Institute of Modern Physics, Fudan University, Shanghai, China.
Institute of Radiation Medicine, Fudan University, Shanghai, China.
J Xray Sci Technol. 2024;32(4):1199-1208. doi: 10.3233/XST-230412.
This study aims to explore the feasibility of DenseNet in the establishment of a three-dimensional (3D) gamma prediction model of IMRT based on the actual parameters recorded in the log files during delivery.
A total of 55 IMRT plans (including 367 fields) were randomly selected. The gamma analysis was performed using gamma criteria of 3% /3 mm (Dose Difference/Distance to Agreement), 3% /2 mm, 2% /3 mm, and 2% /2 mm with a 10% dose threshold. In addition, the log files that recorded the gantry angle, monitor units (MU), multi-leaf collimator (MLC), and jaws position during delivery were collected. These log files were then converted to MU-weighted fluence maps as the input of DenseNet, gamma passing rates (GPRs) under four different gamma criteria as the output, and mean square errors (MSEs) as the loss function of this model.
Under different gamma criteria, the accuracy of a 3D GPR prediction model decreased with the implementation of stricter gamma criteria. In the test set, the mean absolute error (MAE) of the prediction model under the gamma criteria of 3% /3 mm, 2% /3 mm, 3% /2 mm, and 2% /2 mm was 1.41, 1.44, 3.29, and 3.54, respectively; the root mean square error (RMSE) was 1.91, 1.85, 4.27, and 4.40, respectively; the Sr was 0.487, 0.554, 0.573, and 0.506, respectively. There was a correlation between predicted and measured GPRs (P < 0.01). Additionally, there was no significant difference in the accuracy between the validation set and the test set. The accuracy in the high GPR group was high, and the MAE in the high GPR group was smaller than that in the low GPR group under four different gamma criteria.
In this study, a 3D GPR prediction model of patient-specific QA using DenseNet was established based on log files. As an auxiliary tool for 3D dose verification in IMRT, this model is expected to improve the accuracy and efficiency of dose validation.
本研究旨在探索基于治疗中记录的日志文件中的实际参数,利用 DenseNet 建立适形调强放射治疗(IMRT)三维(3D)伽马预测模型的可行性。
本研究共选取了 55 个 IMRT 计划(包含 367 个射野)。采用 3%/3mm(剂量差异/协议距离)、3%/2mm、2%/3mm 和 2%/2mm 的伽马标准进行伽马分析,以 10%剂量阈值为截断值。此外,还收集了治疗中记录机架角度、MU、多叶准直器(MLC)和准直器位置的日志文件。将这些日志文件转换为 MU 加权剂量率图作为 DenseNet 的输入,以 4 种不同伽马标准下的伽马通过率(GPR)作为输出,并以均方误差(MSE)作为该模型的损失函数。
在不同的伽马标准下,随着伽马标准的实施变得更加严格,3D GPR 预测模型的准确性会降低。在测试集中,伽马标准为 3%/3mm、2%/3mm、3%/2mm 和 2%/2mm 时,预测模型的平均绝对误差(MAE)分别为 1.41、1.44、3.29 和 3.54;均方根误差(RMSE)分别为 1.91、1.85、4.27 和 4.40;Sr 分别为 0.487、0.554、0.573 和 0.506。预测的 GPR 与实测的 GPR 之间存在相关性(P<0.01)。此外,验证集和测试集的准确性没有显著差异。在高 GPR 组中,该模型的预测精度较高,且在 4 种不同的伽马标准下,高 GPR 组的 MAE 均小于低 GPR 组。
本研究基于日志文件,利用 DenseNet 建立了一种用于患者特定质量保证(QA)的 3D GPR 预测模型。作为 IMRT 三维剂量验证的辅助工具,该模型有望提高剂量验证的准确性和效率。