Image reconstruction for the ECAT HRRT PET scanner with MOLAR is computationally demanding and requires a computer cluster for reasonable run times. Parallel computing using GPUs and CUDA offers a means to accelerate MOLAR. However, forward and backprojection operations present unique challenges that must be overcome to achieve acceptable speedup. In this study we implement GPU-accelerated versions of MOLAR's forward projection, backprojection and algorithm update modules and compare their performance to CPU-only versions. During this implementation we optimized the GPU thread configurations for each of these modules separately, along with a hybrid forward-backprojection module that is used for algorithm updates. We also numerically evaluat...
In this work we have parallelized the Maximum Likelihood Expectation-Maximization (MLEM) and Ordered...
Fully 3D iterative tomographic image reconstruction is computationally very demanding. Graphics Proc...
International audienceForward and Backward projections are two computational costly steps in tomogra...
MOLAR (Motion-compensation OSEM List-mode Algorithm for Resolution-recovery reconstruction) was writ...
Positron emission tomography (PET) is an important imaging modality in both clinical usage and resea...
This work presents a graphics processing unit (GPU)- based implementation of a fully 3-D PET iterat...
International audienceIn PET imaging, one main obstacle in obtaining a fully quantitative list-mode ...
Positron emission tomography (PET) is an important imaging modality in both clinical usage and resea...
The Motion-compensation OSEM List-mode Algorithm for Resolution-recovery/Reconstruction (MOLAR) is a...
International audienceBack-Projection is the major algorithm in Computed Tomography to reconstruct i...
In positron emission tomography (PET), 3D iterative image reconstruction methods have a huge computa...
Proceeding of: 2009 IEEE Nuclear Science Symposium Conference Record (NSS/MIC), Orlando, Florida, 25...
In this work we have parallelized the Maximum Likelihood Expectation-Maximization (MLEM) and Ordered...
Fully 3D iterative tomographic image reconstruction is computationally very demanding. Graphics Proc...
International audienceForward and Backward projections are two computational costly steps in tomogra...
MOLAR (Motion-compensation OSEM List-mode Algorithm for Resolution-recovery reconstruction) was writ...
Positron emission tomography (PET) is an important imaging modality in both clinical usage and resea...
This work presents a graphics processing unit (GPU)- based implementation of a fully 3-D PET iterat...
International audienceIn PET imaging, one main obstacle in obtaining a fully quantitative list-mode ...
Positron emission tomography (PET) is an important imaging modality in both clinical usage and resea...
The Motion-compensation OSEM List-mode Algorithm for Resolution-recovery/Reconstruction (MOLAR) is a...
International audienceBack-Projection is the major algorithm in Computed Tomography to reconstruct i...
In positron emission tomography (PET), 3D iterative image reconstruction methods have a huge computa...
Proceeding of: 2009 IEEE Nuclear Science Symposium Conference Record (NSS/MIC), Orlando, Florida, 25...
In this work we have parallelized the Maximum Likelihood Expectation-Maximization (MLEM) and Ordered...
Fully 3D iterative tomographic image reconstruction is computationally very demanding. Graphics Proc...
International audienceForward and Backward projections are two computational costly steps in tomogra...