Literature DB >> 33632248

Clinical feasibility of deep learning-based auto-segmentation of target volumes and organs-at-risk in breast cancer patients after breast-conserving surgery.

Seung Yeun Chung1,2, Jee Suk Chang3, Min Seo Choi1, Yongjin Chang4, Byong Su Choi1, Jaehee Chun1, Ki Chang Keum1, Jin Sung Kim5, Yong Bae Kim1.   

Abstract

BACKGROUND: In breast cancer patients receiving radiotherapy (RT), accurate target delineation and reduction of radiation doses to the nearby normal organs is important. However, manual clinical target volume (CTV) and organs-at-risk (OARs) segmentation for treatment planning increases physicians' workload and inter-physician variability considerably. In this study, we evaluated the potential benefits of deep learning-based auto-segmented contours by comparing them to manually delineated contours for breast cancer patients.
METHODS: CTVs for bilateral breasts, regional lymph nodes, and OARs (including the heart, lungs, esophagus, spinal cord, and thyroid) were manually delineated on planning computed tomography scans of 111 breast cancer patients who received breast-conserving surgery. Subsequently, a two-stage convolutional neural network algorithm was used. Quantitative metrics, including the Dice similarity coefficient (DSC) and 95% Hausdorff distance, and qualitative scoring by two panels from 10 institutions were used for analysis. Inter-observer variability and delineation time were assessed; furthermore, dose-volume histograms and dosimetric parameters were also analyzed using another set of patient data.
RESULTS: The correlation between the auto-segmented and manual contours was acceptable for OARs, with a mean DSC higher than 0.80 for all OARs. In addition, the CTVs showed favorable results, with mean DSCs higher than 0.70 for all breast and regional lymph node CTVs. Furthermore, qualitative subjective scoring showed that the results were acceptable for all CTVs and OARs, with a median score of at least 8 (possible range: 0-10) for (1) the differences between manual and auto-segmented contours and (2) the extent to which auto-segmentation would assist physicians in clinical practice. The differences in dosimetric parameters between the auto-segmented and manual contours were minimal.
CONCLUSIONS: The feasibility of deep learning-based auto-segmentation in breast RT planning was demonstrated. Although deep learning-based auto-segmentation cannot be a substitute for radiation oncologists, it is a useful tool with excellent potential in assisting radiation oncologists in the future. Trial registration Retrospectively registered.

Entities:  

Keywords:  Auto-segmentation; Breast cancer; Clinical target volume; Deep learning; Organs-at-risk

Year:  2021        PMID: 33632248     DOI: 10.1186/s13014-021-01771-z

Source DB:  PubMed          Journal:  Radiat Oncol        ISSN: 1748-717X            Impact factor:   3.481


  7 in total

1.  Pelvic U-Net: multi-label semantic segmentation of pelvic organs at risk for radiation therapy anal cancer patients using a deeply supervised shuffle attention convolutional neural network.

Authors:  Michael Lempart; Martin P Nilsson; Jonas Scherman; Christian Jamtheim Gustafsson; Mikael Nilsson; Sara Alkner; Jens Engleson; Gabriel Adrian; Per Munck Af Rosenschöld; Lars E Olsson
Journal:  Radiat Oncol       Date:  2022-06-28       Impact factor: 4.309

2.  Evaluation of deep learning-based autosegmentation in breast cancer radiotherapy.

Authors:  Hwa Kyung Byun; Jee Suk Chang; Min Seo Choi; Jaehee Chun; Jinhong Jung; Chiyoung Jeong; Jin Sung Kim; Yongjin Chang; Seung Yeun Chung; Seungryul Lee; Yong Bae Kim
Journal:  Radiat Oncol       Date:  2021-10-14       Impact factor: 3.481

3.  Research on the Characteristics of Food Impaction with Tight Proximal Contacts Based on Deep Learning.

Authors:  Yitong Cheng; Zhijiang Wang; Yue Shi; Qiaoling Guo; Qian Li; Rui Chai; Feng Wu
Journal:  Comput Math Methods Med       Date:  2021-11-05       Impact factor: 2.238

4.  Impact of Denoising on Deep-Learning-Based Automatic Segmentation Framework for Breast Cancer Radiotherapy Planning.

Authors:  Jung Ho Im; Ik Jae Lee; Yeonho Choi; Jiwon Sung; Jin Sook Ha; Ho Lee
Journal:  Cancers (Basel)       Date:  2022-07-22       Impact factor: 6.575

Review 5.  Review of Deep Learning Based Automatic Segmentation for Lung Cancer Radiotherapy.

Authors:  Xi Liu; Kai-Wen Li; Ruijie Yang; Li-Sheng Geng
Journal:  Front Oncol       Date:  2021-07-08       Impact factor: 6.244

6.  Implementation of deep learning-based auto-segmentation for radiotherapy planning structures: a workflow study at two cancer centers.

Authors:  Jordan Wong; Vicky Huang; Derek Wells; Joshua Giambattista; Jonathan Giambattista; Carter Kolbeck; Karl Otto; Elantholi P Saibishkumar; Abraham Alexander
Journal:  Radiat Oncol       Date:  2021-06-08       Impact factor: 3.481

7.  Dosimetric impact of deep learning-based CT auto-segmentation on radiation therapy treatment planning for prostate cancer.

Authors:  Maria Kawula; Dinu Purice; Minglun Li; Gerome Vivar; Seyed-Ahmad Ahmadi; Katia Parodi; Claus Belka; Guillaume Landry; Christopher Kurz
Journal:  Radiat Oncol       Date:  2022-01-31       Impact factor: 3.481

  7 in total

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