Diffusion Model in Latent Space for Medical Image Segmentation Task
By: Huynh Trinh Ngoc , Toan Nguyen Hai , Ba Luong Son and more
Potential Business Impact:
Helps doctors see uncertain details in medical scans.
Medical image segmentation is crucial for clinical diagnosis and treatment planning. Traditional methods typically produce a single segmentation mask, failing to capture inherent uncertainty. Recent generative models enable the creation of multiple plausible masks per image, mimicking the collaborative interpretation of several clinicians. However, these approaches remain computationally heavy. We propose MedSegLatDiff, a diffusion based framework that combines a variational autoencoder (VAE) with a latent diffusion model for efficient medical image segmentation. The VAE compresses the input into a low dimensional latent space, reducing noise and accelerating training, while the diffusion process operates directly in this compact representation. We further replace the conventional MSE loss with weighted cross entropy in the VAE mask reconstruction path to better preserve tiny structures such as small nodules. MedSegLatDiff is evaluated on ISIC-2018 (skin lesions), CVC-Clinic (polyps), and LIDC-IDRI (lung nodules). It achieves state of the art or highly competitive Dice and IoU scores while simultaneously generating diverse segmentation hypotheses and confidence maps. This provides enhanced interpretability and reliability compared to deterministic baselines, making the model particularly suitable for clinical deployment.
Similar Papers
Diffusion-Based Data Augmentation for Medical Image Segmentation
CV and Pattern Recognition
Creates fake medical images to train doctors better.
LatentFM: A Latent Flow Matching Approach for Generative Medical Image Segmentation
CV and Pattern Recognition
Creates better medical scans with built-in confidence.
Latent Diffusion Model without Variational Autoencoder
CV and Pattern Recognition
Makes AI create pictures faster and better.