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Deep learning for automatic target volume segmentation in radiation therapy: A review

Publication ,  Journal Article
Lin, H; Xiao, H; Dong, L; Teo, KBK; Zou, W; Cai, J; Li, T
Published in: Quantitative Imaging in Medicine and Surgery
December 1, 2021

Deep learning, a new branch of machine learning algorithm, has emerged as a fast growing trend in medical imaging and become the state-of-the-art method in various clinical applications such as Radiology, Histo-pathology and Radiation Oncology. Specifically in radiation oncology, deep learning has shown its power in performing automatic segmentation tasks in radiation therapy for Organs-At-Risks (OAR), given its potential in improving the efficiency of OAR contouring and reducing the inter- and intra-observer variabilities. The similar interests were shared for target volume segmentation, an essential step of radiation therapy treatment planning, where the gross tumor volume is defined and microscopic spread is encompassed. The deep learning-based automatic segmentation method has recently been expanded into target volume automatic segmentation. In this paper, the authors summarized the major deep learning architectures of supervised learning fashion related to target volume segmentation, reviewed the mechanism of each infrastructure, surveyed the use of these models in various imaging domains (including Computational Tomography with and without contrast, Magnetic Resonant Imaging and Positron Emission Tomography) and multiple clinical sites, and compared the performance of different models using standard geometric evaluation metrics. The paper concluded with a discussion of open challenges and potential paths of future research in target volume automatic segmentation and how it may benefit the clinical practice.

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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

4847 / 4858

Related Subject Headings

  • 5102 Atomic, molecular and optical physics
  • 4003 Biomedical engineering
  • 0299 Other Physical Sciences
  • 0205 Optical Physics
  • 0204 Condensed Matter Physics
 

Citation

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Lin, H., Xiao, H., Dong, L., Teo, K. B. K., Zou, W., Cai, J., & Li, T. (2021). Deep learning for automatic target volume segmentation in radiation therapy: A review. Quantitative Imaging in Medicine and Surgery, 11(12), 4847–4858. https://doi.org/10.21037/qims-21-168
Lin, H., H. Xiao, L. Dong, K. B. K. Teo, W. Zou, J. Cai, and T. Li. “Deep learning for automatic target volume segmentation in radiation therapy: A review.” Quantitative Imaging in Medicine and Surgery 11, no. 12 (December 1, 2021): 4847–58. https://doi.org/10.21037/qims-21-168.
Lin H, Xiao H, Dong L, Teo KBK, Zou W, Cai J, et al. Deep learning for automatic target volume segmentation in radiation therapy: A review. Quantitative Imaging in Medicine and Surgery. 2021 Dec 1;11(12):4847–58.
Lin, H., et al. “Deep learning for automatic target volume segmentation in radiation therapy: A review.” Quantitative Imaging in Medicine and Surgery, vol. 11, no. 12, Dec. 2021, pp. 4847–58. Scopus, doi:10.21037/qims-21-168.
Lin H, Xiao H, Dong L, Teo KBK, Zou W, Cai J, Li T. Deep learning for automatic target volume segmentation in radiation therapy: A review. Quantitative Imaging in Medicine and Surgery. 2021 Dec 1;11(12):4847–4858.

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

4847 / 4858

Related Subject Headings

  • 5102 Atomic, molecular and optical physics
  • 4003 Biomedical engineering
  • 0299 Other Physical Sciences
  • 0205 Optical Physics
  • 0204 Condensed Matter Physics