DocumentCode :
1500922
Title :
Low-Dose X-ray CT Reconstruction via Dictionary Learning
Author :
Qiong Xu ; Hengyong Yu ; Xuanqin Mou ; Lei Zhang ; Jiang Hsieh ; Ge Wang
Author_Institution :
Inst. of Image Process. & Pattern Recognition, Xi´an Jiaotong Univ., Xian, China
Volume :
31
Issue :
9
fYear :
2012
Firstpage :
1682
Lastpage :
1697
Abstract :
Although diagnostic medical imaging provides enormous benefits in the early detection and accuracy diagnosis of various diseases, there are growing concerns on the potential side effect of radiation induced genetic, cancerous and other diseases. How to reduce radiation dose while maintaining the diagnostic performance is a major challenge in the computed tomography (CT) field. Inspired by the compressive sensing theory, the sparse constraint in terms of total variation (TV) minimization has already led to promising results for low-dose CT reconstruction. Compared to the discrete gradient transform used in the TV method, dictionary learning is proven to be an effective way for sparse representation. On the other hand, it is important to consider the statistical property of projection data in the low-dose CT case. Recently, we have developed a dictionary learning based approach for low-dose X-ray CT. In this paper, we present this method in detail and evaluate it in experiments. In our method, the sparse constraint in terms of a redundant dictionary is incorporated into an objective function in a statistical iterative reconstruction framework. The dictionary can be either predetermined before an image reconstruction task or adaptively defined during the reconstruction process. An alternating minimization scheme is developed to minimize the objective function. Our approach is evaluated with low-dose X-ray projections collected in animal and human CT studies, and the improvement associated with dictionary learning is quantified relative to filtered backprojection and TV-based reconstructions. The results show that the proposed approach might produce better images with lower noise and more detailed structural features in our selected cases. However, there is no proof that this is true for all kinds of structures.
Keywords :
cancer; compressed sensing; computerised tomography; diagnostic radiography; discrete transforms; image reconstruction; iterative methods; medical image processing; minimisation; statistical analysis; cancerous side effect; compressive sensing theory; diagnostic medical imaging; diagnostic performance; dictionary learning; discrete gradient transform; disease detection; disease diagnosis; genetic side effect; image reconstruction task; low-dose x-ray computerised tomography reconstruction; projection data; radiation side effect; sparse constraint; statistical iterative reconstruction framework; statistical property; total variation minimization; Computed tomography; Dictionaries; Image reconstruction; Minimization; Noise; TV; X-ray imaging; Compressive sensing (CS); computed tomography (CT); dictionary learning; low-dose CT; sparse representation; statistical iterative reconstruction; Algorithms; Animals; Artificial Intelligence; Computer Simulation; Humans; Image Processing, Computer-Assisted; Lung; Phantoms, Imaging; Radiography, Thoracic; Sheep; Tomography, X-Ray Computed;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2012.2195669
Filename :
6188527
Link To Document :
بازگشت