and full breast settings. Towards enhancing lesion fidelity, we introduce both tumor-aware loss functions and explicit tumor segmentation mask conditioning. Using a public multicenter dataset and comparing to respective pre-contrast baselines, we observe that subtraction image-based models consistently outperform post-contrast-based models across five complementary evaluation metrics. Apart from assessing the entire image, we also separately evaluate the region of interest, where both tumor-aware losses and segmentation mask inputs improve evaluation metrics. The latter notably enhance qualitative results capturing contrast uptake, albeit assuming access to tumor localization inputs that are not guaranteed to be available in screening settings. A reader study involving 2 radiologists and 4 MRI technologists confirms the high realism of the synthetic images, indicating an emerging clinical potential of generative contrast-enhancement. We share our codebase at https://github.com/sebastibar/conditional-diffusion-breast-MRI.
title Comparing Conditional Diffusion Models for Synthesizing Contrast-Enhanced Breast MRI from Pre-Contrast Images
topic Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.13776