English

MedDiff-FM: A Diffusion-based Foundation Model for Versatile Medical Image Applications

Computer Vision and Pattern Recognition 2025-12-08 v3

Abstract

Diffusion models have achieved significant success in both natural image and medical image domains, encompassing a wide range of applications. Previous investigations in medical images have often been constrained to specific anatomical regions, particular applications, and limited datasets, resulting in isolated diffusion models. This paper introduces a diffusion-based foundation model to address a diverse range of medical image tasks, namely MedDiff-FM. MedDiff-FM leverages 3D CT images from multiple publicly available datasets, covering anatomical regions from head to abdomen, to pre-train a diffusion foundation model, and explores the capabilities of the diffusion foundation model across a variety of application scenarios. The diffusion foundation model handles multi-level integrated image processing both at the image-level and patch-level, utilizes position embedding to establish multi-level spatial relationships, and leverages region classes and anatomical structures to capture certain anatomical regions. MedDiff-FM manages several downstream tasks seamlessly, including image denoising, anomaly detection, and image synthesis. MedDiff-FM is also capable of performing super-resolution, lesion generation, and lesion inpainting by rapidly fine-tuning the diffusion foundation model using ControlNet with task-specific conditions. The experimental results demonstrate the effectiveness of MedDiff-FM in addressing diverse downstream medical image tasks.

Keywords

Cite

@article{arxiv.2410.15432,
  title  = {MedDiff-FM: A Diffusion-based Foundation Model for Versatile Medical Image Applications},
  author = {Yongrui Yu and Yannian Gu and Shaoting Zhang and Xiaofan Zhang},
  journal= {arXiv preprint arXiv:2410.15432},
  year   = {2025}
}
R2 v1 2026-06-28T19:28:47.289Z