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Deep progressive learning achieves whole-body low-dose 18F-FDG PET imaging

Taisong Wang, Wenli Qiao, Ying Wang, Jingyi Wang, Yang Lv, Yun Dong, Qian Zheng, Yan Xing, Jinhua Zhao

2022EJNMMI Physics24 citationsDOIOpen Access PDF

Abstract

OBJECTIVES: F-FDG PET imaging. METHODS: List-mode data from the retrospective study (n = 26) were rebinned into short-duration scans and reconstructed with DPR. The standard uptake value (SUV) and tumor-to-liver ratio (TLR) in lesions and coefficient of variation (COV) in the liver in the DPR images were compared to the reference (OSEM images with full-duration data). In the prospective study, another 41 patients were injected with 1/3 of the activity based on the retrospective results. The DPR images (DPR_1/3(p)) were generated and compared with the reference (OSEM images with extended acquisition time). The SUV and COV were evaluated in three selected organs: liver, blood pool and muscle. Quantitative analyses were performed with lesion SUV and TLR, furthermore on small lesions (≤ 10 mm in diameter). Additionally, a 5-point Likert scale visual analysis was performed on the following perspectives: contrast, noise and diagnostic confidence. RESULTS: In the retrospective study, the DPR with one-third duration can maintain the image quality as the reference. In the prospective study, good agreement among the SUVs was observed in all selected organs. The quantitative results showed that there was no significant difference in COV between the DPR_1/3(p) group and the reference, while the visual analysis showed no significant differences in image contrast, noise and diagnostic confidence. The lesion SUVs and TLRs in the DPR_1/3(p) group were significantly enhanced compared with the reference, even for small lesions. CONCLUSIONS: F-FDG by up to 2/3 in a real-world deployment while maintaining image quality.

Topics & Concepts

MedicineNuclear medicineRetrospective cohort studyLesionConfidence intervalProspective cohort studyStandardized uptake valueRadiologyImage noiseCoefficient of variationPositron emission tomographyPathologyInternal medicineArtificial intelligenceMathematicsComputer scienceImage (mathematics)StatisticsMedical Imaging Techniques and ApplicationsRadiomics and Machine Learning in Medical ImagingRadiopharmaceutical Chemistry and Applications
Deep progressive learning achieves whole-body low-dose 18F-FDG PET imaging | Litcius