DocumentCode :
3330304
Title :
Continuous space-time reconstruction in 4D PET
Author :
Fall, Marne Diarra ; Barat, Éric ; Comtat, Claude ; Dautremer, Thomas ; Montagu, Thierry ; Stute, Simon
Author_Institution :
Lab. des Signaux et Syst. (L2S), Supelec, Gif-sur-Yvette, France
fYear :
2011
fDate :
23-29 Oct. 2011
Firstpage :
2581
Lastpage :
2586
Abstract :
The aim of this work is to propose a method for reconstructing space-time 4D PET images directly from the data without any discretization, neither in space nor in time. To accomplish this, we cast the reconstruction problem in the context of Bayesian nonparametrics (BNP). The 4D activity distribution is viewed as an entire probability density on ℝ3×ℝ+ and inferred directly. The regularization of the inverse problem is done in the Bayesian framework. We put a prior on the random probability measure of interest and compute its posterior. The random activity distribution is modeled as a dependent Dirichlet process mixture (DPM). By assuming independence between space and time random distributions in each component of the mixture for brain functional imaging, we use a Normal-Inverse Wishart (NIW) model as base distribution for the marginalized spatial Dirichlet process. The time dependency is taken into account through a nested DPM of Pólya Trees. The resulting hierarchical nonparametric model allows inference on the so-called functional volumes which define regions of brain whose activity follows a particular kinetic. A challenging task is to tackle the infinite distributions without truncation of models. We approximate the targeted posterior distribution of the space-time distribution with a Markov Chain Monte-Carlo (MCMC) inference scheme for which we make use of a particular update formula combined with a strategy called slice sampling that allows to deal with a finite number of components at each sweep of the sampler. The Bayesian nature of the proposed method gives access to posterior uncertainty. This ability will be used to explore the behavior of the reconstruction algorithm in a situation of low injected doses. To assess our results in this context, we furnish a statistical validation based on synthetic replicates in 3D. An application to space-time PET reconstruction is presented for simulated data from - 4D digital phantom and preliminary results on real data are provided.
Keywords :
Bayes methods; Markov processes; Monte Carlo methods; brain; image reconstruction; image sampling; inverse problems; medical image processing; nonparametric statistics; phantoms; positron emission tomography; probability; random processes; sampling methods; 3D synthetic replication; 4D activity distribution; 4D digital phantom; Bayesian framework; Bayesian nonparametrics; Markov chain Monte-Carlo inference scheme; base distribution method; brain activity region; brain functional imaging; continuous space-time reconstruction; dependent Dirichlet process mixture; hierarchical nonparametric model; infinite distribution analysis; inverse problem regularization; low injected dose; marginalized spatial Dirichlet process; normal-inverse Wishart model; posterior distribution; posterior uncertainty method; probability density; random activity distribution; random probability measurement method; reconstruction algorithm; slice sampling method; space random distribution; space-time 4D PET image reconstruction method; space-time PET reconstruction; space-time distribution; time random distribution; Atmospheric measurements; Blood; Image reconstruction; Kinetic theory; Particle measurements; Tumors; Bayesian nonparametrics; Dependent Dirichlet mixture; Dynamic PET; Gibbs sampler; image reconstruction;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC), 2011 IEEE
Conference_Location :
Valencia
ISSN :
1082-3654
Print_ISBN :
978-1-4673-0118-3
Type :
conf
DOI :
10.1109/NSSMIC.2011.6152696
Filename :
6152696
Link To Document :
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