4.7 Article

Source-to-Target Automatic Rotating Estimation (STARE) - A publicly-available, blood-free quantification approach for PET tracers with irreversible kinetics: Theoretical framework and validation for [18F]FDG

Journal

NEUROIMAGE
Volume 249, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2022.118901

Keywords

Blood-free PET quantification; Irreversible radiotracers; Net influx rate; Kinetic modeling; Source-to-target modeling

Funding

  1. National Institute of Biomedical Imaging and Bioengineering [R01EB026481]

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A novel data-driven approach, STARE, is introduced for quantifying the net influx rate (Ki) of irreversible PET radiotracers using individual-level PET data without the need for blood data. Validation with human [F-18]FDG PET scans showed strong correlation with arterial blood-based Ki estimates and precise estimation. The method demonstrates feasibility for blood-free, data-driven quantification of Ki and shows robustness in simulations and potential applications with other radiotracers.
Introduction: Full quantification of positron emission tomography (PET) data requires an input function. This generally means arterial blood sampling, which is invasive, labor-intensive and burdensome. There is no current, standardized method to fully quantify PET radiotracers with irreversible kinetics in the absence of blood data. Here, we present Source-to-Target Automatic Rotating Estimation (STARE), a novel, data-driven approach to quantify the net influx rate (K-i) of irreversible PET radiotracers, that requires only individual-level PET data and no blood data. We validate STARE with human [F-18]FDG PET scans and assess its performance using simulations. Methods: STARE builds upon a source-to-target tissue model, where the tracer time activity curves (TACs) in multiple target regions are expressed at once as a function of a source region, based on the two-tissue irreversible compartment model, and separates target region K-i from source K-i by fitting the source-to-target model across all target regions simultaneously. To ensure identifiability, data-driven, subject-specific anchoring is used in the STARE minimization, which takes advantage of the PET signal in a vasculature cluster in the field of view (FOV) that is automatically extracted and partial volume-corrected. To avoid the need for any a priori determination of a single source region, each of the considered regions acts in turn as the source, and a final K-i is estimated in each region by averaging the estimates obtained in each source rotation. Results: In a large dataset of human [F-18]FDG scans (N = 69), STARE K-i estimates were correlated with corresponding arterial blood-based K-i estimates (r = 0.80), with an overall regression slope of 0.88, and were precisely estimated, as assessed by comparing STARE K-i estimates across several runs of the algorithm (coefficient of variation across runs=6.74 +/- 2.48%). In simulations, STARE K-i estimates were largely robust to factors that influence the individualized anchoring used within its algorithm. Conclusion: Through simulations and application to [F-18]FDG PET data, feasibility is demonstrated for STARE blood-free, data-driven quantification of K-i. Future work will include applying STARE to PET data obtained with a portable PET camera and to other irreversible radiotracers.

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