A Recycling Training Strategy for Medical Image Segmentation with Diffusion Denoising Models
Yunguan Fu, Yiwen Li, Shaheer U Saeed, Matthew J Clarkson, Yipeng Hu

TL;DR
This paper introduces a novel recycling training strategy for diffusion models in medical image segmentation, which improves performance and stability across various datasets by aligning training with inference.
Contribution
The study proposes a recycling training method that replaces ground truth masks with predicted masks during training, enhancing diffusion model performance in medical image segmentation.
Findings
Outperforms standard diffusion training and existing recycling strategies.
Consistently improves or maintains performance during inference.
Ensembling diffusion and non-diffusion models yields significant accuracy gains.
Abstract
Denoising diffusion models have found applications in image segmentation by generating segmented masks conditioned on images. Existing studies predominantly focus on adjusting model architecture or improving inference, such as test-time sampling strategies. In this work, we focus on improving the training strategy and propose a novel recycling method. During each training step, a segmentation mask is first predicted given an image and a random noise. This predicted mask, which replaces the conventional ground truth mask, is used for denoising task during training. This approach can be interpreted as aligning the training strategy with inference by eliminating the dependence on ground truth masks for generating noisy samples. Our proposed method significantly outperforms standard diffusion training, self-conditioning, and existing recycling strategies across multiple medical imaging data…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · MRI in cancer diagnosis · Medical Image Segmentation Techniques
MethodsFocus · Diffusion
