Department of Radiation Oncology, State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Guangdong Key Laboratory of Nasopharyngeal Carcinoma Diagnosis and Therapy, Sun Yat-sen University Cancer Center, Guangzhou, 510060, China.
School of Biomedical Engineering, Southern Medical University, Guangzhou, 510515, China.
Radiat Oncol. 2023 Jul 4;18(1):110. doi: 10.1186/s13014-023-02287-4.
Current intensity-modulated radiation therapy (IMRT) treatment planning is still a manual and time/resource consuming task, knowledge-based planning methods with appropriate predictions have been shown to enhance the plan quality consistency and improve planning efficiency. This study aims to develop a novel prediction framework to simultaneously predict dose distribution and fluence for nasopharyngeal carcinoma treated with IMRT, the predicted dose information and fluence can be used as the dose objectives and initial solution for an automatic IMRT plan optimization scheme, respectively.
We proposed a shared encoder network to simultaneously generate dose distribution and fluence maps. The same inputs (three-dimensional contours and CT images) were used for both dose distribution and fluence prediction. The model was trained with datasets of 340 nasopharyngeal carcinoma patients (260 cases for training, 40 cases for validation, 40 cases for testing) treated with nine-beam IMRT. The predicted fluence was then imported back to treatment planning system to generate the final deliverable plan. Predicted fluence accuracy was quantitatively evaluated within projected planning target volumes in beams-eye-view with 5 mm margin. The comparison between predicted doses, predicted fluence generated doses and ground truth doses were also conducted inside patient body.
The proposed network successfully predicted similar dose distribution and fluence maps compared with ground truth. The quantitative evaluation showed that the pixel-based mean absolute error between predicted fluence and ground truth fluence was 0.53% ± 0.13%. The structural similarity index also showed high fluence similarity with values of 0.96 ± 0.02. Meanwhile, the difference in the clinical dose indices for most structures between predicted dose, predicted fluence generated dose and ground truth dose were less than 1 Gy. As a comparison, the predicted dose achieved better target dose coverage and dose hot spot than predicted fluence generated dose compared with ground truth dose.
We proposed an approach to predict 3D dose distribution and fluence maps simultaneously for nasopharyngeal carcinoma patients. Hence, the proposed method can be potentially integrated in a fast automatic plan generation scheme by using predicted dose as dose objectives and predicted fluence as a warm start.
目前,强度调制放射治疗(IMRT)的治疗计划仍然是一项手动且耗费时间和资源的任务,基于知识的规划方法具有较好的预测能力,已被证明可以提高计划质量的一致性并提高计划效率。本研究旨在开发一种新的预测框架,以同时预测接受 IMRT 治疗的鼻咽癌的剂量分布和注量,预测的剂量信息和注量可分别用作自动 IMRT 计划优化方案的剂量目标和初始解。
我们提出了一种共享编码器网络,以同时生成剂量分布和注量图。剂量分布和注量预测使用相同的输入(三维轮廓和 CT 图像)。该模型使用 340 名接受九束 IMRT 治疗的鼻咽癌患者(260 例用于训练,40 例用于验证,40 例用于测试)的数据集进行训练。然后将预测的注量导入治疗计划系统,以生成最终可交付的计划。在具有 5mm 边界的射野中,在计划靶区内部定量评估预测注量的准确性。还在患者体内比较了预测剂量、预测注量生成的剂量和真实剂量之间的差异。
所提出的网络成功地预测了与真实情况相似的剂量分布和注量图。定量评估表明,预测注量与真实注量之间的像素级平均绝对误差为 0.53%±0.13%。结构相似性指数也显示出很高的注量相似性,值为 0.96±0.02。同时,大多数结构的预测剂量、预测注量生成的剂量和真实剂量之间的临床剂量指标差异小于 1Gy。作为比较,与真实剂量相比,预测剂量在靶区剂量覆盖和热点方面优于预测注量生成的剂量。
我们提出了一种同时预测鼻咽癌患者 3D 剂量分布和注量图的方法。因此,该方法可以通过使用预测剂量作为剂量目标和预测注量作为预热来潜在地集成在快速自动计划生成方案中。