2019
DOI: 10.1088/1361-6560/aaf9b9
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Implementation and validation of time-of-flight PET image reconstruction module for listmode and sinogram projection data in the STIR library

Abstract: In this paper, we describe the implementation of support for time-of-flight (TOF) positron emission tomography (PET) for both listmode and sinogram data in the open source software for tomographic image reconstruction (STIR). We provide validation and performance characterization using simulated data from the open source GATE Monte Carlo toolbox, with TOF configurations spanning from 81.2 to 209.6 ps. The coincidence detector resolution was corrected for the timing resolution deterioration due to the contribut… Show more

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Cited by 35 publications
(26 citation statements)
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“…Software for Tomographic Image Reconstruction (STIR) (v.4.0) [45], [46] supports a wide range of reconstruction algorithms for the determination of the Maximum Likelihood Estimation (MLE). In this paper, we used TOF Listmode Maximum Likelihood-Expectation Maximisation (LM-MLEM) as it is the most robust option and is guaranteed to converge to a solution [47]- [49]. The validation of the TOF reconstruction with Gaussian [49]- [51] and non-Gaussian [52] kernels, has been presented in detail previously.…”
Section: Image Reconstruction Toolkitmentioning
confidence: 99%
See 1 more Smart Citation
“…Software for Tomographic Image Reconstruction (STIR) (v.4.0) [45], [46] supports a wide range of reconstruction algorithms for the determination of the Maximum Likelihood Estimation (MLE). In this paper, we used TOF Listmode Maximum Likelihood-Expectation Maximisation (LM-MLEM) as it is the most robust option and is guaranteed to converge to a solution [47]- [49]. The validation of the TOF reconstruction with Gaussian [49]- [51] and non-Gaussian [52] kernels, has been presented in detail previously.…”
Section: Image Reconstruction Toolkitmentioning
confidence: 99%
“…In this paper, we used TOF Listmode Maximum Likelihood-Expectation Maximisation (LM-MLEM) as it is the most robust option and is guaranteed to converge to a solution [47]- [49]. The validation of the TOF reconstruction with Gaussian [49]- [51] and non-Gaussian [52] kernels, has been presented in detail previously. In this study, the application of the TOF kernel is done in a similar manner to that of the simple Gaussian.…”
Section: Image Reconstruction Toolkitmentioning
confidence: 99%
“…The reconstruction was performed using STIR [10] and the Python-STIR interface SIRF [11]. In particular, pre-release versions of STIR and SIRF were used which allowed for the inclusion of TOF in the reconstruction as implemented in [12]. Sinograms were produced by computing the intersection of each LOR with 64 φ-planes spanning axial angles from 0 to π.…”
Section: Preliminary Reconstructionmentioning
confidence: 99%
“…PET acquisitions were simulated using Software for Tomographic Image Reconstruction (STIR) [7], [8] through Synergistic Image Reconstruction Framework (SIRF) [9], [10] to forward project the input data to sinograms using the geometry of a GE Discovery 710 and, where relevant, a TOF resolution of 375ps similar to the GE Signa PET/MR (using TOF mashing to reduce computation time resulting in 13 TOF time bins of size 376.5ps). Attenuation was included in the simulation using the relevant mu-map generated by XCAT.…”
Section: B Pet Data Simulationmentioning
confidence: 99%