English

Dual-domain Attention-based Deep Network for Sparse-view CT Artifact Reduction

Medical Physics 2022-03-18 v1

Abstract

Due to the wide applications of X-ray computed tomography (CT) in medical imaging activities, radiation exposure has become a major concern for public health. Sparse-view CT is a promising approach to reduce the radiation dose by down-sampling the total number of acquired projections. However, the CT images reconstructed by this sparse-view imaging approach suffer from severe streaking artifacts and structural information loss. In this work, an end-to-end dual-domain attention-based deep network (DDANet) is proposed to solve such an ill-posed CT image reconstruction problem. The image-domain CT image and the projection-domain sinogram are put into the two parallel sub-networks of the DDANet to independently extract the distinct high-level feature maps. In addition, a specified attention module is introduced to fuse the aforementioned dual-domain feature maps to allow complementary optimizations of removing the streaking artifacts and mitigating the loss of structure. Numerical simulations, anthropomorphic thorax phantom and in vivo pre-clinical experiments are conducted to verify the sparse-view CT imaging performance of the DDANet. Results demonstrate that this newly developed approach is able to robustly remove the streaking artifacts while maintaining the fine structures. As a result, the DDANet provides a promising solution in achieving high quality sparse-view CT imaging.

Keywords

Cite

@article{arxiv.2203.09169,
  title  = {Dual-domain Attention-based Deep Network for Sparse-view CT Artifact Reduction},
  author = {Xiang Gao and Ting Su and Jiongtao Zhu and Jiecheng Yang and Yunxin Zhang and Donghua Mi and Hairong Zheng and Xiaojing Long and Dong Liang and Yongshuai Ge},
  journal= {arXiv preprint arXiv:2203.09169},
  year   = {2022}
}
R2 v1 2026-06-24T10:16:48.899Z