| Literature DB >> 24786683 |
Junguo Bian1, Kai Yang, John M Boone, Xiao Han, Emil Y Sidky, Xiaochuan Pan.
Abstract
There is interest in developing computed tomography (CT) dedicated to breast-cancer imaging. Because breast tissues are radiation-sensitive, the total radiation exposure in a breast-CT scan is kept low, often comparable to a typical two-view mammography exam, thus resulting in a challenging low-dose-data-reconstruction problem. In recent years, evidence has been found that suggests that iterative reconstruction may yield images of improved quality from low-dose data. In this work, based upon the constrained image total-variation minimization program and its numerical solver, i.e., the adaptive steepest descent-projection onto the convex set (ASD-POCS), we investigate and evaluate iterative image reconstructions from low-dose breast-CT data of patients, with a focus on identifying and determining key reconstruction parameters, devising surrogate utility metrics for characterizing reconstruction quality, and tailoring the program and ASD-POCS to the specific reconstruction task under consideration. The ASD-POCS reconstructions appear to outperform the corresponding clinical FDK reconstructions, in terms of subjective visualization and surrogate utility metrics.Entities:
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Year: 2014 PMID: 24786683 PMCID: PMC4104195 DOI: 10.1088/0031-9155/59/11/2659
Source DB: PubMed Journal: Phys Med Biol ISSN: 0031-9155 Impact factor: 3.609