Introducing Shape Prior Module in Diffusion Model for Medical Image Segmentation
Zhiqing Zhang, Guojia Fan, Tianyong Liu, Nan Li, Yuyang Liu, Ziyu Liu,, Canwei Dong, Shoujun Zhou

TL;DR
This paper introduces VerseDiff-UNet, a diffusion model-based framework with a shape prior module for improved spine medical image segmentation, achieving higher accuracy and better anatomical variation preservation.
Contribution
It presents a novel integration of diffusion models with a shape prior module into a U-Net architecture for enhanced medical image segmentation.
Findings
Outperforms state-of-the-art methods in accuracy
Effectively captures anatomical structural information
Preserves natural anatomical variations
Abstract
Medical image segmentation is critical for diagnosing and treating spinal disorders. However, the presence of high noise, ambiguity, and uncertainty makes this task highly challenging. Factors such as unclear anatomical boundaries, inter-class similarities, and irrational annotations contribute to this challenge. Achieving both accurate and diverse segmentation templates is essential to support radiologists in clinical practice. In recent years, denoising diffusion probabilistic modeling (DDPM) has emerged as a prominent research topic in computer vision. It has demonstrated effectiveness in various vision tasks, including image deblurring, super-resolution, anomaly detection, and even semantic representation generation at the pixel level. Despite the robustness of existing diffusion models in visual generation tasks, they still struggle with discrete masks and their various effects. To…
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Taxonomy
TopicsMedical Imaging and Analysis · Radiomics and Machine Learning in Medical Imaging · Medical Image Segmentation Techniques
MethodsDiffusion
