DocumentCode
1759414
Title
Ultra-Fast Hybrid CPU–GPU Multiple Scatter Simulation for 3-D PET
Author
Kyung Sang Kim ; Young Don Son ; Zang Hee Cho ; Jong Beom Ra ; Jong Chul Ye
Author_Institution
Dept. of Bio/Brain Eng., Korea Adv. Inst. of Sci. & Technol., Daejeon, South Korea
Volume
18
Issue
1
fYear
2014
fDate
Jan. 2014
Firstpage
148
Lastpage
156
Abstract
Scatter correction is very important in 3-D PET reconstruction due to a large scatter contribution in measurements. Currently, one of the most popular methods is the so-called single scatter simulation (SSS), which considers single Compton scattering contributions from many randomly distributed scatter points. The SSS enables a fast calculation of scattering with a relatively high accuracy; however, the accuracy of SSS is dependent on the accuracy of tail fitting to find a correct scaling factor, which is often difficult in low photon count measurements. To overcome this drawback as well as to improve accuracy of scatter estimation by incorporating multiple scattering contribution, we propose a multiple scatter simulation (MSS) based on a simplified Monte Carlo (MC) simulation that considers photon migration and interactions due to photoelectric absorption and Compton scattering. Unlike the SSS, the MSS calculates a scaling factor by comparing simulated prompt data with the measured data in the whole volume, which enables a more robust estimation of a scaling factor. Even though the proposed MSS is based on MC, a significant acceleration of the computational time is possible by using a virtual detector array with a larger pitch by exploiting that the scatter distribution varies slowly in spatial domain. Furthermore, our MSS implementation is nicely fit to a parallel implementation using graphic processor unit (GPU). In particular, we exploit a hybrid CPU-GPU technique using the open multiprocessing and the compute unified device architecture, which results in 128.3 times faster than using a single CPU. Overall, the computational time of MSS is 9.4 s for a high-resolution research tomograph (HRRT) system. The performance of the proposed MSS is validated through actual experiments using an HRRT.
Keywords
Compton effect; Monte Carlo methods; graphics processing units; image reconstruction; medical image processing; microcomputers; multiprocessing systems; parallel processing; photon transport theory; positron emission tomography; 3D PET reconstruction; HRRT system; MSS computational time; SSS accuracy; computational time acceleration; compute unified device architecture; correct scaling factor; fast scattering calculation; graphic processor unit; high resolution research tomograph system; hybrid CPU-GPU technique; low photon count measurement; multiple scattering contribution; open multiprocessing; photoelectric absorption; photon interaction; photon migration; randomly distributed scatter point; robust scaling factor estimation; scatter correction; scatter estimation accuracy improvement; simplified Monte Carlo simulation; single Compton scattering contribution; single scatter simulation; tail fitting accuracy dependence; time 9.4 s; ultrafast hybrid CPU-GPU multiple scatter simulation; virtual detector array; Compute unified device architecture (CUDA); Monte Carlo (MC) simulation; graphic processor unit (GPU); positron emission tomography (PET); scatter estimation;
fLanguage
English
Journal_Title
Biomedical and Health Informatics, IEEE Journal of
Publisher
ieee
ISSN
2168-2194
Type
jour
DOI
10.1109/JBHI.2013.2267016
Filename
6527334
Link To Document