Purpose: The main objective was to characterize the tracer uptake kinetics of [F]fluoromethylcholine ([F]F-CHO) in high-grade gliomas (HGG) through a full PET kinetic modeling approach. Secondarily, we aimed to explore the relationship between the PET uptake measures and the HGG molecular features.
Materials And Methods: Twenty-four patients with a suspected diagnosis of HGG were prospectively included. They underwent a dynamic brain [F]F-CHO-PET/CT, from which a tumoral time-activity curve was extracted. The plasma input function was obtained through arterial blood sampling with metabolite correction. These data were fitted to 1- and 2-tissue-compartment models, the best of which was selected through the Akaike information criterion. We assessed the correlation between the kinetic parameters and the conventional static PET metrics (SUV, SUV and tumor-to-background ratio TBR). We explored the association between the [F]F-CHO-PET quantitative parameters and relevant molecular biomarkers in HGG.
Results: Tumoral time-activity curves in all patients showed a rapid rise of [F]F-CHO uptake followed by a plateau-like shape. Best fits were obtained with near-irreversible 2-tissue-compartment models. The perfusion-transport constant K and the net influx rate K showed strong correlation with SUV (r = 0.808-0.861), SUV (r = 0.794-0.851) and TBR (r = 0.643-0.784), p < 0.002. HGG was confirmed in 21 patients, of which those with methylation of the O-6-methylguanine-DNA methyltransferase (MGMT) gene promoter showed higher mean K (p = 0.020), K (p = 0.025) and TBR (p = 0.001) than the unmethylated ones.
Conclusion: [F]F-CHO uptake kinetics in HGG is best explained by a 2-tissue-compartment model. The conventional static [F]F-CHO-PET measures have been validated against the perfusion-transport constant (K) and the net influx rate (K) derived from kinetic modeling. A relationship between [F]F-CHO uptake rate and MGMT methylation is suggested but needs further confirmation.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11126967 | PMC |
http://dx.doi.org/10.1016/j.nicl.2024.103616 | DOI Listing |
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