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Deep learning-based bone suppression in chest radiographs using CT-derived features: A feasibility study

Publication ,  Journal Article
Ren, G; Xiao, H; Lam, SK; Yang, D; Li, T; Teng, X; Qin, J; Cai, J
Published in: Quantitative Imaging in Medicine and Surgery
December 1, 2021

Background: Bone suppression of chest X-ray holds the potential to improve the accuracy of target localization in image-guided radiation therapy (IGRT). However, the training dataset for bone suppression is limited because of the scarcity of bone-free radiographs. This study aims to develop a deep learning-based bone suppression method using CT-derived features to reduce the reliance on the bone-free dataset. Methods: In this study, 59 high-resolution lung CT scans were processed to generate the lung digital radiographs (DRs), bone DRs, and bone-free DRs, for the training and internal validation of the proposed cascade convolutional neural network (CCNN). A three-stage image processing framework (CT segmentation, DR simulation, and feature expansion) was developed to expand simulated lung DRs with different weightings of bone intensity. The CCNN consists of a bone detection network and a bone suppression network. In external validation, the trained CCNN was evaluated using 30 chest radiographs. The synthesized bone-suppressed radiographs were compared with the bone-suppressed reference in terms of peak signal-to-noise ratio (PSNR), mean absolute error (MAE), structural similarity index measure (SSIM), and Spearman's correlation coefficient. Furthermore, the effectiveness of the proposed feature expansion method and CCNN model were assessed via the ablation experiment and replacement experiment, respectively. Results: Evaluation on real chest radiographs showed that the bone-suppressed chest radiographs closely matched with the bone-suppressed reference, achieving an accuracy of MAE =0.0087±0.0030, SSIM =0.8458±0.0317, correlation of 0.9554±0.0170, and PNSR of 20.86±1.60. After removing the feature expansion from the CCNN model, the performance decreased in terms of MAE (0.0294±0.0093, -237.9%), SSIM (0.7747±0.0.0416, -8.4%), correlation (0.8772±0.0271, -8.2%), and PSNR (15.53±1.42, -25.5%) metrics. Conclusions: We successfully demonstrated a novel deep learning-based bone suppression method using CT-derived features to reduce the reliance on the bone-free dataset. Implementation of the feature expansion procedures resulted in a remarkable reinforcement of the model performance. For the application of target localization in IGRT, the clinical testing of the proposed method in the context of radiation therapy is a necessary procedure to move from theory into practice.

Duke Scholars

Published In

Quantitative Imaging in Medicine and Surgery

DOI

EISSN

2223-4306

ISSN

2223-4292

Publication Date

December 1, 2021

Volume

11

Issue

12

Start / End Page

4807 / 4819

Related Subject Headings

  • 0299 Other Physical Sciences
  • 0205 Optical Physics
  • 0204 Condensed Matter Physics
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Ren, G., Xiao, H., Lam, S. K., Yang, D., Li, T., Teng, X., … Cai, J. (2021). Deep learning-based bone suppression in chest radiographs using CT-derived features: A feasibility study. Quantitative Imaging in Medicine and Surgery, 11(12), 4807–4819. https://doi.org/10.21037/qims-20-1230
Ren, G., H. Xiao, S. K. Lam, D. Yang, T. Li, X. Teng, J. Qin, and J. Cai. “Deep learning-based bone suppression in chest radiographs using CT-derived features: A feasibility study.” Quantitative Imaging in Medicine and Surgery 11, no. 12 (December 1, 2021): 4807–19. https://doi.org/10.21037/qims-20-1230.
Ren G, Xiao H, Lam SK, Yang D, Li T, Teng X, et al. Deep learning-based bone suppression in chest radiographs using CT-derived features: A feasibility study. Quantitative Imaging in Medicine and Surgery. 2021 Dec 1;11(12):4807–19.
Ren, G., et al. “Deep learning-based bone suppression in chest radiographs using CT-derived features: A feasibility study.” Quantitative Imaging in Medicine and Surgery, vol. 11, no. 12, Dec. 2021, pp. 4807–19. Scopus, doi:10.21037/qims-20-1230.
Ren G, Xiao H, Lam SK, Yang D, Li T, Teng X, Qin J, Cai J. Deep learning-based bone suppression in chest radiographs using CT-derived features: A feasibility study. Quantitative Imaging in Medicine and Surgery. 2021 Dec 1;11(12):4807–4819.

Published In

Quantitative Imaging in Medicine and Surgery

DOI

EISSN

2223-4306

ISSN

2223-4292

Publication Date

December 1, 2021

Volume

11

Issue

12

Start / End Page

4807 / 4819

Related Subject Headings

  • 0299 Other Physical Sciences
  • 0205 Optical Physics
  • 0204 Condensed Matter Physics