CT Synthesis with Conditional Diffusion Models for Abdominal Lymph Node Segmentation
Yongrui Yu, Hanyu Chen, Zitian Zhang, Qiong Xiao, Wenhui Lei, Linrui Dai, Yu Fu, Hui Tan, Guan Wang, Peng Gao, and Xiaofan Zhang

TL;DR
This paper introduces LN-DDPM, a conditional diffusion model that synthesizes realistic abdominal lymph node images to enhance segmentation accuracy in challenging medical imaging scenarios.
Contribution
The paper presents a novel conditional diffusion model for lymph node image synthesis, improving data diversity and segmentation performance in abdominal lymph node analysis.
Findings
LN-DDPM outperforms other generative methods in image synthesis.
Synthetic data improves lymph node segmentation accuracy.
The approach effectively captures lymph node characteristics.
Abstract
Despite the significant success achieved by deep learning methods in medical image segmentation, researchers still struggle in the computer-aided diagnosis of abdominal lymph nodes due to the complex abdominal environment, small and indistinguishable lesions, and limited annotated data. To address these problems, we present a pipeline that integrates the conditional diffusion model for lymph node generation and the nnU-Net model for lymph node segmentation to improve the segmentation performance of abdominal lymph nodes through synthesizing a diversity of realistic abdominal lymph node data. We propose LN-DDPM, a conditional denoising diffusion probabilistic model (DDPM) for lymph node (LN) generation. LN-DDPM utilizes lymph node masks and anatomical structure masks as model conditions. These conditions work in two conditioning mechanisms: global structure conditioning and local detail…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Imaging Techniques and Applications · AI in cancer detection
MethodsDiffusion
