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首页> 外文期刊>Journal of Radiation Research: Official Organ of the Japan Radiation Research Society >A convolutional neural network approach for IMRT dose distribution prediction in prostate cancer patients
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A convolutional neural network approach for IMRT dose distribution prediction in prostate cancer patients

机译:前列腺癌患者IMRT剂量分布预测的卷积神经网络方法

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摘要

The purpose of the study was to compare a 3D convolutional neural network (CNN) with the conventional machine learning method for predicting intensity-modulated radiation therapy (IMRT) dose distribution using only contours in prostate cancer. In this study, which included 95 IMRT-treated prostate cancer patients with available dose distributions and contours for planning target volume (PTVs) and organs at risk (OARs), a supervised-learning approach was used for training, where the dose for a voxel set in the dataset was defined as the label. The adaptive moment estimation algorithm was employed for optimizing a 3D U-net similar network. Eighty cases were used for the training and validation set in 5-fold cross-validation, and the remaining 15 cases were used as the test set. The predicted dose distributions were compared with the clinical dose distributions, and the model performance was evaluated by comparison with RapidPlan (TM). Dose-volume histogram (DVH) parameters were calculated for each contour as evaluation indexes. The mean absolute errors (MAE) with one standard deviation (1SD) between the clinical and CNN-predicted doses were 1.10% +/- 0.64%, 2.50% +/- 1.17%, 2.04% +/- 1.40%, and 2.08% +/- 1.99% for D-2, D-98 in PTV-1 and V-65 in rectum and V-65 in bladder, respectively, whereas the MAEs with 1SD between the clinical and the RapidPlan (TM)-generated doses were 1.01% +/- 0.66%, 2.15% +/- 1.25%, 5.34% +/- 2.13% and 3.04% +/- 1.79%, respectively. Our CNN model could predict dose distributions that were superior or comparable with that generated by RapidPlan (TM), suggesting the potential of CNN in dose distribution prediction.
机译:该研究的目的是将3D卷积神经网络(CNN)与传统的机器学习方法进行比较,以预测仅使用前列腺癌的轮廓预测强度调制的放射治疗(IMRT)剂量分布。在本研究中,其中包括95名IMRT治疗的前列腺癌患者可用剂量分布和用于规划目标体积(PTV)和风险(OAR)的器官(OAR)的轮廓,用于培训的监督学习方法,其中voxel的剂量在数据集中设置被定义为标签。采用自适应力矩估计算法来优化3D U-Net类似网络。八十例案例用于5倍交叉验证中的培训和验证,剩余的15例用作测试集。将预测的剂量分布与临床剂量分布进行比较,并通过与RapidPlan(TM)进行比较来评估模型性能。为每个轮廓计算给剂量直方图(DVH)参数作为评估指标。临床和CNN预测剂量之间具有一个标准偏差(1SD)的平均绝对误差(MAE)为1.10%+/- 0.64%,2.50%+/- 1.17%,2.04%+/- 1.40%和2.08% D-2,D-1.99%的PTV-1和V-65中的D-1.99%分别在膀胱中的直肠和V-65,而临床和临床(TM)之间的1SD的MAES 1.01%+/- 0.66%,2.15%+/- 1.25%,分别为5.34%+/- 2.13%和3.04%+/- 1.79%。我们的CNN模型可以预测与RatchPlan(TM)产生的优越或比较的剂量分布,表明CNN在剂量分布预测中的电位。

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