Catharina Hospital, Department of Radiation Oncology, Eindhoven, The Netherlands.
Catharina Hospital, Department of Radiation Oncology, Eindhoven, The Netherlands; Technical University Eindhoven, Departments of Applied Physics and Electrical Engineering, Eindhoven, The Netherlands.
Acta Oncol. 2024 Jun 20;63:477-481. doi: 10.2340/1651-226X.2024.34986.
Deep learning (DL) models for auto-segmentation in radiotherapy have been extensively studied in retrospective and pilot settings. However, these studies might not reflect the clinical setting. This study compares the use of a clinically implemented in-house trained DL segmentation model for breast cancer to a previously performed pilot study to assess possible differences in performance or acceptability.
Sixty patients with whole breast radiotherapy, with or without an indication for locoregional radiotherapy were included. Structures were qualitatively scored by radiotherapy technologists and radiation oncologists. Quantitative evaluation was performed using dice-similarity coefficient (DSC), 95th percentile of Hausdorff Distance (95%HD) and surface DSC (sDSC), and time needed for generating, checking, and correcting structures was measured.
Ninety-three percent of all contours in clinic were scored as clinically acceptable or usable as a starting point, comparable to 92% achieved in the pilot study. Compared to the pilot study, no significant changes in time reduction were achieved for organs at risks (OARs). For target volumes, significantly more time was needed compared to the pilot study for patients including lymph node levels 1-4, although time reduction was still 33% compared to manual segmentation. Almost all contours have better DSC and 95%HD than inter-observer variations. Only CTVn4 scored worse for both metrics, and the thyroid had a higher 95%HD value.
The use of the DL model in clinical practice is comparable to the pilot study, showing high acceptability rates and time reduction.
深度学习(DL)模型在放射治疗中的自动分割已经在回顾性和试点研究中得到了广泛的研究。然而,这些研究可能无法反映临床环境。本研究比较了在临床实施的内部训练的 DL 分割模型在乳腺癌中的应用,以及之前进行的一项试点研究,以评估性能或可接受性方面的差异。
共纳入 60 例接受全乳放疗的患者,包括有或无局部区域放疗适应证的患者。放疗技术人员和放射肿瘤学家对结构进行定性评分。使用 Dice 相似系数(DSC)、Hausdorff 距离 95%分位数(95%HD)和表面 DSC(sDSC)进行定量评估,并测量生成、检查和校正结构所需的时间。
93%的临床轮廓被评为临床可接受或可用的起点,与试点研究中达到的 92%相似。与试点研究相比,危及器官(OARs)的时间减少没有显著变化。对于靶体积,与试点研究相比,包括淋巴结 1-4 水平的患者需要更多的时间,尽管与手动分割相比,时间减少了 33%。几乎所有的轮廓都有比观察者间变异更好的 DSC 和 95%HD。只有 CTVn4 在这两个指标上的得分都较差,而甲状腺的 95%HD 值较高。
DL 模型在临床实践中的应用与试点研究相似,具有较高的可接受性和时间减少。