Department of Radiation Oncology, Erasmus MC Cancer Institute, Rotterdam, The Netherlands.
Department of Radiation Oncology, Erasmus MC Cancer Institute, Rotterdam, The Netherlands.
Radiother Oncol. 2022 May;170:169-175. doi: 10.1016/j.radonc.2022.02.022. Epub 2022 Feb 24.
Image-guided adaptive brachytherapy (IGABT) is a key component in the treatment of cervical cancer, but the nature of the clinical workflow makes it vulnerable to suboptimal plans, as the theoretical optimal plan depends heavily on organ configuration. Patient anatomy-based quality-assurance (QA) with overlap volume histograms (OVHs) is a promising tool to detect such suboptimal plans, and in this analysis its suitability as a multi-institutional clinical QA tool is investigated.
A total of 223 plans of 145 patients treated in accordance with the current state-of-the-art IGABT protocols from UMC Utrecht (UMCU) and Erasmus MC (EMC) were included. Machine-learning models were trained to predict dose D to bladder, rectum, sigmoid and small bowel with the help of OVHs. For this strategy, points are sampled on the organs-at-risk (OARs), and the distances of the sampled points to the target are computed and combined in a histogram. Machine-learning models can then be trained to predict dose-volume histograms (DVHs) for unseen data. Single-center model robustness to needle use and applicator type and multi-center model translatability were investigated. Performance of models was assessed by the difference between planned (clinical) and predicted D values.
Intra-validation of UMCU data demonstrated OVH model robustness to needle use and applicator type. The model trained on UMCU data was found to be robust within the same protocol on EMC data, for all investigated OARs. Mean squared error between planned and predicted D values of OARs ranged between 0.13 and 0.40 Gy within the same protocol, indicating model translatability. For the former protocol cohort of Erasmus MC large deviations were found between the planned and predicted D values, indicating plan deviation from protocol. Mean squared error for this cohort ranged from 0.84 to 4.71 Gy.
OVH-based models can provide a solid basis for multi-institutional QA when trained on a sufficiently strict protocol. Further research will quantify the model's impact as a QA tool.
图像引导自适应近距离放射治疗(IGABT)是宫颈癌治疗的关键组成部分,但临床工作流程的性质使其容易出现不理想的治疗计划,因为理论上的最佳计划严重依赖于器官结构。基于患者解剖结构的质量保证(QA)与重叠体积直方图(OVH)是检测此类不理想计划的一种很有前途的工具,本分析旨在研究其作为多机构临床 QA 工具的适用性。
共纳入了 145 名患者的 223 份计划,这些患者均按照乌得勒支大学医学中心(UMCU)和伊拉斯谟医学中心(EMC)当前最先进的 IGABT 方案进行治疗。借助 OVH,我们训练了机器学习模型来预测膀胱、直肠、乙状结肠和小肠的剂量 D。对于这种策略,在危及器官(OAR)上采样点,计算采样点到靶区的距离,并将其组合在一个直方图中。然后,可以训练机器学习模型来预测未见数据的剂量体积直方图(DVH)。研究了单中心模型对针使用和施源器类型的稳健性以及多中心模型的可转移性。通过计划(临床)和预测 D 值之间的差异来评估模型的性能。
UMCU 数据的内部验证表明,OVH 模型对针使用和施源器类型具有稳健性。在 EMC 数据中,我们发现针对同一方案,在同一方案中,基于 UMCU 数据训练的模型对所有研究的 OAR 均具有稳健性。同一方案中 OAR 计划和预测 D 值之间的均方误差介于 0.13 至 0.40Gy 之间,表明模型具有可转移性。对于埃拉斯谟 MC 的前一个协议队列,发现计划和预测的 D 值之间存在较大偏差,表明计划偏离了协议。该队列的均方误差范围为 0.84 至 4.71Gy。
当在严格的协议上进行训练时,基于 OVH 的模型可以为多机构 QA 提供坚实的基础。进一步的研究将量化模型作为 QA 工具的影响。