Improving image reconstruction to quantify dynamic whole-body PET/CT: Q.Clear versus OSEM

Sam Springer*, Jeremy Basset-Sagarminaga, Tineke van de Weijer, Vera B Schrauwen-Hinderling, Walter H Backes, Roel Wierts

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

BACKGROUND: The introduction of PET systems featuring increased count rate sensitivity has resulted in the development of dynamic whole-body PET acquisition protocols to assess F-FDG uptake rate ( ) using F-FDG PET/CT. However, in short-axis field-of-view (SAFOV) PET/CT systems, multiple bed positions are required per time frame to achieve whole-body coverage. This results in high noise levels, requiring higher F-FDG activity administration and, consequently, increased patient radiation dose. Bayesian penalized-likelihood PET reconstruction (e.g. Q.Clear, GE Healthcare) has been shown to effectively suppress image noise compared to standard reconstruction techniques. This study investigated the impact of Bayesian penalized-likelihood reconstruction on dynamic whole-body F-FDG PET quantification. METHODS: Dynamic whole-body F-FDG PET/CT data (SAFOV PET Discovery MI 5R, GE Healthcare) of healthy volunteers and one lung cancer patient, consisting of a ten-minute dynamic scan of the thoracic region followed by six whole-body passes, were reconstructed with Q.Clear and Ordered Subset Expectation Maximization (OSEM) according to EARL 2 standards. Image noise in the measured time-activity-curves (TAC) was determined for the myocardium, hamstring, liver, subcutaneous adipose tissue and lung lesion for both reconstruction methods. values were calculated using Patlak analysis. Finally, bootstrapping was used to investigate the effect of image noise levels on values (bias and precision) as a function of magnitude of and volume-of-interest (VOI) size for both computationally simulated TACs ( = 1.0-50.0·10 ·ml·cm ·min ) and the measured TACs. RESULTS: Compared to OSEM, Q.Clear showed 40-55% lower noise levels for all tissue types (p < 0.05). For the measured TACs no systematic bias in with either reconstruction method was observed. precision decreased with decreasing VOI size, with that of Q.Clear being superior compared to OSEM for small VOIs of 0.56 cm in all tissues (p < 0.05), with the largest difference in relative precision for small values of . The simulated TACs corroborated these results, with Q.Clear providing the best precision for small values of and small VOIs in all tissues. CONCLUSION: Q.Clear reconstruction of dynamic whole-body PET/CT data yields more precise values, especially for small values of and smaller VOIs, compared to standard OSEM. This precision improvement shows Q.Clear's potential to better detect and characterize small lesion metabolic activity in oncology and allows for lower administered activity dosage.
Original languageEnglish
Article number27
Number of pages20
JournalEJNMMI Physics
Volume12
Issue number1
DOIs
Publication statusPublished - 27 Mar 2025

Keywords

  • 18F-FDG
  • Bayesian
  • Dynamic
  • PET/CT
  • Reconstruction
  • Whole-body

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