Institute of Medical Physics, School of Physics, University of Sydney, Sydney, Australia.
Ingham Institute for Applied Medical Research, Liverpool, Australia.
Phys Med Biol. 2021 Jan 26;66(3):035014. doi: 10.1088/1361-6560/abcb1d.
Radiotherapy has been shown to increase risks of cardiotoxicities for breast cancer patients. Automated delineation approaches are necessary for consistent and efficient assessment of cardiac doses in large, retrospective datasets, while patient-specific estimation of the uncertainty in these doses provides valuable additional data for modelling and understanding risks. In this work, we aim to validate the consistency of our previously described open-source software model for automatic cardiac delineation in the context of dose assessment, relative to manual contouring. We also extend our software to introduce a novel method to automatically quantify the uncertainty in cardiac doses based on expected inter-observer variability (IOV) in contouring. This method was applied to a cohort of 15 left-sided breast cancer patients treated in Denmark using modern tangential radiotherapy techniques. On each image set, the whole heart and left anterior descending coronary artery (LADCA) were contoured by nine independent experts; the range of doses to these nine volumes provided a reference for the dose uncertainties generated from the automatic method. Local and external atlas sets were used to test the method. Results give confidence in the consistency of automatic segmentations, with mean whole heart dose differences for local and external atlas sets of -0.20 ± 0.17 and -0.10 ± 0.14 Gy, respectively. Automatic estimates of uncertainties in doses are similar to those from IOV for both the whole heart and LADCA. Overall, this study confirms that our automated approach can be used to accurately assess cardiac doses, and the proposed method can provide a useful tool in estimating dose uncertainties.
放射治疗已被证明会增加乳腺癌患者的心脏毒性风险。在大型回顾性数据集,自动化勾画方法对于一致且高效地评估心脏剂量是必要的,而患者特定的剂量不确定性估计为建模和理解风险提供了有价值的附加数据。在这项工作中,我们旨在验证我们之前描述的用于剂量评估的自动心脏勾画的开源软件模型的一致性,与手动勾画相比。我们还扩展了我们的软件,引入了一种新的方法,基于勾画的预期观察者间变异性(IOV)自动量化心脏剂量的不确定性。该方法应用于丹麦使用现代切线放射治疗技术治疗的 15 例左侧乳腺癌患者的队列。在每个图像集中,由九位独立专家对整个心脏和左前降支冠状动脉(LADCA)进行勾画;九个体积的剂量范围为自动方法生成的剂量不确定性提供了参考。使用局部和外部图谱集来测试该方法。结果对自动分割的一致性充满信心,局部和外部图谱集的整个心脏平均剂量差异分别为-0.20±0.17 和-0.10±0.14 Gy。整个心脏和 LADCA 的剂量不确定性的自动估计与 IOV 相似。总体而言,这项研究证实了我们的自动化方法可以用于准确评估心脏剂量,并且所提出的方法可以在估计剂量不确定性方面提供有用的工具。