Positron emission tomography (PET) is undergoing a period of tremendous growth, and the continued development of new tracers and applications for oncology, cardiology, and neurology ensures that this modality will expand for many years to come. Technological advances are pushing PET toward fully-3D imaging with advanced statistical-based reconstruction algorithms. There is a significant need for improved iterative algorithms which are fast enough for routine use with fully-3D PET, and which take the guesswork out of choosing reconstruction parameters and regularization schemes. The objective of this project is to investigate new paradigms for statistical PET reconstruction which are specifically targeted and separately optimized for estimation and detection tasks. Two (2) complementary reconstruction frameworks are proposed:
(Aim 1) direct reconstruction from raw LOR histograms using comprehensive modeling of the system transfer matrix, which achieves true maximum-likelihood estimation with exact Poisson statistics to produce lower-noise, higher spatial resolution images;
and (Aim 2) statistically-regulated expectation-maximization (StatREM) algorithms, which adapt to the statistical quality of the dataset being reconstructed. The StatREM framework provides a means for selecting subsets and acceleration in a statistically-meaningful way, offering more robust acceleration than current algorithms. It also provides an iterative stopping criterion which may be optimized specifically for estimation and detection tasks. Moreover, StatREM provides spatially-adaptive regularizations which offer high resolution for high statistics regions, while at the same time regularizing low count background regions. We hypothesize that StatREM provides better lesion detection performance than current algorithms.
Aims 3 and 4 will evaluate in detail the quantitation and lesion detection performance, respectively, of the new algorithms using experimentally acquired data of a highly-reproducible whole-body phantom. Each algorithm will be optimized with respect to these tasks. Lesion detectability will be evaluated using a detailed human observer study with a multi-slice display and localization receiver operating characteristic (LROC) analysis. The improvements in image quality offered by this research will broadly impact all applications of PET imaging, with specific benefit for tumor detection and quantitation.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
5R01CA107353-02
Application #
7065298
Study Section
Biomedical Imaging Technology Study Section (BMIT)
Program Officer
Menkens, Anne E
Project Start
2005-05-16
Project End
2009-04-30
Budget Start
2006-05-01
Budget End
2007-04-30
Support Year
2
Fiscal Year
2006
Total Cost
$156,936
Indirect Cost
Name
University of Utah
Department
Radiation-Diagnostic/Oncology
Type
Schools of Medicine
DUNS #
009095365
City
Salt Lake City
State
UT
Country
United States
Zip Code
84112
Morey, A Michael; Noo, Frédéric; Kadrmas, Dan J (2016) Effect of Using 2mm Voxels on Observer Performance for PET Lesion Detection. IEEE Trans Nucl Sci 63:1359-1366
Morey, A Michael; Kadrmas, Dan J (2013) Effect of varying number of OSEM subsets on PET lesion detectability. J Nucl Med Technol 41:268-73
Kadrmas, Dan J; Oktay, M Bugrahan; Casey, Michael E et al. (2012) Effect of Scan Time on Oncologic Lesion Detection in Whole-Body PET. IEEE Trans Nucl Sci 59:1940-1947
Lois, Cristina; Jakoby, Bjoern W; Long, Misty J et al. (2010) An assessment of the impact of incorporating time-of-flight information into clinical PET/CT imaging. J Nucl Med 51:237-45
Kadrmas, Dan J; Casey, Michael E; Black, Noel F et al. (2009) Experimental comparison of lesion detectability for four fully-3D PET reconstruction schemes. IEEE Trans Med Imaging 28:523-34
Kadrmas, Dan J; Casey, Michael E; Conti, Maurizio et al. (2009) Impact of time-of-flight on PET tumor detection. J Nucl Med 50:1315-23
Kadrmas, Dan J (2008) Rotate-and-slant projector for fast LOR-based fully-3-D iterative PET reconstruction. IEEE Trans Med Imaging 27:1071-83