Oncology Department, Hefei First People's Hospital, Hefei, China.
National Synchrotron Radiation Laboratory, University of Science and Technology of China, Hefei, China.
J Appl Clin Med Phys. 2024 Feb;25(2):e14153. doi: 10.1002/acm2.14153. Epub 2023 Sep 12.
This research aimed to develop a prediction model to assess bladder wall dosimetry during radiotherapy for patients with pelvic tumors, thereby facilitating the refinement and evaluation of radiotherapy treatment plans to mitigate bladder toxicity.
Radiotherapy treatment plans of 49 rectal cancer patients and 45 gynecologic cancer patients were collected, and multiple linear regression analyses were used to generate prediction models for bladder wall dose parameters ( , ). These models were based on the multiscale spatial relationship between the planning target volume (PTV) and the bladder or bladder wall. The proportion of bladder or bladder wall volume overlapped by the different distance expansions of the PTV was used as an indicator of the multiscale spatial relationship. The accuracy of these models was verified in a cohort of 12 new patients, with further refinement of radiotherapy treatment plans using the predicted values as optimization parameters. Model accuracy was assessed using root mean square error (RMSE) and mean percentage error (MPE).
Models derived from individual disease data outperformed those derived from combined datasets. Predicted bladder wall dose parameters were accurate, with the majority of initial calculated values for new patients falling within the 95% confidence interval of the model predictions. There was a robust correlation between the predicted and actual dose metrics, with a correlation coefficient of 0.943. Using the predicted values to optimize treatment plans significantly reduced bladder wall dose (p 0.001), with bladder wall and decreasing by 2.27±0.80 Gy (5.8%±1.8%) and 2.96±2.05 cm (7.9%±5.4%), respectively.
The formulated prediction model provides a valuable tool for predicting and minimizing bladder wall dose and for optimizing and evaluating radiotherapy treatment plans for pelvic tumor patients. This approach holds promise for reducing bladder toxicity and potentially improving patient outcomes.
本研究旨在开发一种预测模型,以评估盆腔肿瘤患者放射治疗期间的膀胱壁剂量,从而有助于细化和评估放射治疗计划,以减轻膀胱毒性。
收集了 49 例直肠癌患者和 45 例妇科癌症患者的放射治疗计划,并使用多元线性回归分析生成了膀胱壁剂量参数( 、 )的预测模型。这些模型基于计划靶区(PTV)与膀胱或膀胱壁之间的多尺度空间关系。使用 PTV 的不同距离扩展所覆盖的膀胱或膀胱壁体积的比例作为多尺度空间关系的指标。在 12 名新患者的队列中验证了这些模型的准确性,并使用预测值作为优化参数进一步细化放射治疗计划。使用均方根误差(RMSE)和平均百分比误差(MPE)评估模型准确性。
来自个体疾病数据的模型优于来自组合数据集的模型。预测的膀胱壁剂量参数准确,新患者的初始计算值大部分落在模型预测的 95%置信区间内。预测值与实际剂量指标之间存在很强的相关性,相关系数为 0.943。使用预测值优化治疗计划可显著降低膀胱壁剂量(p 0.001),膀胱壁 和 分别降低 2.27±0.80 Gy(5.8%±1.8%)和 2.96±2.05 cm(7.9%±5.4%)。
所制定的预测模型为预测和最小化膀胱壁剂量以及优化和评估盆腔肿瘤患者的放射治疗计划提供了有价值的工具。这种方法有望降低膀胱毒性,并可能改善患者的预后。