Department of Radiation Oncology, Peking University Third Hospital, Beijing, China.
Center for Data Science, Academy for Advanced Interdisciplinary Studies, Peking University, Beijing, China.
J Appl Clin Med Phys. 2022 Jun;23(6):e13583. doi: 10.1002/acm2.13583. Epub 2022 Mar 9.
To develop a 3D-Unet dose prediction model to predict the three-dimensional dose distribution of volumetric modulated arc therapy (VMAT) for cervical cancer and test the dose prediction performance of the model in endometrial cancer to explore the feasibility of model generalization.
One hundred and seventeen cases of cervical cancer and 20 cases of endometrial cancer treated with VMAT were used for the model training, validation, and test. The prescribed dose was 50.4 Gy in 28 fractions. Eight independent channels of contoured structures were input to the model, and the dose distribution was used as the output of the model. The 3D-Unet prediction model was trained and validated on the training set (n = 86) and validation set (n = 11), respectively. Then the model was tested on the test set (n = 20) of cervical cancer and endometrial cancer, respectively. The results between clinical dose distribution and predicted dose distribution were compared in the following aspects: (a) the mean absolute error (MAE) within the body, (b) the Dice similarity coefficients (DSCs) under different isodose volumes, (c) the dosimetric indexes including the mean dose (D ), the received dose of 2 cm (D , the percentage volume of receiving 40 Gy dose of organs-at-risk (V ), planning target volume (PTV) D , and homogeneity index (HI), (d) dose-volume histograms (DVHs).
The model can accurately predict the dose distribution of the VMAT plan for cervical cancer and endometrial cancer. The overall average MAE and maximum MAE for cervical cancer were 2.43 ± 3.17% and 3.16 ± 4.01% of the prescribed dose, respectively, and for endometrial cancer were 2.70 ± 3.54% and 3.85 ± 3.11%. The average DSCs under different isodose volumes is above 0.9. The predicted dosimetric indexes and DVHs are equivalent to the clinical dose for both cervical cancer and endometrial cancer, and there is no statistically significant difference.
A 3D-Unet dose prediction model was developed for VMAT of cervical cancer, which can predict the dose distribution accurately for cervical cancer. The model can also be generalized for endometrial cancer with good performance.
开发一种 3D-Unet 剂量预测模型,以预测宫颈癌容积调强弧形治疗(VMAT)的三维剂量分布,并在子宫内膜癌中测试该模型的剂量预测性能,以探索模型泛化的可行性。
共纳入 117 例宫颈癌和 20 例子宫内膜癌 VMAT 治疗病例,用于模型训练、验证和测试。处方剂量为 50.4Gy/28 次。将 8 个独立勾画结构的通道输入到模型中,将剂量分布作为模型的输出。在训练集(n=86)和验证集(n=11)上分别对 3D-Unet 预测模型进行训练和验证。然后分别在宫颈癌和子宫内膜癌的测试集(n=20)上对模型进行测试。比较临床剂量分布和预测剂量分布的结果如下:(a)体内心脏的平均绝对误差(MAE);(b)不同等剂量体积下的 Dice 相似系数(DSC);(c)包括平均剂量(D)、器官受照剂量 2cm 处(D)、接受 40Gy 剂量的器官体积百分比(V)、计划靶区(PTV)D 和均匀性指数(HI)在内的剂量学指标;(d)剂量体积直方图(DVHs)。
该模型能够准确预测宫颈癌和子宫内膜癌 VMAT 计划的剂量分布。宫颈癌的整体平均 MAE 和最大 MAE 分别为处方剂量的 2.43%±3.17%和 3.16%±4.01%,子宫内膜癌的分别为 2.70%±3.54%和 3.85%±3.11%。不同等剂量体积下的平均 DSC 均在 0.9 以上。预测的剂量学指标和 DVHs 与宫颈癌和子宫内膜癌的临床剂量相当,无统计学差异。
开发了一种用于宫颈癌 VMAT 的 3D-Unet 剂量预测模型,能够准确预测宫颈癌的剂量分布。该模型也可以很好地推广到子宫内膜癌。