已发表论文

使用卷积神经网络自动分割乳腺保守放疗的临床靶区和危险器官

 

Authors Liu Z , Liu F, Chen W, Tao Y , Liu X, Zhang F , Shen J , Guan H, Zhen H, Wang S, Chen Q, Chen Y, Hou X 

Received 8 August 2021

Accepted for publication 4 October 2021

Published 2 November 2021 Volume 2021:13 Pages 8209—8217

DOI https://doi.org/10.2147/CMAR.S330249

Checked for plagiarism Yes

Review by Single anonymous peer review

Peer reviewer comments 3

Editor who approved publication: Dr A. Emre Eşkazan

Objective: Delineation of clinical target volume (CTV) and organs at risk (OARs) is important for radiotherapy but is time-consuming. We trained and evaluated a U-ResNet model to provide fast and consistent auto-segmentation.
Methods: We collected 160 patients’ CT scans with breast cancer who underwent breast-conserving surgery (BCS) and were treated with radiotherapy. CTV and OARs were delineated manually and were used for model training. The dice similarity coefficient (DSC) and 95th percentile Hausdorff distance (95HD) were used to assess the performance of our model. CTV and OARs were randomly selected as ground truth (GT) masks, and artificial intelligence (AI) masks were generated by the proposed model. Two clinicians randomly compared CTV score differences of the contour. The consistency between two clinicians was tested. Time cost for auto-delineation was evaluated.
Results: The mean DSC values of the proposed method were 0.94, 0.95, 0.94, 0.96, 0.96 and 0.93 for breast CTV, contralateral breast, heart, right lung, left lung and spinal cord, respectively. The mean 95HD values were 4.31mm, 3.59mm, 4.86mm, 3.18mm, 2.79mm and 4.37mm for the above structures, respectively. The average CTV scores for AI and GT were 2.89 versus 2.92 when evaluated by oncologist A (=0.612), and 2.75 versus 2.83 by oncologist B (=0.213), with no statistically significant differences. The consistency between two clinicians was poor (kappa=0.282). The time for auto-segmentation of CTV and OARs was 10.03 s.
Conclusion: Our proposed model (U-ResNet) can improve the efficiency and accuracy of delineation compared with U-Net, performing equally well with the segmentation generated by oncologists.
Keywords: clinical target volume, organ at risk, auto-segmentation, breast cancer radiotherapy, clinical evaluation