9 March 2017 Computer simulation of low-dose CT with clinical lung image database: a preliminary study
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Abstract
Large samples of raw low-dose CT (LDCT) projections on lungs are needed for evaluating or designing novel and effective reconstruction algorithms suitable for lung LDCT imaging. However, there exists radiation risk when getting them from clinical CT scanning. To avoid the problem, a new strategy for producing large samples of lung LDCT projections with computer simulations is proposed in this paper. In the simulation, clinical images from the publicly available medical image database-the Lung Image Database Consortium(LIDC) and Image Database Resource Initiative (IDRI) database (LIDC/IDRI) are used as the projected object to form the noise-free sinogram. Then by adding a Poisson distributed quantum noise plus Gaussian distributed electronic noise to the projected transmission data calculated from the noise-free sinogram, different noise levels of LDCT projections are obtained. At last the LDCT projections are used for evaluating two reconstruction strategies. One is the conventional filtered back projection (FBP) algorithm and the other is FBP reconstruction from the filtered sinogram with penalized weighted least square criterion (PWLS-FBP). Images reconstructed with the LDCT simulations have shown that the PWLS-FBP algorithm performs better than the FBP algorithm in reducing streaking artifacts and preserving resolution. Preliminary results indicate that the feasibility of the proposed lung LDCT simulation strategy for helping to determine advanced reconstruction algorithms.
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Junyan Rong, Junyan Rong, Peng Gao, Peng Gao, Wenlei Liu, Wenlei Liu, Yuanke Zhang, Yuanke Zhang, Tianshuai Liu, Tianshuai Liu, Hongbing Lu, Hongbing Lu, } "Computer simulation of low-dose CT with clinical lung image database: a preliminary study", Proc. SPIE 10132, Medical Imaging 2017: Physics of Medical Imaging, 101322U (9 March 2017); doi: 10.1117/12.2253973; https://doi.org/10.1117/12.2253973
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