2024
DOI: 10.1186/s40644-023-00649-5
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The role of dynamic, static, and delayed total-body PET imaging in the detection and differential diagnosis of oncological lesions

Yaping Wu,
Fangfang Fu,
Nan Meng
et al.

Abstract: Objectives Commercialized total-body PET scanners can provide high-quality images due to its ultra-high sensitivity. We compared the dynamic, regular static, and delayed 18F-fluorodeoxyglucose (FDG) scans to detect lesions in oncologic patients on a total-body PET/CT scanner. Materials & methods In all, 45 patients were scanned continuously for the first 60 min, followed by a delayed acquisition. FDG metabolic rate was calculated from dynamic d… Show more

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Cited by 3 publications
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“…Their results indicated higher lung glucose metabolism and altered glucose delivery in the bone marrow of recovering COVID-19 patients, suggesting ongoing inflammation in early recovery stages. Wu et al [65] compared dynamic and delayed imaging protocols to static images on a uEXPLORER scanner for 45 oncologic patients. 18 F-FDG metabolic rate images showed superior lesion detection with a higher contrastto-noise ratio and tumor-to-background ratio than static images.…”
Section: Compartmental Modelingmentioning
confidence: 99%
“…Their results indicated higher lung glucose metabolism and altered glucose delivery in the bone marrow of recovering COVID-19 patients, suggesting ongoing inflammation in early recovery stages. Wu et al [65] compared dynamic and delayed imaging protocols to static images on a uEXPLORER scanner for 45 oncologic patients. 18 F-FDG metabolic rate images showed superior lesion detection with a higher contrastto-noise ratio and tumor-to-background ratio than static images.…”
Section: Compartmental Modelingmentioning
confidence: 99%