Full-dose whole-body PET synthesis from low-dose PET using high-efficiency denoising diffusion probabilistic model: PET consistency model Journal Article


Authors: Pan, S.; Abouei, E.; Peng, J.; Qian, J.; Wynne, J. F.; Wang, T.; Chang, C. W.; Roper, J.; Nye, J. A.; Mao, H.; Yang, X.
Article Title: Full-dose whole-body PET synthesis from low-dose PET using high-efficiency denoising diffusion probabilistic model: PET consistency model
Abstract: PurposePositron Emission Tomography (PET) has been a commonly used imaging modality in broad clinical applications. One of the most important tradeoffs in PET imaging is between image quality and radiation dose: high image quality comes with high radiation exposure. Improving image quality is desirable for all clinical applications while minimizing radiation exposure is needed to reduce risk to patients.MethodsWe introduce PET Consistency Model (PET-CM), an efficient diffusion-based method for generating high-quality full-dose PET images from low-dose PET images. It employs a two-step process, adding Gaussian noise to full-dose PET images in the forward diffusion, and then denoising them using a PET Shifted-window Vision Transformer (PET-VIT) network in the reverse diffusion. The PET-VIT network learns a consistency function that enables direct denoising of Gaussian noise into clean full-dose PET images. PET-CM achieves state-of-the-art image quality while requiring significantly less computation time than other methods. Evaluation with normalized mean absolute error (NMAE), peak signal-to-noise ratio (PSNR), multi-scale structure similarity index (SSIM), normalized cross-correlation (NCC), and clinical evaluation including Human Ranking Score (HRS) and Standardized Uptake Value (SUV) Error analysis shows its superiority in synthesizing full-dose PET images from low-dose inputs.ResultsIn experiments comparing eighth-dose to full-dose images, PET-CM demonstrated impressive performance with NMAE of 1.278 +/- 0.122%, PSNR of 33.783 +/- 0.824 dB, SSIM of 0.964 +/- 0.009, NCC of 0.968 +/- 0.011, HRS of 4.543, and SUV Error of 0.255 +/- 0.318%, with an average generation time of 62 s per patient. This is a significant improvement compared to the state-of-the-art diffusion-based model with PET-CM reaching this result 12x faster. Similarly, in the quarter-dose to full-dose image experiments, PET-CM delivered competitive outcomes, achieving an NMAE of 0.973 +/- 0.066%, PSNR of 36.172 +/- 0.801 dB, SSIM of 0.984 +/- 0.004, NCC of 0.990 +/- 0.005, HRS of 4.428, and SUV Error of 0.151 +/- 0.192% using the same generation process, which underlining its high quantitative and clinical precision in both denoising scenario.ConclusionsWe propose PET-CM, the first efficient diffusion-model-based method, for estimating full-dose PET images from low-dose images. PET-CM provides comparable quality to the state-of-the-art diffusion model with higher efficiency. By utilizing this approach, it becomes possible to maintain high-quality PET images suitable for clinical use while mitigating the risks associated with radiation. The code is availble at .
Keywords: synthesis; image; denoising diffusion probabilistic model; swin transformer; consistency model; pet synthesis
Journal Title: Medical Physics
Volume: 51
Issue: 8
ISSN: 0094-2405
Publisher: American Association of Physicists in Medicine  
Date Published: 2024-08-01
Start Page: 5468
End Page: 5478
Language: English
ACCESSION: WOS:001198272900001
DOI: 10.1002/mp.17068
PROVIDER: wos
PMCID: PMC11321936
PUBMED: 38588512
Notes: Article -- MSK Cancer Center Support Grant (P30 CA008748) acknowledged in PubMed and PDF -- Source: Wos
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  1. Tonghe Wang
    51 Wang