Deep learning based de-overlapping correction of projections from a flat-panel micro array X-ray source: Simulation study

被引:2
作者
Li, Xu [1 ]
Huang, Shuang [1 ]
Pan, Zengxiang [1 ]
Qin, Peishan [1 ]
Wu, Wangjiang [1 ]
Qi, Mengke [1 ]
Ma, Jianhui [1 ]
Kang, Song [2 ]
Chen, Jun [2 ]
Zhou, Linghong [1 ]
Xu, Yuan [1 ]
Qin, Genggeng [3 ]
机构
[1] Southern Med Univ, Sch Biomed Engn, Guangzhou 510515, Peoples R China
[2] Sun Yat Sen Univ, Sch Elect & Informat Technol, State Key Lab Optoelect Mat & Technol, Guangdong Prov Key Lab Display Mat & Technol, Guangzhou 510515, Peoples R China
[3] Southern Med Univ, Nanfang Hosp, Dept Radiol, Guangzhou 510515, Peoples R China
来源
PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS | 2023年 / 111卷
关键词
Flat -panel X-ray source; Overlapping projections; Deep learning; Projection transformation;
D O I
10.1016/j.ejmp.2023.102607
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: Flat-panel X-ray source is an experimental X-ray emitter with target application of static computer tomography (CT), which can save imaging space and time. However, the X-ray cone beams emitted by the densely arranged micro-ray sources are overlapped, causing serious structural overlapping and visual blur in the projection results. Traditional deoverlapping methods can hardly solve this problem well. Method: We converted the overlapping cone beam projections to parallel beam projections through a U-like neural network and selected structural similarity (SSIM) loss as the loss function. In this study, we converted three kinds of overlapping cone beam projections of the Shepp-Logan, line-pairs, and abdominal data with two overlapping levels to corresponding parallel beam projections. Training completed, we tested the model using the test set data that was not used at the training phase, and evaluated the difference between the test set conversion results and their corresponding parallel beams through three indicators: mean squared error (MSE), peak signal-to-noise ratio (PSNR) and SSIM. In addition, projections from head phantoms were applied for generalization test. Result: In the Shepp-Logan low-overlapping task, we obtained a MSE of 1.624x10-5, a PSNR of 47.892 dB, and a SSIM of 0.998 which are the best results of the six experiments. For the most challenging abdominal task, the MSE, PSNR, and SSIM are 1.563x10- 3, 28.0586 dB, and 0.983, respectively. In more generalized data, the model also achieved good results. Conclusion: This study proves the feasibility of utilizing the end-to-end U-net for deblurring and deoverlapping in the flat-panel X-ray source domain.
引用
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页数:12
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