Wang Wentao, Sheng Yang, Wang Chunhao, Zhang Jiahan, Li Xinyi, Palta Manisha, Czito Brian, Willett Christopher G, Wu Qiuwen, Ge Yaorong, Yin Fang-Fang, Wu Q Jackie
Department of Radiation Oncology, Duke University Medical Center, Durham, NC, United States.
Medical Physics Graduate Program, Duke University, Durham, NC, United States.
Front Artif Intell. 2020 Sep 8;3:68. doi: 10.3389/frai.2020.00068. eCollection 2020.
Treatment planning for pancreas stereotactic body radiation therapy (SBRT) is a difficult and time-consuming task. In this study, we aim to develop a novel deep learning framework to generate clinical-quality plans by direct prediction of fluence maps from patient anatomy using convolutional neural networks (CNNs). Our proposed framework utilizes two CNNs to predict intensity-modulated radiation therapy fluence maps and generate deliverable plans: (1) Field-dose CNN predicts field-dose distributions in the region of interest using planning images and structure contours; (2) a fluence map CNN predicts the final fluence map per beam using the predicted field dose projected onto the beam's eye view. The predicted fluence maps were subsequently imported into the treatment planning system for leaf sequencing and final dose calculation (model-predicted plans). One hundred patients previously treated with pancreas SBRT were included in this retrospective study, and they were split into 85 training cases and 15 test cases. For each network, 10% of training data were randomly selected for model validation. Nine-beam benchmark plans with standardized target prescription and organ-at-risk constraints were planned by experienced clinical physicists and used as the gold standard to train the model. Model-predicted plans were compared with benchmark plans in terms of dosimetric endpoints, fluence map deliverability, and total monitor units. The average time for fluence-map prediction per patient was 7.1 s. Comparing model-predicted plans with benchmark plans, target mean dose, maximum dose (0.1 cc), and D absolute differences in percentages of prescription were 0.1, 3.9, and 2.1%, respectively; organ-at-risk mean dose and maximum dose (0.1 cc) absolute differences were 0.2 and 4.4%, respectively. The predicted plans had fluence map gamma indices (97.69 ± 0.96% vs. 98.14 ± 0.74%) and total monitor units (2,122 ± 281 vs. 2,265 ± 373) that were comparable to the benchmark plans. We develop a novel deep learning framework for pancreas SBRT planning, which predicts a fluence map for each beam and can, therefore, bypass the lengthy inverse optimization process. The proposed framework could potentially change the paradigm of treatment planning by harnessing the power of deep learning to generate clinically deliverable plans in seconds.
胰腺立体定向体部放射治疗(SBRT)的治疗计划是一项困难且耗时的任务。在本研究中,我们旨在开发一种新颖的深度学习框架,通过使用卷积神经网络(CNN)直接根据患者解剖结构预测通量图来生成临床质量的计划。我们提出的框架利用两个CNN来预测调强放射治疗通量图并生成可交付的计划:(1)射野剂量CNN使用计划图像和结构轮廓预测感兴趣区域的射野剂量分布;(2)通量图CNN使用投影到射野视角上的预测射野剂量预测每束光的最终通量图。随后将预测的通量图导入治疗计划系统进行叶片排序和最终剂量计算(模型预测计划)。这项回顾性研究纳入了100例先前接受胰腺SBRT治疗的患者,他们被分为85个训练病例和15个测试病例。对于每个网络,随机选择10%的训练数据用于模型验证。由经验丰富的临床物理学家制定具有标准化靶区处方和危及器官约束的九束基准计划,并将其用作训练模型的金标准。在剂量学终点、通量图可交付性和总监测单位方面,将模型预测计划与基准计划进行比较。每位患者通量图预测的平均时间为7.1秒。将模型预测计划与基准计划进行比较,靶区平均剂量、最大剂量(0.1 cc)以及处方百分比的绝对差异分别为0.1%、3.9%和2.1%;危及器官平均剂量和最大剂量(0.1 cc)的绝对差异分别为0.2%和4.4%。预测计划的通量图伽马指数(97.69±0.96%对98.14±0.74%)和总监测单位(2122±281对2265±373)与基准计划相当。我们开发了一种用于胰腺SBRT计划的新颖深度学习框架,该框架可预测每束光的通量图,因此可以绕过冗长的逆向优化过程。所提出的框架有可能通过利用深度学习的力量在几秒钟内生成临床可交付的计划来改变治疗计划的模式。