Meta-information Guided Cross-domain Synergistic Diffusion Model for Low-dose PET Reconstruction
About
Low-dose PET imaging is crucial for reducing patient radiation exposure but faces challenges like noise interference, reduced contrast, and difficulty in preserving physiological details. Existing methods often neglect both projection-domain physics knowledge and patient-specific meta-information, which are critical for functional-semantic correlation mining. In this study, we introduce a meta-information guided cross-domain synergistic diffusion model (MiG-DM) that integrates comprehensive cross-modal priors to generate high-quality PET images. Specifically, a meta-information encoding module transforms clinical parameters into semantic prompts by considering patient characteristics, dose-related information, and semi-quantitative parameters, enabling cross-modal alignment between textual meta-information and image reconstruction. Additionally, the cross-domain architecture combines projection-domain and image-domain processing. In the projection domain, a specialized sinogram adapter captures global physical structures through convolution operations equivalent to global image-domain filtering. Experiments on the UDPET public dataset and clinical datasets with varying dose levels demonstrate that MiG-DM outperforms state-of-the-art methods in enhancing PET image quality and preserving physiological details.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Low-dose PET reconstruction | UDPET MICCAI 2024 (test) | PSNR46.46 | 24 | |
| PET Reconstruction | Clinical dataset | PSNR34.97 | 6 | |
| PET Reconstruction | Clinical dataset | ΔSUVmax1.4751 | 6 |