| Literature DB >> 32369793 |
Qiyang Zhang1, Zhanli Hu2, Changhui Jiang3, Hairong Zheng4, Yongshuai Ge5, Dong Liang3.
Abstract
The suppression of streak artifacts in computed tomography with a limited-angle configuration is challenging. Conventional analytical algorithms, such as filtered backprojection (FBP), are not successful due to incomplete projection data. Moreover, model-based iterative total variation (TV) algorithms effectively reduce small streaks but do not work well at eliminating large streaks. In contrast, FBP mapping networks and deep-learning-based postprocessing networks are outstanding at removing large streak artifacts; however, these methods perform processing in separate domains, and the advantages of multiple deep learning algorithms operating in different domains have not been simultaneously explored. In this paper, we present a hybrid domain convolutional neural network (hdNet) for the reduction of streak artifacts in limited-angle computed tomography. The network consists of three components: the first component is a convolutional neural network operating in the sinogram domain, the second is a domain transformation operation, and the last is a convolutional neural network operating in the CT image domain. After training the network, we can obtain artifact-suppressed CT images directly from the sinogram domain. Verification results based on numerical, experimental and clinical data confirm that the proposed method can significantly reduce serious artifacts.Entities:
Keywords: Domain transformation; computed tomography; convolutional neural network (CNN); limited-angle; streak artifacts
Year: 2020 PMID: 32369793 DOI: 10.1088/1361-6560/ab9066
Source DB: PubMed Journal: Phys Med Biol ISSN: 0031-9155 Impact factor: 3.609