TriDo-Former: A Triple-Domain Transformer for Direct PET Reconstruction from Low-Dose Sinograms
Jiaqi Cui, Pinxian Zeng, Xinyi Zeng, Peng Wang, Xi Wu, Jiliu Zhou, Yan, Wang, and Dinggang Shen

TL;DR
TriDo-Former is a novel transformer-based model that unites sinogram, image, and frequency domains for direct PET reconstruction from low-dose sinograms, effectively enhancing image quality and preserving details.
Contribution
The paper introduces TriDo-Former, a triple-domain transformer architecture that improves PET image reconstruction by integrating sinogram denoising, global frequency adjustment, and long-range interaction modeling.
Findings
Outperforms state-of-the-art methods quantitatively.
Effectively denoises low-dose sinograms.
Restores high-frequency details in reconstructed images.
Abstract
To obtain high-quality positron emission tomography (PET) images while minimizing radiation exposure, various methods have been proposed for reconstructing standard-dose PET (SPET) images from low-dose PET (LPET) sinograms directly. However, current methods often neglect boundaries during sinogram-to-image reconstruction, resulting in high-frequency distortion in the frequency domain and diminished or fuzzy edges in the reconstructed images. Furthermore, the convolutional architectures, which are commonly used, lack the ability to model long-range non-local interactions, potentially leading to inaccurate representations of global structures. To alleviate these problems, we propose a transformer-based model that unites triple domains of sinogram, image, and frequency for direct PET reconstruction, namely TriDo-Former. Specifically, the TriDo-Former consists of two cascaded networks,…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Radiation Detection and Scintillator Technologies · Radiomics and Machine Learning in Medical Imaging
