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16 - 20 February 2025
San Diego, California, US
Conference 13412 > Paper 13412-52
Paper 13412-52

Ultrasound image generation using latent diffusion models

19 February 2025 • 5:30 PM - 7:00 PM PST | Golden State Ballroom

Abstract

Diffusion models for image generation have been a subject of increasing interest due to their ability to generate diverse, high-quality images. Image generation has immense potential in medical imaging because open-source medical images are difficult to obtain compared to natural images, especially for rare conditions. The generated images can be used later to train classification and segmentation models. In this paper, we propose simulating realistic ultrasound (US) images by successive fine-tuning of large diffusion models on different publicly available databases. To do so, we fine-tuned Stable Diffusion, a state-of-the-art latent diffusion model, on BUSI (Breast US Images) an ultrasound breast image dataset. We successfully generated high-quality US images of the breast using simple prompts that specify the organ and pathology, which appeared realistic to three experienced US scientists and a US radiologist. Additionally, we provided user control by conditioning the model with segmentations through ControlNet. We will release the source code at http://code.sonography.ai/ to allow fast US image generation to the scientific community.

Presenter

Benoit Freiche
Concordia Univ. (Canada)
Application tracks: AI/ML
Presenter/Author
Benoit Freiche
Concordia Univ. (Canada)
Author
Concordia Univ. (Canada)
Author
Concordia Univ. (Canada)
Author
Concordia Univ. (Canada)
Author
CREATIS (France), Institut National de la Santé et de la Recherche Médicale (France)
Author
Adrian Basarab
CREATIS (France), Univ. Claude Bernard Lyon 1 (France)
Author
Mathieu Boily
McGill Univ. (Canada)
Author
Concordia Univ. (Canada)