Abstract The limited availability of 3D medical image datasets, due to privacy concerns and high collection or annotation costs, poses significant challenges in the field of medical imaging. There are few solutions for realistic 3D medical image synthesis due to difficulties in backbone design and fewer 3D training samples compared to 2D counterparts. In this paper, we propose GEM-3D , a novel generative approach to the synthesis of 3D medical images and the enhancement of existing datasets using conditional diffusion models. Our method begins with a 2D slice, noted as the informed slice to serve the patient prior, and propagates the generation process using a 3D segmentation mask. By decomposing the 3D medical images into editable masks and patient prior information, GEM-3D offers a flexible yet effective solution for generating versatile 3D images from existing datasets. Moreover, as the informed slice contains patient-wise information, GEM-3D can also facilitate counterfactual image synthesis and dataset-level de-enhancement with desired control. Experiments on brain MRI and abdomen CT images demonstrate that GEM-3D is capable of synthesizing high-quality 3D medical images with volumetric consistency, offering a straightforward solution for dataset enhancement during inference. The code is available at https://github.com/HKU-MedAI/GEM-3D .
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Zhu et al. (Thu,) studied this question.
synapsesocial.com/papers/69a286600a974eb0d3c013f3 — DOI: https://doi.org/10.1007/s11263-026-02789-0
Lingting Zhu
University of Hong Kong
Noel Codella
Microsoft (United States)
Dongdong Chen
Microsoft (United States)
International Journal of Computer Vision
University of Hong Kong
Microsoft (United States)
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