Automatic-delineation model construction for prostate cancer target volume of postoperative radiotherapy based on artificial intelligence
10.3760/cma.j.cn113030-20220716-00242
- VernacularTitle:前列腺癌术后放疗靶区自动勾画人工智能模型构建
- Author:
Fang WANG
1
;
Dong MIAO
;
Yali SHEN
;
Zhebin CHEN
;
Yu YAO
;
Xin WANG
Author Information
1. 四川大学华西医院肿瘤中心腹部肿瘤科,成都 610041
- Keywords:
Prostatic neoplasms;
Clinical target volume;
Organs at risk;
Artificial intelligence;
Automatic delineation
- From:
Chinese Journal of Radiation Oncology
2023;32(3):222-228
- CountryChina
- Language:Chinese
-
Abstract:
Objective:To explore the method of constructing automatic delineation model for clinical target volume (CTV) and partially organs at risk (OAR) of postoperative radiotherapy for prostate cancer based on convolutional neural network, aiming to improve the clinical work efficiency and the unity of target area delineation.Methods:Postoperative CT data of 117 prostate cancer patients manually delineated by one experienced clinician were retrospectively analyzed. A multi-class auto-delineation model was designed based on 3D UNet. Dice similarity coefficient (DSC), 95% Hausdorf distance (95%HD), and average surface distance (ASD) were used to evaluate the segmentation ability of the model. In addition, the segmentation results in the test set were evaluated by two senior physicians. And the CT data of 78 patients treated by other physicians were also collected for external validation of the model. The automatic segmentation of these 78 patients by CTV-UNet model was also evaluated by two physicians.Results:The mean DSC for tumor bed area (CTV1), pelvic lymph node drainage area (CTV2), bladder and rectum of CVT-UNet auto-segmentation model in the test set were 0.74, 0.82, 0.94 and 0.79, respectively. Both physicians' scoring results of the test set and the external validation showed more consensus on the delineation of CTV2 and OAR. However, the consensus of CTV1 delineation was less.Conclusions:The automatic delineation model based on convolutional neural network is feasible for CTV and related OAR of postoperative radiotherapy for prostate cancer. The automatic segmentation ability of tumor bed area still needs to be improved.