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一种利用深度学习预测直肠癌调强放射治疗三维剂量分布的方法。

A method of using deep learning to predict three-dimensional dose distributions for intensity-modulated radiotherapy of rectal cancer.

作者信息

Zhou Jieping, Peng Zhao, Song Yuchen, Chang Yankui, Pei Xi, Sheng Liusi, Xu X George

机构信息

Department of Radiation Oncology, The First Affiliated Hospital of USTC, Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei, Anhui, China.

National Synchrotron Radiation Laboratory, University of Science and Technology of China, Hefei, Anhui, China.

出版信息

J Appl Clin Med Phys. 2020 May;21(5):26-37. doi: 10.1002/acm2.12849. Epub 2020 Apr 13.

Abstract

PURPOSE

To develop and test a three-dimensional (3D) deep learning model for predicting 3D voxel-wise dose distributions for intensity-modulated radiotherapy (IMRT).

METHODS

A total of 122 postoperative rectal cancer cases treated by IMRT were considered in the study, of which 100 cases were randomly selected as the training-validating set and the remaining as the testing set. A 3D deep learning model named 3D U-Res-Net_B was constructed to predict 3D dose distributions. Eight types of 3D matrices from CT images, contoured structures, and beam configurations were fed into the independent input channel, respectively, and the 3D matrix of dose distributions was taken as the output to train the 3D model. The obtained 3D model was used to predict new 3D dose distributions. The predicted accuracy was evaluated in two aspects: (a) The dice similarity coefficients (DSCs) of different isodose volumes, the average dose difference of all voxels within the body, and 3%/5 mm global gamma passing rates of organs at risks (OARs) and planned target volume (PTV) were used to address the spatial correspondence between predicted and clinical delivered 3D dose distributions; (b) The dosimetric index (DI) including homogeneity index, conformity index, V , V for PTV and OARs between predicted and clinical truth were statistically analyzed with the paired-samples t test. The model was also compared with 3D U-Net and the same architecture model without beam configurations input (named as 3D U-Res-Net_O).

RESULTS

The 3D U-Res-Net_B model predicted 3D dose distributions accurately. For the 22 testing cases, the average prediction bias ranged from -1.94% to 1.58%, and the overall mean absolute errors (MAEs) was 3.92 ± 4.16%; there was no statistically significant difference for nearly all DIs. The model had a DSCs value above 0.9 for most isodose volumes, and global 3D gamma passing rates varying from 0.81 to 0.90 for PTV and OARs, clearly outperforming 3D U-Res-Net_O and being slightly superior to 3D U-Net.

CONCLUSIONS

This study developed a more general deep learning model by considering beam configurations input and achieved an accurate 3D voxel-wise dose prediction for rectal cancer treated by IMRT, a potentially easier clinical implementation for more comprehensive automatic planning.

摘要

目的

开发并测试一种三维(3D)深度学习模型,用于预测调强放射治疗(IMRT)的三维体素剂量分布。

方法

本研究纳入了122例接受IMRT治疗的直肠癌术后病例,其中100例被随机选作训练验证集,其余作为测试集。构建了一个名为3D U-Res-Net_B的3D深度学习模型来预测3D剂量分布。分别将来自CT图像、轮廓结构和射束配置的8种类型的3D矩阵输入独立的输入通道,并将剂量分布的3D矩阵作为输出用于训练3D模型。使用得到的3D模型预测新的3D剂量分布。从两个方面评估预测准确性:(a)不同等剂量体积的骰子相似系数(DSC)、体内所有体素的平均剂量差异以及危及器官(OAR)和计划靶体积(PTV)的3%/5毫米全局γ通过率,用于评估预测的和临床实际交付的3D剂量分布之间的空间对应关系;(b)采用配对样本t检验对预测值与临床真值之间的剂量学指标(DI),包括PTV和OAR的均匀性指数、适形性指数、V 、V进行统计学分析。该模型还与3D U-Net以及没有输入射束配置的相同架构模型(命名为3D U-Res-Net_O)进行了比较。

结果

3D U-Res-Net_B模型能够准确预测3D剂量分布。对于22例测试病例,平均预测偏差范围为-1.94%至1.58%,总体平均绝对误差(MAE)为3.92±4.16%;几乎所有DI均无统计学显著差异。该模型对于大多数等剂量体积的DSC值高于0.9,PTV和OAR的全局3Dγ通过率在0.81至0.90之间,明显优于3D U-Res-Net_O,略优于3D U-Net。

结论

本研究通过考虑输入射束配置开发了一种更通用的深度学习模型,实现了对IMRT治疗的直肠癌准确的三维体素剂量预测,为更全面的自动计划提供了潜在的更易于临床实施的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4710/7286006/f07983ddb35b/ACM2-21-26-g001.jpg

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