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An Investigation of Stochastic Variance Reduction Algorithms for 3D Penalised PET Image Reconstruction

Robert TwymanInstitute of Nuclear Medicine, UCL, UKSimon ArridgeMartinos Center for Biomedical Imaging, Harvard Medical School. S. Ahn is with GE Research, Niskayuna, NY 12309 USA. C. W. Stearns and F. Kotasidis are withŽeljko KeretaInstitute of Nuclear Medicine, UCL,Bangti JinGE Healthcare, Waukesha, WI 53188 USA. ILudovica BrusaferriInstitute of Nuclear Medicine, UCL, UKSangtae AhnDepartment of Computer Science, UCL, UKC.W. StearnsMartinos Center for Biomedical Imaging, Harvard Medical School. S. Ahn is with GE Research, Niskayuna, NY 12309 USA. C. W. Stearns and F. Kotasidis are withBrian HuttonNuclear Medicine Department, University Hospital Zurich, University of ZurichIrene A. BurgerNuclear Medicine Department, University Hospital Zurich, University of ZurichFotis A. KotasidisDepartment of Computer Science, UCL, UKKris ThielemansInstitute of Nuclear Medicine, UCL, UK
2022en
ABI

Аннотация

Application of stochastic variance reduction algorithms to iterative PET reconstruction. We investigated the SAGA and SVRG algorithms for non-TOF PET image reconstruction. Both similated data and a patient data sets were used in the analysis. We found that the stochastic algorithms can improve convergence rate and eliminate behaviour, commonly know as limit cycle behaviour, from PET reconstruction within 5 epochs.

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