DocumentCode :
5224
Title :
PET Image Reconstruction Using Kernel Method
Author :
Guobao Wang ; Jinyi Qi
Author_Institution :
Dept. of Biomed. Eng., Univ. of California, Davis, Davis, CA, USA
Volume :
34
Issue :
1
fYear :
2015
fDate :
Jan. 2015
Firstpage :
61
Lastpage :
71
Abstract :
Image reconstruction from low-count positron emission tomography (PET) projection data is challenging because the inverse problem is ill-posed. Prior information can be used to improve image quality. Inspired by the kernel methods in machine learning, this paper proposes a kernel based method that models PET image intensity in each pixel as a function of a set of features obtained from prior information. The kernel-based image model is incorporated into the forward model of PET projection data and the coefficients can be readily estimated by the maximum likelihood (ML) or penalized likelihood image reconstruction. A kernelized expectation-maximization algorithm is presented to obtain the ML estimate. Computer simulations show that the proposed approach can achieve better bias versus variance trade-off and higher contrast recovery for dynamic PET image reconstruction than the conventional maximum likelihood method with and without post-reconstruction denoising. Compared with other regularization-based methods, the kernel method is easier to implement and provides better image quality for low-count data. Application of the proposed kernel method to a 4-D dynamic PET patient dataset showed promising results.
Keywords :
expectation-maximisation algorithm; feature extraction; image denoising; image reconstruction; learning (artificial intelligence); medical image processing; operating system kernels; positron emission tomography; 4D dynamic PET patient dataset; ML estimate; ML image reconstruction; PET image intensity modeling; PET projection data model; bias-variance trade-off; coefficient estimation; computer simulation; contrast recovery; dynamic PET image reconstruction; feature extraction; forward model; image quality; inverse problem; kernel method application; kernel-based image model; kernelized expectation-maximization algorithm; low-count positron emission tomography projection data; machine learning; maximum likelihood image reconstruction; penalized likelihood image reconstruction; pixel intensity modeling; post-reconstruction denoising; prior information; regularization-based method; Image reconstruction; Kernel; Maximum likelihood estimation; Noise; Noise reduction; Positron emission tomography; Sparse matrices; Expectation maximization (EM); image prior; image reconstruction; kernel method; positron emission tomography (PET);
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2014.2343916
Filename :
6868314
Link To Document :
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