Kajikawa Tomohiro, Kadoya Noriyuki, Tanaka Shohei, Nemoto Hikaru, Takahashi Noriyoshi, Chiba Takahito, Ito Kengo, Katsuta Yoshiyuki, Dobashi Suguru, Takeda Ken, Yamada Kei, Jingu Keiichi
Department of Radiation Oncology, Tohoku University Graduate School of Medicine, Sendai, Japan; Department of Radiology, Graduate School of Medical Science, Kyoto Prefectural University of Medicine, Kyoto, Japan.
Department of Radiation Oncology, Tohoku University Graduate School of Medicine, Sendai, Japan.
Phys Med. 2020 Dec;80:186-192. doi: 10.1016/j.ejmp.2020.11.002. Epub 2020 Nov 11.
This study aimed to develop a deep convolutional neural network (CNN)-based dose distribution conversion approach for the correction of the influence of a magnetic field for online MR-guided adaptive radiotherapy.
Our model is based on DenseNet and consists of two 2D input channels and one 2D output channel. These three types of data comprise dose distributions without a magnetic field (uncorrected), electron density (ED) maps, and dose distributions with a magnetic field. These data were generated as follows: both types of dose distributions were created using 15-field IMRT in the same conditions except for the presence or absence of a magnetic field with the GPU Monte Carlo dose in Monaco version 5.4; ED maps were acquired with planning CT images using a clinical CT-to-ED table at our institution. Data for 50 prostate cancer patients were used; 30 patients were allocated for training, 10 for validation, and 10 for testing using 4-fold cross-validation based on rectum gas volume. The accuracy of the model was evaluated by comparing 2D gamma-indexes against the dose distributions in each irradiation field with a magnetic field (true).
The gamma indexes in the body for CNN-corrected uncorrected dose against the true dose were 94.95% ± 4.69% and 63.19% ± 3.63%, respectively. The gamma indexes with 2%/2-mm criteria were improved by 10% in most test cases (99.36%).
Our results suggest that the CNN-based approach can be used to correct the dose-distribution influences with a magnetic field in prostate cancer treatment.
本研究旨在开发一种基于深度卷积神经网络(CNN)的剂量分布转换方法,用于校正磁场对在线磁共振引导下自适应放射治疗的影响。
我们的模型基于DenseNet,由两个二维输入通道和一个二维输出通道组成。这三种类型的数据包括无磁场的剂量分布(未校正)、电子密度(ED)图和有磁场的剂量分布。这些数据的生成方式如下:两种剂量分布均使用15野调强放疗在相同条件下创建,不同之处在于是否存在磁场,采用Monaco版本5.4中的GPU蒙特卡罗剂量计算;ED图通过使用我们机构的临床CT到ED表格从计划CT图像中获取。使用了50例前列腺癌患者的数据;基于直肠气体体积采用4折交叉验证,将30例患者分配用于训练,10例用于验证,10例用于测试。通过将二维伽马指数与每个照射野中有磁场的剂量分布(真实值)进行比较来评估模型的准确性。
针对真实剂量,CNN校正后的未校正剂量在体内的伽马指数分别为94.95%±4.69%和63.19%±3.63%。在大多数测试病例(99.36%)中,2%/2毫米标准下的伽马指数提高了10%。
我们的结果表明,基于CNN的方法可用于校正前列腺癌治疗中磁场对剂量分布的影响。