TY - JOUR
T1 - 基于噪声水平估计的低剂量螺旋 CT 投影数据恢复
AU - He, Fawei
AU - Wang, Yongbo
AU - Tao, Xi
AU - Zhu, Manman
AU - Hong, Zixuan
AU - Bian, Zhaoying
AU - Ma, Jianhua
N1 - Publisher Copyright:
© 2022 Editorial Department of Journal of Southern Medical University. All rights reserved.
PY - 2022
Y1 - 2022
N2 - To build a helical CT projection data restoration model at random low-dose levels. Methods We used a noise estimation module to achieve noise estimation and obtained a low-dose projection noise variance map, which was used to guide projection data recovery by the projection data restoration module. A filtering back-projection algorithm (FBP) was finally used to reconstruct the images. The 3D wavelet group residual dense network (3DWGRDN) was adopted to build the network architecture of the noise estimation and projection data restoration module using asymmetric loss and total variational regularization. For validation of the model, 1/10 and 1/15 of normal dose helical CT images were restored using the proposed model and 3 other restoration models (IRLNet, REDCNN and MWResNet), and the results were visually and quantitatively compared. Results Quantitative comparisons of the restored images showed that the proposed helical CT projection data restoration model increased the structural similarity index by 5.79% to 17.46% compared with the other restoration algorithms (P<0.05). The image quality scores of the proposed method rated by clinical radiologists ranged from 7.19% to 17.38%, significantly higher than the other restoration algorithms (P<0.05). Conclusion The proposed method can effectively suppress noises and reduce artifacts in the projection data at different low-dose levels while preserving the integrity of the edges and fine details of the reconstructed CT images.projection
AB - To build a helical CT projection data restoration model at random low-dose levels. Methods We used a noise estimation module to achieve noise estimation and obtained a low-dose projection noise variance map, which was used to guide projection data recovery by the projection data restoration module. A filtering back-projection algorithm (FBP) was finally used to reconstruct the images. The 3D wavelet group residual dense network (3DWGRDN) was adopted to build the network architecture of the noise estimation and projection data restoration module using asymmetric loss and total variational regularization. For validation of the model, 1/10 and 1/15 of normal dose helical CT images were restored using the proposed model and 3 other restoration models (IRLNet, REDCNN and MWResNet), and the results were visually and quantitatively compared. Results Quantitative comparisons of the restored images showed that the proposed helical CT projection data restoration model increased the structural similarity index by 5.79% to 17.46% compared with the other restoration algorithms (P<0.05). The image quality scores of the proposed method rated by clinical radiologists ranged from 7.19% to 17.38%, significantly higher than the other restoration algorithms (P<0.05). Conclusion The proposed method can effectively suppress noises and reduce artifacts in the projection data at different low-dose levels while preserving the integrity of the edges and fine details of the reconstructed CT images.projection
UR - https://www.scopus.com/pages/publications/85134360373
U2 - 10.12122/j.issn.1673-4254.2022.06.08
DO - 10.12122/j.issn.1673-4254.2022.06.08
M3 - 文章
C2 - 35790435
AN - SCOPUS:85134360373
SN - 1673-4254
VL - 42
SP - 849
EP - 859
JO - Nan Fang Yi Ke Da Xue Xue Bao / Journal of Southern Medical University
JF - Nan Fang Yi Ke Da Xue Xue Bao / Journal of Southern Medical University
IS - 6
ER -