Intelligent ultrafast total-body PET for sedation-free pediatric [18F]FDG imaging
Purpose This study aims to develop deep learning techniques on total-body PET to bolster the feasibility of sedation-free pediatric PET imaging. Methods A deformable 3D U-Net was developed based on 245 adult subjects with standard total-body PET imaging for the quality enhancement of simulated rapid...
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Veröffentlicht in: | European journal of nuclear medicine and molecular imaging 2024-07, Vol.51 (8), p.2353-2366 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Purpose
This study aims to develop deep learning techniques on total-body PET to bolster the feasibility of sedation-free pediatric PET imaging.
Methods
A deformable 3D U-Net was developed based on 245 adult subjects with standard total-body PET imaging for the quality enhancement of simulated rapid imaging. The developed method was first tested on 16 children receiving total-body [
18
F]FDG PET scans with standard 300-s acquisition time with sedation. Sixteen rapid scans (acquisition time about 3 s, 6 s, 15 s, 30 s, and 75 s) were retrospectively simulated by selecting the reconstruction time window. In the end, the developed methodology was prospectively tested on five children without sedation to prove the routine feasibility.
Results
The approach significantly improved the subjective image quality and lesion conspicuity in abdominal and pelvic regions of the generated 6-s data. In the first test set, the proposed method enhanced the objective image quality metrics of 6-s data, such as PSNR (from 29.13 to 37.09,
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ISSN: | 1619-7070 1619-7089 |
DOI: | 10.1007/s00259-024-06649-2 |