Performance comparison between total variation (TV)-based compressed sensing and statistical iterative reconstruction algorithms
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- 9 September 2009
- journal article
- research article
- Published by IOP Publishing in Physics in Medicine & Biology
- Vol. 54 (19), 5781-5804
- https://doi.org/10.1088/0031-9155/54/19/008
Abstract
Of all available reconstruction methods, statistical iterative reconstruction algorithms appear particularly promising since they enable accurate physical noise modeling. The newly developed compressive sampling/compressed sensing (CS) algorithm has shown the potential to accurately reconstruct images from highly undersampled data. The CS algorithm can be implemented in the statistical reconstruction framework as well. In this study, we compared the performance of two standard statistical reconstruction algorithms (penalized weighted least squares and q-GGMRF) to the CS algorithm. In assessing the image quality using these iterative reconstructions, it is critical to utilize realistic background anatomy as the reconstruction results are object dependent. A cadaver head was scanned on a Varian Trilogy system at different dose levels. Several figures of merit including the relative root mean square error and a quality factor which accounts for the noise performance and the spatial resolution were introduced to objectively evaluate reconstruction performance. A comparison is presented between the three algorithms for a constant undersampling factor comparing different algorithms at several dose levels. To facilitate this comparison, the original CS method was formulated in the framework of the statistical image reconstruction algorithms. Important conclusions of the measurements from our studies are that (1) for realistic neuro-anatomy, over 100 projections are required to avoid streak artifacts in the reconstructed images even with CS reconstruction, (2) regardless of the algorithm employed, it is beneficial to distribute the total dose to more views as long as each view remains quantum noise limited and (3) the total variationbased CS method is not appropriate for very low dose levels because while it can mitigate streaking artifacts, the images exhibit patchy behavior, which is potentially harmful for medical diagnosis.Keywords
This publication has 65 references indexed in Scilit:
- Compressed sensing based interior tomographyPhysics in Medicine & Biology, 2009
- High temporal resolution and streak-free four-dimensional cone-beam computed tomographyPhysics in Medicine & Biology, 2008
- Image reconstruction in circular cone-beam computed tomography by constrained, total-variation minimizationPhysics in Medicine & Biology, 2008
- Image reconstruction from a small number of projectionsInverse Problems, 2008
- Prior image constrained compressed sensing (PICCS): A method to accurately reconstruct dynamic CT images from highly undersampled projection data setsMedical Physics, 2008
- Ordered subset reconstruction for x-ray CTPhysics in Medicine & Biology, 2001
- Penalized weighted least-squares image reconstruction for dual energy X-ray transmission tomographyIEEE Transactions on Medical Imaging, 2000
- A nonlinear filter for film restoration and other problems in image processingCVGIP: Graphical Models and Image Processing, 1992
- Iterative methods for the three-dimensional reconstruction of an object from projectionsJournal of Theoretical Biology, 1972
- Algebraic Reconstruction Techniques (ART) for three-dimensional electron microscopy and X-ray photographyJournal of Theoretical Biology, 1970