Low-dose computed tomography (CT) reconstruction is a significant concern in CT imaging field. Currently, besides CT manufacturers adapted hardware techniques and optimized scan protocols to reduce the X-ray dose, algorithm-based low-dose CT reconstruction methods have been exploited extensively. However, for achieving high-quality algorithm-based low-dose CT reconstruction, there exist several challenges due to the excessive noise in low-dose projection data and the complex noise and artifacts characteristics in low-dose CT image. Statistical iterative reconstruction (SIR) methods have shown the potential to achieve a superior noise-resolution tradeoff as compared to analytical reconstruction techniques, however a main drawback of SIR is the computational burden associated with the multiple reprojection and back-projection operation cycles through the image domain. In this study, we propose an algorithm-based low-dose CT image reconstruction framework, which by making full use of the advantages of both the low-dose CT projection/sinogram data recovery and advanced edge-preserving CT image restoration. Simulated experimental results demonstrate that the present framework can yield image with better quality comparable to the obtained with the existing methods.
Jianhua MaJing HuangZhengrong LiangHua ZhangYi FanQianjin FengWufan Chen
刘进 Liu Jin亢艳芹 Kang Yanqin顾云波 Gu Yunbo陈阳 Chen Yang
Ailong CaiLei LiZhizhong ZhengLinyuan WangBin Yan
B. S. Sathish KumarJ. Pavithra
Peijian GuChanghui JiangMin JiQiyang ZhangYongshuai GeDong LiangXin LiuYongfeng YangHairong ZhengZhanli Hu