DocumentCode :
1757395
Title :
Sparse-View Spectral CT Reconstruction Using Spectral Patch-Based Low-Rank Penalty
Author :
Kyungsang Kim ; Jong Chul Ye ; Worstell, William ; Jinsong Ouyang ; Rakvongthai, Yothin ; El Fakhri, Georges ; Quanzheng Li
Author_Institution :
Center for Adv. Med. Imaging Sci., Massachusetts Gen. Hosp., Boston, MA, USA
Volume :
34
Issue :
3
fYear :
2015
fDate :
42064
Firstpage :
748
Lastpage :
760
Abstract :
Spectral computed tomography (CT) is a promising technique with the potential for improving lesion detection, tissue characterization, and material decomposition. In this paper, we are interested in kVp switching-based spectral CT that alternates distinct kVp X-ray transmissions during gantry rotation. This system can acquire multiple X-ray energy transmissions without additional radiation dose. However, only sparse views are generated for each spectral measurement; and the spectra themselves are limited in number. To address these limitations, we propose a penalized maximum likelihood method using spectral patch-based low-rank penalty, which exploits the self-similarity of patches that are collected at the same position in spectral images. The main advantage is that the relatively small number of materials within each patch allows us to employ the low-rank penalty that is less sensitive to intensity changes while preserving edge directions. In our optimization formulation, the cost function consists of the Poisson log-likelihood for X-ray transmission and the nonconvex patch-based low-rank penalty. Since the original cost function is difficult to minimize directly, we propose an optimization method using separable quadratic surrogate and concave convex procedure algorithms for the log-likelihood and penalty terms, which results in an alternating minimization that provides a computational advantage because each subproblem can be solved independently. We performed computer simulations and a real experiment using a kVp switching-based spectral CT with sparse-view measurements, and compared the proposed method with conventional algorithms. We confirmed that the proposed method improves spectral images both qualitatively and quantitatively. Furthermore, our GPU implementation significantly reduces the computational cost.
Keywords :
Poisson distribution; biological tissues; computerised tomography; graphics processing units; image reconstruction; maximum likelihood estimation; medical image processing; minimisation; GPU implementation; Poisson log-likelihood; alternating minimization; computer simulations; concave convex procedure algorithms; conventional algorithms; distinct kVp X-ray transmissions; edge directions; gantry rotation; kVp switching-based spectral CT; lesion detection; material decomposition; nonconvex patch-based low-rank penalty; optimization formulation; penalized maximum likelihood method; separable quadratic surrogate; sparse-view measurements; sparse-view spectral CT reconstruction; spectral computed tomography; spectral images; spectral patch-based low-rank penalty; tissue characterization; Computed tomography; Convex functions; Cost function; Detectors; Image reconstruction; Materials; Switches; Concave-convex procedure; difference of convex functions algorithm; low-rank; patch; separable quadratic surrogate; spectral computed tomography (CT);
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2014.2380993
Filename :
6985637
Link To Document :
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