National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing 100021, China; School of Physics and Technology, Wuhan University, Wuhan 430072, China.
National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing 100021, China.
Radiother Oncol. 2024 Nov;200:110525. doi: 10.1016/j.radonc.2024.110525. Epub 2024 Sep 6.
Fast and automated generation of treatment plans is desirable for magnetic resonance imaging (MRI)-guided adaptive radiotherapy (MRIgART). This study proposed a novel patient-specific auto-planning method and validated its feasibility in improving the existing online planning workflow.
Data from 40 patients with prostate cancer were collected retrospectively. A patient-specific auto-planning method was proposed to generate adaptive treatment plans. First, a population dose-prediction model (M) was trained using data from previous patients. Second, a patient-specific model (M) was created for each new patient by fine-tuning M with the patient's data. Finally, an auto plan was optimized using the parameters derived from the predicted dose distribution by M. The auto plans were compared with manual plans in terms of plan quality, efficiency, dosimetric verification, and clinical evaluation.
The auto plans improved target coverage, reduced irradiation to the rectum, and provided comparable protection to other organs-at-risk. Target coverage for the planning target volume (+0.61 %, P = 0.023) and clinical target volume 4000 (+1.60 %, P < 0.001) increased. V (-1.06 %, P = 0.004) and V (-2.49 %, P < 0.001) to the rectal wall and V (-2.82 %, P = 0.012) to the rectum were significantly reduced. The auto plans required less planning time (-3.92 min, P = 0.001), monitor units (-46.48, P = 0.003), and delivery time (-0.26 min, P = 0.004), and their gamma pass rates (3 %/2 mm) were higher (+0.47 %, P = 0.014).
The proposed patient-specific auto-planning method demonstrated a robust level of automation and was able to generate high-quality treatment plans in less time for MRIgART in prostate cancer.
快速、自动化生成治疗计划对于磁共振引导自适应放疗(MRIgART)是非常理想的。本研究提出了一种新的个体化自动计划方法,并验证了其在改进现有在线计划流程方面的可行性。
回顾性收集了 40 例前列腺癌患者的数据。提出了一种个体化自动计划方法来生成自适应治疗计划。首先,使用以前患者的数据训练一个群体剂量预测模型(M)。其次,通过用患者数据微调 M,为每个新患者创建一个特定于患者的模型(M)。最后,使用 M 预测的剂量分布参数来优化自动计划。从计划质量、效率、剂量验证和临床评估方面比较自动计划和手动计划。
自动计划改善了靶区覆盖,减少了直肠照射,为其他危及器官提供了类似的保护。计划靶区体积(+0.61%,P=0.023)和临床靶区体积 4000(+1.60%,P<0.001)增加。直肠壁 V(-1.06%,P=0.004)和直肠 V(-2.49%,P<0.001)显著减少。自动计划所需的计划时间(-3.92 分钟,P=0.001)、监测单位(-46.48,P=0.003)和输送时间(-0.26 分钟,P=0.004)均减少,其伽玛通过率(3%/2mm)更高(+0.47%,P=0.014)。
所提出的个体化自动计划方法具有强大的自动化水平,能够在更短的时间内为前列腺癌 MRIgART 生成高质量的治疗计划。