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Abstract
Cone-beam computed tomography (CBCT) integrated with a linear accelerator is widely used to increase the accuracy of radiotherapy and plays an important role in image-guided radiotherapy (IGRT). For comparison with fan-beam computed tomography (FBCT), the image quality of CBCT is indistinct due to X-ray scattering, noise, and artefacts. We proposed a deep learning model, “Cycle-Deblur GAN”, combined with CycleGAN and Deblur-GAN models to improve the image quality of chest CBCT images. The 8706 CBCT and FBCT image pairs were used for training, and 1150 image pairs were used for testing in deep learning. The generated CBCT images from the Cycle-Deblur GAN model demonstrated closer CT values to FBCT in the lung, breast, mediastinum, and sternum compared to the CycleGAN and RED-CNN models. The quantitative evaluations of MAE, PSNR, and SSIM for CBCT generated from the Cycle-Deblur GAN model demonstrated better results than the CycleGAN and RED-CNN models. The Cycle-Deblur GAN model improved image quality and CT-value accuracy and preserved structural details for chest CBCT images.
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Details
1 National Yang- Ming University, Department of Biomedical Imaging and Radiological Sciences, Taipei, Taiwan (GRID:grid.260770.4) (ISNI:0000 0001 0425 5914); Division of Radiation Oncology, Department of Radiology, Far Eastern Memorial Hospital, New Taipei City, Taiwan (GRID:grid.414746.4) (ISNI:0000 0004 0604 4784)
2 National Yang- Ming University, Department of Biomedical Imaging and Radiological Sciences, Taipei, Taiwan (GRID:grid.260770.4) (ISNI:0000 0001 0425 5914); National Taiwan University and Academia Sinica, Data Science Degree Program, College of Electrical Engineering and Computer Science, Taipei, Taiwan (GRID:grid.19188.39) (ISNI:0000 0004 0546 0241)
3 Division of Radiation Oncology, Department of Radiology, Far Eastern Memorial Hospital, New Taipei City, Taiwan (GRID:grid.414746.4) (ISNI:0000 0004 0604 4784); National Yang-Ming University, Faculty of Medicine, School of Medicine, Taipei, Taiwan (GRID:grid.260770.4) (ISNI:0000 0001 0425 5914)
4 National Yang- Ming University, Department of Biomedical Imaging and Radiological Sciences, Taipei, Taiwan (GRID:grid.260770.4) (ISNI:0000 0001 0425 5914); Yuanpei University of Medical Technology, Department of Medical Imaging and Radiological Technology, Hsinchu, Taiwan (GRID:grid.413051.2) (ISNI:0000 0004 0444 7352); Xuzhou Medical University, School of Medical Imaging, Jiangsu, China (GRID:grid.417303.2) (ISNI:0000 0000 9927 0537)