首页 / 院系成果 / 成果详情页

An unsupervised deep learning network model for artifact correction of cone-beam computed tomography images  期刊论文  

  • 编号:
    354BAD5EFBACB6AFFC85CC6B6299F9B2
  • 作者:
  • 语种:
    英文
  • 期刊:
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL ISSN:1746-8094 2024 年 95 卷 ; SEP
  • 收录:
  • 关键词:
  • 摘要:

    Unsupervised deep learning network model cycle-consistent generative adversarial network (CycleGAN) is increasingly applied for artifact correction of cone-beam computed tomography (CBCT) images owing to the registration-free advantage of dataset. However, synthetic Planning CT images (sPCT) based on the model lose the anatomical details of the original CBCT images. Therefore, to improve the accuracy of adaptive radiation therapy (ART), it is necessary to maintain the anatomical structures between the sPCT and original CBCT images, while improving CBCT image quality. An improved CycleGAN model was designed based on an attention module and a structural consistency loss function. The improved CycleGAN model was trained using CBCT and Planning CT (PCT) images of 43 patients to generate sPCT images from CBCT images. Images of nine other patients were used to verify the effectiveness of the improved CycleGAN model. As compared to the original CycleGAN model, the sPCT images generated by the improved CycleGAN model increased by 2.87%, 9.64%, and 7.91%, respectively, in the image quality evaluation indicators PSNR, MAE, and RMSE, while increased by 2.43% and 32.03%, respectively, in the structural consistency evaluation indicators SSIM and MIND. The improved CycleGAN model generated high quality sPCT images and accurately preserved the anatomical details of the original CBCT images, thereby demonstrating great potential for clinical applications of ART.

  • 推荐引用方式
    GB/T 7714:
    Zhang Wenjun,Ding Haining,Xu Hongchun, et al. An unsupervised deep learning network model for artifact correction of cone-beam computed tomography images [J].BIOMEDICAL SIGNAL PROCESSING AND CONTROL,2024,95.
  • APA:
    Zhang Wenjun,Ding Haining,Xu Hongchun,Jin Mingming,&Huang Gang.(2024).An unsupervised deep learning network model for artifact correction of cone-beam computed tomography images .BIOMEDICAL SIGNAL PROCESSING AND CONTROL,95.
  • MLA:
    Zhang Wenjun, et al. "An unsupervised deep learning network model for artifact correction of cone-beam computed tomography images" .BIOMEDICAL SIGNAL PROCESSING AND CONTROL 95(2024).
  • 入库时间:
    11/19/2024 10:43:10 PM
  • 更新时间:
    12/29/2025 9:38:34 PM
  • 条目包含文件:
    文件类型: , 文件大小:
    正在加载全文
浏览次数:61 下载次数:0
浏览次数:61
下载次数:0
打印次数:0
浏览器支持: Google Chrome   火狐   360浏览器极速模式(8.0+极速模式) 
返回顶部