2023

Diffusion Models For Medical Imaging

A MICCAI 2023 tutorial covering diffusion model theory, applications in medical imaging, and hands-on demos with MONAI Generative Models.

← Back to Tutorials

A MICCAI 2023 Tutorial.

MICCAI 2023 Animation based on [2]

News

Outline

There has been an explosion of developments in generative models in machine learning (including Variational Auto-Encoders or VAEs, Generative Adversarial Networks or GANs, Normalizing Flows or NFs) that enable us to generate high-quality, realistic synthetic data such as high-dimensional images, volumes, or tensors. Recently a (re)newed breed of generative models, Diffusion Models have shown impressive ability in generating high-quality imaging data. Applications of diffusion models in medical image analysis are already appearing in the context of image reconstruction, denoising, anomaly detection, segmentation, generation of data, and causality.

This tutorial presents an overview of generative modelling, focusing on diffusion models (theory and learning tricks). We will discuss applications in the medical imaging field and overview existing open-ended challenges. We will also offer a session with demo and code that build upon the recently released open-source library MONAI generative models.

diffusion tasks Figure from [1]

Tutorial Schedule

  1. Introduction [60 mins]
  1. Advanced Topics [60 min]
  1. Coffee break (30mins)

  2. Applications in medical imaging [60 mins]

  1. Round table [60 mins]

Learning Objectives

  1. Understand the differences between implicit vs explicit likelihood generative models
  2. Understand the intuition and theory behind diffusion models
  3. Appreciate and learn different applications of diffusion models in medical image analysis and imaging
  4. Appreciate current limitations of diffusion models
  5. Learn how to use MONAI Generative Models to train and use diffusion models

Organizing Team

Some Resources

  1. Kazerouni, Amirhossein, et al. “Diffusion models for medical image analysis: A comprehensive survey.” arXiv preprint arXiv:2211.07804 (2022).
  2. Pinaya, Walter HL, et al. “Brain imaging generation with latent diffusion models.” Deep Generative Models: Second MICCAI Workshop, DGM4MICCAI 2022 (2022).
  3. https://github.com/heejkoo/Awesome-Diffusion-Models is a great github repository with up to date information on published diffusion model papers.
Affiliations
The University of Edinburgh CHAI AI Hub Canon Medical Research PhenomUK