2021
DOI: 10.1002/mp.15059
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Dynamic cardiac PET motion correction using 3D normalized gradient fields in patients and phantom simulations

Abstract: This work expands on the implementation of three‐dimensional (3D) normalized gradient fields to correct for whole‐body motion and cardiac creep in [N‐13]‐ammonia patient studies and evaluates its accuracy using a dynamic phantom simulation model. Methods A full rigid‐body algorithm was developed using 3D normalized gradient fields including a multi‐resolution step and sampling off the voxel grid to reduce interpolation artifacts. Optimization was performed using a weighted similarity metric that accounts for o… Show more

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Cited by 3 publications
(1 citation statement)
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“…As previously described (Piccinelli et al 2020 ), our methodology to calculate flow along vessel centerlines relies on the fusion of dPET and anatomy. Importantly, the dPET sequence was first corrected for inter-frame motion (Nye et al 2021 ) and the resulting images were used for the remainder of the processing. The registration procedure consisted of the following steps (performed for rest and stress separately): (1) a summed PET image (PET sum ) was created from the dynamic frames of the second half of the acquisition interval; (2) the LVs segmented from the CCTA and PET sum were rigidly registered; and (3) mutual information-based techniques were used to align PET sum with the CCTA-derived biventricular mask using LV and RV structures from both modalities.…”
Section: Methodsmentioning
confidence: 99%
“…As previously described (Piccinelli et al 2020 ), our methodology to calculate flow along vessel centerlines relies on the fusion of dPET and anatomy. Importantly, the dPET sequence was first corrected for inter-frame motion (Nye et al 2021 ) and the resulting images were used for the remainder of the processing. The registration procedure consisted of the following steps (performed for rest and stress separately): (1) a summed PET image (PET sum ) was created from the dynamic frames of the second half of the acquisition interval; (2) the LVs segmented from the CCTA and PET sum were rigidly registered; and (3) mutual information-based techniques were used to align PET sum with the CCTA-derived biventricular mask using LV and RV structures from both modalities.…”
Section: Methodsmentioning
confidence: 99%