| Literature DB >> 29388075 |
Rong Guo1,2,3, Yoann Petibon4,5, Yixin Ma1,2,6, Georges El Fakhri4,5, Kui Ying1,2, Jinsong Ouyang7,8.
Abstract
BACKGROUND: Both cardiac and respiratory motions bias the kinetic parameters measured by dynamic PET. The aim of this study was to perform a realistic positron emission tomography-magnetic resonance (PET-MR) simulation study using 4D XCAT to evaluate the impact of MR-based motion correction on the estimation of PET myocardial kinetic parameters using PET-MR. Dynamic activity distributions were obtained based on a one-tissue compartment model with realistic kinetic parameters and an arterial input function. Realistic proton density/T1/T2 values were also defined for the MRI simulation. Two types of motion patterns, cardiac motion only (CM) and both cardiac and respiratory motions (CRM), were generated. PET sinograms were obtained by the projection of the activity distributions. PET image for each time frame was obtained using static (ST), gated (GA), non-motion-corrected (NMC), and motion-corrected (MC) methods. Voxel-wise unweighted least squares fitting of the dynamic PET data was then performed to obtain K1 values for each study. For each study, the mean and standard deviation of K1 values were computed for four regions of interest in the myocardium across 25 noise realizations.Entities:
Keywords: Cardiac PET parametric imaging; MR-based PET motion correction; Myocardial perfusion; PET-MR
Year: 2018 PMID: 29388075 PMCID: PMC5792384 DOI: 10.1186/s40658-017-0200-9
Source DB: PubMed Journal: EJNMMI Phys ISSN: 2197-7364
Fig. 1Flowchart of PET-MR data simulation and processing
Fig. 2The input function and TACs for the healthy myocardium and defect. The true function is compared with the image-derived input functions using GA, NMC, and MC methods
Fig. 3Reconstructed PET images and line profiles. a Reconstructed GA, NMC, and MC PET images for CM and CRM as well as reconstructed ST PET image. All the images were obtained using the data acquired from four to ten minutes after the injection. The GA, NMC, and MC images are for one noise realization. The arrow on the ST image points to the defect. b GA, NMC, MC line profiles (for CRM) as well as ST line profile. The profiles were drawn along a line (shown on the image at the top-right corner) connecting the anterobasal and apical regions and going through the center of the defect
Fig. 4Coronal MR images for two different motion phases along with the estimated motion fields between the two motion phases
Fig. 5Motion phase-dependent PET attenuation maps. The attenuation map in the reference motion phase was transformed to end-inspiration/end-systole using the estimated motion fields. The resulting attenuation map is similar to the true attenuation map for end-inspiration/end-systole obtained directly from XCAT. a Reference motion phase (end-diastole/end-exhalation) b Transformed from the reference phase to end-inspiration/end-systole c End-inspiration/end-systole (directlyu form XCAT)
Fig. 6Estimated K1 maps and line profiles. a GA, NMC, and MC K1 maps for CM and CRM as well as ST K1 map. The GA, NMC, and MC K1 maps are for one noise realization. The arrow on the ST map points to the defect. b GA, NMC, MC line profiles (for CRM) as well as ST line profile. The profiles were drawn along a line (shown on the map at the top-right corner) connecting the anterobasal and apical regions and going through the center of the defect
Fig. 7Mean K1values estimated from 25 noise realizations. Each white arrow and a small circle were only used to indicate the approximate location of the ROI. Please see the text in the “Methods” section for the details on how the ROIs were defined
Fig. 8Standard deviation of K1 values estimated from 25 noise realizations. Each white arrow together with a small circle were only used to indicate the approximate location of the ROI. Please see the text in the “Methods” section for the details on how the ROIs were defined