A dual-domain network with division residual connection and feature fusion for CBCT scatter correction
2025-02-16
发表期刊PHYSICS IN MEDICINE AND BIOLOGY
ISSN0031-9155
EISSN1361-6560
卷号70期号:4
发表状态已发表
DOI10.1088/1361-6560/adaf06
摘要

Objective. This study aims to propose a dual-domain network that not only reduces scatter artifacts but also retains structure details in cone-beam computed tomography (CBCT). Approach. The proposed network comprises a projection-domain sub-network and an image-domain sub-network. The projection-domain sub-network utilizes a division residual network to amplify the difference between scatter signals and imaging signals, facilitating the learning of scatter signals. The image-domain sub-network contains dual encoders and a single decoder. The dual encoders extract features from two inputs parallelly, and the decoder fuses the extracted features from the two encoders and maps the fused features back to the final high-quality image. Of the two input images to the image-domain sub-network, one is the scatter-contaminated image analytically reconstructed from the scatter-contaminated projections, and the other is the pre-processed image reconstructed from the pre-processed projections produced by the projection-domain sub-network. Main results. Experimental results on both synthetic and real data demonstrate that our method can effectively reduce scatter artifacts and restore image details. Quantitative analysis using synthetic data shows the mean absolute error was reduced by 74% and peak signal-to-noise ratio increased by 57% compared to the scatter-contaminated ones. Testing on real data found a 38% increase in contrast-to-noise ratio with our method compared to the scatter-contaminated image. Additionally, our method consistently outperforms comparative methods such as U-Net, DSE-Net, deep residual convolution neural network (DRCNN) and the collimator-based method. Significance. A dual-domain network that leverages projection-domain division residual connection and image-domain feature fusion has been proposed for CBCT scatter correction. It has potential applications for reducing scatter artifacts and preserving image details in CBCT.

关键词cone-beam CT scatter correction deep learning tomographic reconstruction image processing
URL查看原文
收录类别SCI ; EI
语种英语
资助项目Shanghai Municipal Central Guided Local Science and Technology Development Fund[62273238] ; National Natural Science Foundation of China[YDZX20233100001001]
WOS研究方向Engineering ; Radiology, Nuclear Medicine & Medical Imaging
WOS类目Engineering, Biomedical ; Radiology, Nuclear Medicine & Medical Imaging
WOS记录号WOS:001415706900001
出版者IOP Publishing Ltd
EI入藏号20250717853304
EI主题词Computerized tomography
EI分类号1101.2.1 Deep Learning ; 1106.3.1 Image Processing ; 716.1 Information Theory and Signal Processing ; 742.1 Photography ; 746 Imaging Techniques
原始文献类型Journal article (JA)
文献类型期刊论文
条目标识符https://kms.shanghaitech.edu.cn/handle/2MSLDSTB/487122
专题生物医学工程学院
信息科学与技术学院_硕士生
生物医学工程学院_PI研究组_曹国华组
通讯作者Cao, Guohua
作者单位
1.ShanghaiTech Univ, Sch Biomed Engn, Shanghai 201210, Peoples R China
2.ShanghaiTech Univ, State Key Lab Adv Med Mat & Devices, Shanghai 201210, Peoples R China
第一作者单位生物医学工程学院;  上海科技大学
通讯作者单位生物医学工程学院;  上海科技大学
第一作者的第一单位生物医学工程学院
推荐引用方式
GB/T 7714
Yang, Shuo,Wang, Zhe,Chen, Linjie,et al. A dual-domain network with division residual connection and feature fusion for CBCT scatter correction[J]. PHYSICS IN MEDICINE AND BIOLOGY,2025,70(4).
APA Yang, Shuo.,Wang, Zhe.,Chen, Linjie.,Cheng, Ying.,Wang, Huamin.,...&Cao, Guohua.(2025).A dual-domain network with division residual connection and feature fusion for CBCT scatter correction.PHYSICS IN MEDICINE AND BIOLOGY,70(4).
MLA Yang, Shuo,et al."A dual-domain network with division residual connection and feature fusion for CBCT scatter correction".PHYSICS IN MEDICINE AND BIOLOGY 70.4(2025).
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