3.5D dynamic PET image reconstruction incorporating kinetics-based clusters.

Title3.5D dynamic PET image reconstruction incorporating kinetics-based clusters.
Publication TypeJournal Article
Year of Publication2012
AuthorsLu L, Karakatsanis NA, Tang J, Chen W, Rahmim A
JournalPhys Med Biol
Volume57
Issue15
Pagination5035-55
Date Published2012 Aug 07
ISSN1361-6560
KeywordsHumans, Imaging, Three-Dimensional, Kinetics, Models, Biological, Positron-Emission Tomography
Abstract

Standard 3D dynamic positron emission tomographic (PET) imaging consists of independent image reconstructions of individual frames followed by application of appropriate kinetic model to the time activity curves at the voxel or region-of-interest (ROI). The emerging field of 4D PET reconstruction, by contrast, seeks to move beyond this scheme and incorporate information from multiple frames within the image reconstruction task. Here we propose a novel reconstruction framework aiming to enhance quantitative accuracy of parametric images via introduction of priors based on voxel kinetics, as generated via clustering of preliminary reconstructed dynamic images to define clustered neighborhoods of voxels with similar kinetics. This is then followed by straightforward maximum a posteriori (MAP) 3D PET reconstruction as applied to individual frames; and as such the method is labeled '3.5D' image reconstruction. The use of cluster-based priors has the advantage of further enhancing quantitative performance in dynamic PET imaging, because: (a) there are typically more voxels in clusters than in conventional local neighborhoods, and (b) neighboring voxels with distinct kinetics are less likely to be clustered together. Using realistic simulated (11)C-raclopride dynamic PET data, the quantitative performance of the proposed method was investigated. Parametric distribution-volume (DV) and DV ratio (DVR) images were estimated from dynamic image reconstructions using (a) maximum-likelihood expectation maximization (MLEM), and MAP reconstructions using (b) the quadratic prior (QP-MAP), (c) the Green prior (GP-MAP) and (d, e) two proposed cluster-based priors (CP-U-MAP and CP-W-MAP), followed by graphical modeling, and were qualitatively and quantitatively compared for 11 ROIs. Overall, the proposed dynamic PET reconstruction methodology resulted in substantial visual as well as quantitative accuracy improvements (in terms of noise versus bias performance) for parametric DV and DVR images. The method was also tested on a 90 min (11)C-raclopride patient study performed on the high-resolution research tomography. The proposed method was shown to outperform the conventional method in visual as well as quantitative accuracy improvements (in terms of noise versus regional DVR value performance).

DOI10.1088/0031-9155/57/15/5035
Alternate JournalPhys Med Biol
PubMed ID22805318
PubMed Central IDPMC3445711
Grant ListMH078175 / MH / NIMH NIH HHS / United States
R01 MH078175 / MH / NIMH NIH HHS / United States
Z01 DA000412 / / Intramural NIH HHS / United States
AA12839 / AA / NIAAA NIH HHS / United States
S10 RR023623 / RR / NCRR NIH HHS / United States
R01 AA012839 / AA / NIAAA NIH HHS / United States
K24 DA000412 / DA / NIDA NIH HHS / United States
1S10RR023623 / RR / NCRR NIH HHS / United States

Weill Cornell Medicine
Department of Radiology
525 East 68th Street New York, NY 10065