Department of Radiation Therapy, Zhejiang Provincial People's Hospital, Affiliated People's Hospital, Hangzhou Medical College, Hangzhou, 310014, Zhejiang, People's Republic of China.
Department of Nuclear Science and Technology, University of South China, Hengyang, 421001, Hunan, People's Republic of China.
Sci Rep. 2021 Nov 26;11(1):23002. doi: 10.1038/s41598-021-02330-y.
Radiotherapy requires the target area and the organs at risk to be contoured on the CT image of the patient. During the process of organs-at-Risk (OAR) of the chest and abdomen, the doctor needs to contour at each CT image. The delineations of large and varied shapes are time-consuming and laborious. This study aims to evaluate the results of two automatic contouring softwares on OARs definition of CT images of lung cancer and rectal cancer patients. The CT images of 15 patients with rectal cancer and 15 patients with lung cancer were selected separately, and the organs at risk were manually contoured by experienced physicians as reference structures. And then the same datasets were automatically contoured based on AiContour (version 3.1.8.0, Manufactured by Linking MED, Beijing, China) and Raystation (version 4.7.5.4, Manufactured by Raysearch, Stockholm, Sweden) respectively. Deep learning auto-segmentations and Atlas were respectively performed with AiContour and Raystation. Overlap index (OI), Dice similarity index (DSC) and Volume difference (D) were evaluated based on the auto-contours, and independent-sample t-test analysis is applied to the results. The results of deep learning auto-segmentations on OI and DSC were better than that of Atlas with statistical difference. There was no significant difference in D between the results of two software. With deep learning auto-segmentations, auto-contouring results of most organs in the chest and abdomen are good, and with slight modification, it can meet the clinical requirements for planning. With Atlas, auto-contouring results in most OAR is not as good as deep learning auto-segmentations, and only the auto-contouring results of some organs can be used clinically after modification.
放射治疗需要在患者的 CT 图像上勾勒出靶区和危及器官。在胸部和腹部的危及器官(OAR)过程中,医生需要在每个 CT 图像上进行勾勒。大而多样的形状的描绘既耗时又费力。本研究旨在评估两种自动勾画软件在勾画肺癌和直肠癌患者 CT 图像 OAR 方面的结果。分别选择了 15 例直肠癌和 15 例肺癌患者的 CT 图像,并由经验丰富的医生手动勾画危及器官作为参考结构。然后,分别基于 AiContour(版本 3.1.8.0,由北京 Linking MED 制造)和 Raystation(版本 4.7.5.4,由瑞典 Raysearch 制造)对相同的数据集进行自动勾画。分别使用 AiContour 和 Raystation 进行了深度学习自动分割和图谱。基于自动勾画结果评估了重叠指数(OI)、Dice 相似性指数(DSC)和体积差异(D),并对结果进行了独立样本 t 检验分析。深度学习自动分割在 OI 和 DSC 上的结果优于图谱,具有统计学差异。两种软件的结果在 D 上没有显著差异。使用深度学习自动分割,大多数胸部和腹部器官的自动勾画结果良好,只需稍加修改,即可满足计划的临床要求。使用图谱,大多数 OAR 的自动勾画结果不如深度学习自动分割,只有一些器官的自动勾画结果在修改后才能在临床上使用。