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Optimizing the frame duration for data‐driven rigid motion estimation in brain PET imaging
Author(s) -
SpanglerBickell Matthew G.,
Hurley Samuel A.,
Deller Timothy W.,
Jansen Floris,
Bettinardi Valentino,
Carlson Mackenzie,
Zeineh Michael,
Zaharchuk Greg,
McMillan Alan B.
Publication year - 2021
Publication title -
medical physics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.473
H-Index - 180
eISSN - 2473-4209
pISSN - 0094-2405
DOI - 10.1002/mp.14889
Subject(s) - computer vision , smoothing , artificial intelligence , computer science , motion estimation , inter frame , pixel , iterative reconstruction , image resolution , image registration , filter (signal processing) , computation , frame (networking) , metric (unit) , medical imaging , mathematics , algorithm , image (mathematics) , reference frame , telecommunications , operations management , economics
Purpose Data‐driven rigid motion estimation for PET brain imaging is usually performed using data frames sampled at low temporal resolution to reduce the overall computation time and to provide adequate signal‐to‐noise ratio in the frames. In recent work it has been demonstrated that list‐mode reconstructions of ultrashort frames are sufficient for motion estimation and can be performed very quickly. In this work we take the approach of using image‐based registration of reconstructions of very short frames for data‐driven motion estimation, and optimize a number of reconstruction and registration parameters (frame duration, MLEM iterations, image pixel size, post‐smoothing filter, reference image creation, and registration metric) to ensure accurate registrations while maximizing temporal resolution and minimizing total computation time. Methods Data from 18 F‐fluorodeoxyglucose (FDG) and 18 F‐florbetaben (FBB) tracer studies with varying count rates are analyzed, for PET/MR and PET/CT scanners. For framed reconstructions using various parameter combinations interframe motion is simulated and image‐based registrations are performed to estimate that motion. Results For FDG and FBB tracers using 4 × 10 5 true and scattered coincidence events per frame ensures that 95% of the registrations will be accurate to within 1 mm of the ground truth. This corresponds to a frame duration of 0.5–1 sec for typical clinical PET activity levels. Using four MLEM iterations with no subsets, a transaxial pixel size of 4 mm, a post‐smoothing filter with 4–6 mm full width at half maximum, and averaging two or more frames to create the reference image provides an optimal set of parameters to produce accurate registrations while keeping the reconstruction and processing time low. Conclusions It is shown that very short frames (≤1 sec) can be used to provide accurate and quick data‐driven rigid motion estimates for use in an event‐by‐event motion corrected reconstruction.