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Simultaneous estimation of a model-derived input function for quantifying cerebral glucose metabolism with [ 18 F]FDG PET.

Lucas NarcisoGraham DellerPraveen DassanayakeLinshan LiuSamara PintoUdunna AnazodoAndrea SodduKeith St Lawrence
Published in: EJNMMI physics (2024)
A model-driven SIME method was proposed to derive high SNR input functions. Its potential was demonstrated by the good agreement between MDIFs and AIFs in animal experiments. In addition, CMRGlu estimates obtained in the human study agreed to literature values. The MDIF approach requires fewer fitting parameters than the original SIME method and has the advantage that it can model the shape of any input function. In turn, the high SNR of the MDIFs has the potential to facilitate the extraction of voxelwise parameters when combined with robust parameter estimation methods such as the variational Bayesian approach.
Keyphrases
  • endothelial cells
  • pet ct
  • systematic review
  • computed tomography
  • pet imaging
  • risk assessment
  • blood brain barrier
  • human health