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Article type: Research Article
Authors: Yan, Huimin | Fang, Chenyun | Liu, Peng | Qiao, Zhiwei; *
Affiliations: School of Computer and Information Technology, Shanxi University, Taiyuan, Shanxi, China
Correspondence: [*] Corresponding author: Zhiwei Qiao, School of Computer and Information Technology, Shanxi University, 92 Wucheng Road, Taiyuan, Shanxi 030006, China. E-mail: zqiao@sxu.edu.cn.
Abstract: BACKGROUND:An effective method for achieving low-dose CT is to keep the number of projection angles constant while reducing radiation dose at each angle. However, this leads to high-intensity noise in the reconstructed image, adversely affecting subsequent image processing, analysis, and diagnosis. OBJECTIVE:This paper proposes a novel Channel Graph Perception based U-shaped Transformer (CGP-Uformer) network, aiming to achieve high-performance denoising of low-dose CT images. METHODS:The network consists of convolutional feed-forward Transformer (ConvF-Transformer) blocks, a channel graph perception block (CGPB), and spatial cross-attention (SC-Attention) blocks. The ConvF-Transformer blocks enhance the ability of feature representation and information transmission through the CNN-based feed-forward network. The CGPB introduces Graph Convolutional Network (GCN) for Channel-to-Channel feature extraction, promoting the propagation of information across distinct channels and enabling inter-channel information interchange. The SC-Attention blocks reduce the semantic difference in feature fusion between the encoder and decoder by computing spatial cross-attention. RESULTS:By applying CGP-Uformer to process the 2016 NIH AAPM-Mayo LDCT challenge dataset, experiments show that the peak signal-to-noise ratio value is 35.56 and the structural similarity value is 0.9221. CONCLUSIONS:Compared to the other four representative denoising networks currently, this new network demonstrates superior denoising performance and better preservation of image details.
Keywords: Low-dose CT, deep learning, transformer, graph convolutional network, convolutional neural network
DOI: 10.3233/XST-230158
Journal: Journal of X-Ray Science and Technology, vol. 31, no. 6, pp. 1189-1205, 2023
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