Sparse-View Tomographic Reconstruction Using Residual U-Net with Attention Gates

Chang Chieh Cheng*

*此作品的通信作者

研究成果: Conference contribution同行評審

摘要

Reconstructing a tomographic image with sparse-view sampling is a major challenge in low-dose computed tomography. Recently, several studies have reported that deep-learning-based methods can reconstruct images of 512 × 512 pixels from 60-view X-ray projections without large artifacts. In this study, a U-Net variant with residual connections and attention gates is proposed for sparse-view computed tomography. A pair of the proposed U-Nets with a loss function based on the structural similarity index measure can be applied to synthesize sparse-view sampling sinograms and denoise reconstructed images. The experimental results indicate the performance of the proposed method is superior to those of other U-Net-based methods for fewer than 60 projection views. Experiments on a public data set of chest tomographic images validated that the proposed method can be used for COVID-19 identification.

原文English
主出版物標題Medical Imaging 2024
主出版物子標題Image Processing
編輯Olivier Colliot, Jhimli Mitra
發行者SPIE
ISBN(電子)9781510671560
DOIs
出版狀態Published - 2024
事件Medical Imaging 2024: Image Processing - San Diego, United States
持續時間: 19 2月 202422 2月 2024

出版系列

名字Progress in Biomedical Optics and Imaging - Proceedings of SPIE
12926
ISSN(列印)1605-7422

Conference

ConferenceMedical Imaging 2024: Image Processing
國家/地區United States
城市San Diego
期間19/02/2422/02/24

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