Generalization of endothelial modelling of TSPO PET imaging: Considerations on tracer affinities.
Gaia RizzoMattia VeroneseMatteo ToniettoBenedetta BodiniBruno StankoffCatriona WimberleySonia LavisseMichel BottlaenderPeter S BloomfieldOliver HowesPaolo Zanotti-FregonaraFederico E TurkheimerAlessandra BertoldoPublished in: Journal of cerebral blood flow and metabolism : official journal of the International Society of Cerebral Blood Flow and Metabolism (2017)
The 18 kDa translocator protein (TSPO) is a marker of microglia activation and the main target of positron emission tomography (PET) ligands for neuroinflammation. Previous works showed that accounting for TSPO endothelial binding improves PET quantification for [11C]PBR28, [18F]DPA714 and [11C]-R-PK11195. It is still unclear, however, whether the vascular signal is tracer-dependent. This work aims to explore the relationship between the TSPO vascular and tissue components for PET tracers with varying affinity, also assessing the impact of affinity towards the differentiability amongst kinetics and the ensuing ligand amenability to cluster analysis for the extraction of a reference region. First, we applied the compartmental model accounting for vascular binding to [11C]-R-PK11195 data from six healthy subjects. Then, we compared the [11C]-R-PK11195 vascular binding estimates with previously published values for [18F]DPA714 and [11C]PBR28. Finally, we determined the suitability for reference region extraction by calculating the angle between grey and white matter kinetics. Our results showed that endothelial binding is common to all TSPO tracers and proportional to their affinity. By consequence, grey and white matter kinetics were most similar for the radioligand with the highest affinity (i.e. [11C]PBR28), hence poorly suited for the extraction of a reference region using supervised clustering.
Keyphrases
- pet imaging
- positron emission tomography
- white matter
- computed tomography
- multiple sclerosis
- endothelial cells
- pet ct
- capillary electrophoresis
- machine learning
- systematic review
- traumatic brain injury
- big data
- spinal cord injury
- mass spectrometry
- artificial intelligence
- blood brain barrier
- amino acid
- neuropathic pain
- spinal cord
- data analysis