Decompose kV projection using neural network for improved motion tracking in paraspinal SBRT Journal Article


Authors: He, X.; Cai, W.; Li, F.; Fan, Q.; Zhang, P.; Cuaron, J. J.; Cerviño, L. I.; Li, X.; Li, T.
Article Title: Decompose kV projection using neural network for improved motion tracking in paraspinal SBRT
Abstract: Purpose: On-treatment kV images have been used in tracking patient motion. One challenge of markerless motion tracking in paraspinal SBRT is the reduced contrast when the X-ray beam needs to pass through a large portion of the patient's body, for example, from the lateral direction. Besides, due to the spine's overlapping with the surrounding moving organs in the X-ray images, auto-registration could lead to potential errors. This work aims to automatically extract the spine component from the conventional 2D X-ray images, to achieve more robust and more accurate motion management. Methods: A ResNet generative adversarial network (ResNetGAN) consisting of one generator and one discriminator was developed to learn the mapping between 2D kV image and the reference spine digitally reconstructed radiograph (DRR). A tailored multi-channel multi-domain loss function was used to improve the quality of the decomposed spine image. The trained model took a 2D kV image as input and learned to generate the spine component of the X-ray image. The training dataset included 1347 2D kV thoracic and lumbar region X-ray images from 20 randomly selected patients, and the corresponding matched reference spine DRR. Another 226 2D kV images from the remaining four patients were used for evaluation. The resulted decomposed spine images and the original X-ray images were registered to the reference spine DRRs, to compare the spine tracking accuracy. Results: The decomposed spine image had the mean peak signal-to-noise ratio (PSNR) and structural similarity index measure (SSIM) of 60.08 and 0.99, respectively, indicating the model retained and enhanced the spine structure information in the original 2D X-ray image. The decomposed spine image matching with the reference spine DRR had submillimeter accuracy (in mm) with a mean error of 0.13, 0.12, and a maximum of 0.58, 0.49 in the (Formula presented.) - and (Formula presented.) -directions (in the imager coordinates), respectively. The accuracy improvement is robust in all lateral and anteroposterior X-ray beam angles. Conclusion: We developed a deep learning-based approach to remove soft tissues in the kV image, leading to more accurate spine tracking in paraspinal SBRT. © 2021 American Association of Physicists in Medicine
Keywords: radiotherapy; image enhancement; radiation therapy; x ray; paraspinal; signal to noise ratio; image-guided therapy; neural-networks; patient motions; motion analysis; deep learning; image guided therapy; digitally reconstructed radiographs; generative adversarial networks; lateral directions; markerless; potential errors; x-ray beam; x-ray image
Journal Title: Medical Physics
Volume: 48
Issue: 12
ISSN: 0094-2405
Publisher: American Association of Physicists in Medicine  
Date Published: 2021-12-01
Start Page: 7590
End Page: 7601
Language: English
DOI: 10.1002/mp.15295
PROVIDER: scopus
PUBMED: 34655442
PMCID: PMC9454326
DOI/URL:
Notes: Article -- Export Date: 3 January 2022 -- Source: Scopus
Altmetric
Citation Impact
BMJ Impact Analytics
MSK Authors
  1. Pengpeng Zhang
    179 Zhang
  2. John Jacob Cuaron
    143 Cuaron
  3. Xiang   Li
    72 Li
  4. Tianfang Li
    48 Li
  5. Weixing Cai
    32 Cai
  6. Qiyong Fan
    19 Fan
  7. Feifei Li
    18 Li
  8. Xiuxiu He
    19 He