Department of Radiation Oncology, Yonsei Cancer Center, Yonsei University College of Medicine, 50-1 Yonsei-ro, Seodaemun-gu, Seoul, 03722, South Korea.
Department of Radiation Oncology, Asan Medical Center, University of Ulsan College of Medicine, Seoul, 05505, South Korea.
Radiat Oncol. 2021 Oct 14;16(1):203. doi: 10.1186/s13014-021-01923-1.
To study the performance of a proposed deep learning-based autocontouring system in delineating organs at risk (OARs) in breast radiotherapy with a group of experts.
Eleven experts from two institutions delineated nine OARs in 10 cases of adjuvant radiotherapy after breast-conserving surgery. Autocontours were then provided to the experts for correction. Overall, 110 manual contours, 110 corrected autocontours, and 10 autocontours of each type of OAR were analyzed. The Dice similarity coefficient (DSC) and Hausdorff distance (HD) were used to compare the degree of agreement between the best manual contour (chosen by an independent expert committee) and each autocontour, corrected autocontour, and manual contour. Higher DSCs and lower HDs indicated a better geometric overlap. The amount of time reduction using the autocontouring system was examined. User satisfaction was evaluated using a survey.
Manual contours, corrected autocontours, and autocontours had a similar accuracy in the average DSC value (0.88 vs. 0.90 vs. 0.90). The accuracy of autocontours ranked the second place, based on DSCs, and the first place, based on HDs among the manual contours. Interphysician variations among the experts were reduced in corrected autocontours, compared to variations in manual contours (DSC: 0.89-0.90 vs. 0.87-0.90; HD: 4.3-5.8 mm vs. 5.3-7.6 mm). Among the manual delineations, the breast contours had the largest variations, which improved most significantly with the autocontouring system. The total mean times for nine OARs were 37 min for manual contours and 6 min for corrected autocontours. The results of the survey revealed good user satisfaction.
The autocontouring system had a similar performance in OARs as that of the experts' manual contouring. This system can be valuable in improving the quality of breast radiotherapy and reducing interphysician variability in clinical practice.
用一组专家研究基于深度学习的自动勾画系统在勾画乳腺癌放射治疗中危及器官(OARs)的性能。
来自两个机构的 11 位专家对 10 例保乳手术后辅助放疗的病例进行了 9 个 OAR 的勾画。然后向专家提供自动勾画进行修正。总共分析了 110 次手动勾画、110 次修正的自动勾画和每种 OAR 的 10 次自动勾画。使用 Dice 相似系数(DSC)和 Hausdorff 距离(HD)来比较最佳手动轮廓(由独立专家委员会选择)与每个自动轮廓、修正的自动轮廓和手动轮廓的吻合程度。较高的 DSCs 和较低的 HDs 表明几何重叠度更好。检查了使用自动勾画系统减少的时间量。通过调查评估用户满意度。
手动轮廓、修正的自动轮廓和自动轮廓的平均 DSC 值(0.88 对 0.90 对 0.90)具有相似的准确性。基于 DSCs,自动轮廓的准确性排名第二,基于 HDs,手动轮廓排名第一。与手动轮廓相比,修正的自动轮廓减少了专家之间的个体间差异(DSC:0.89-0.90 对 0.87-0.90;HD:4.3-5.8mm 对 5.3-7.6mm)。在手动勾画中,乳房轮廓的变化最大,而使用自动勾画系统后变化最大。9 个 OAR 的总平均时间分别为手动轮廓 37 分钟和修正的自动轮廓 6 分钟。调查结果显示用户满意度良好。
自动勾画系统在 OARs 中的性能与专家的手动勾画相似。该系统在提高乳腺癌放射治疗质量和减少临床实践中个体间变异性方面具有重要价值。