Department of Medical Physics, Memorial Sloan Kettering Cancer Center, New York, NY, United States of America.
Department of Radiation Oncology, Peking University Cancer Hospital, Beijing, Beijing, People's Republic of China.
Phys Med Biol. 2021 Mar 4;66(6):065008. doi: 10.1088/1361-6560/abe2eb.
Automated segmentation of the esophagus is critical in image-guided/adaptive radiotherapy of lung cancer to minimize radiation-induced toxicities such as acute esophagitis. We have developed a semantic physics-based data augmentation method for segmenting the esophagus in both planning CT (pCT) and cone beam CT (CBCT) using 3D convolutional neural networks. One hundred and ninety-one cases with their pCTs and CBCTs from four independent datasets were used to train a modified 3D U-Net architecture and a multi-objective loss function specifically designed for soft-tissue organs such as the esophagus. Scatter artifacts and noises were extracted from week-1 CBCTs using a power-law adaptive histogram equalization method and induced to the corresponding pCT were reconstructed using CBCT reconstruction parameters. Moreover, we leveraged physics-based artifact induction in pCTs to drive the esophagus segmentation in real weekly CBCTs. Segmentations were evaluated using the geometric Dice coefficient and Hausdorff distance as well as dosimetrically using mean esophagus dose and D . Due to the physics-based data augmentation, our model trained just on the synthetic CBCTs was robust and generalizable enough to also produce state-of-the-art results on the pCTs and CBCTs, achieving Dice overlaps of 0.81 and 0.74, respectively. It is concluded that our physics-based data augmentation spans the realistic noise/artifact spectrum across patient CBCT/pCT data and can generalize well across modalities, eventually improving the accuracy of treatment setup and response analysis.
自动化分割食管对于肺癌的图像引导/自适应放疗至关重要,可以最大程度地减少放射性食管炎等急性毒性。我们已经开发了一种基于语义物理的数据增强方法,用于使用 3D 卷积神经网络在计划 CT(pCT)和锥形束 CT(CBCT)中分割食管。使用来自四个独立数据集的 191 个病例及其 pCT 和 CBCT 来训练修改后的 3D U-Net 架构和专门为食管等软组织器官设计的多目标损失函数。使用幂律自适应直方图均衡方法从第 1 周的 CBCT 中提取散射伪影和噪声,并使用 CBCT 重建参数将其引入到相应的 pCT 中。此外,我们利用基于物理的伪影诱导来推动真实每周 CBCT 中的食管分割。使用几何 Dice 系数和 Hausdorff 距离以及平均食管剂量和 D 进行分割评估。由于基于物理的数据增强,我们仅在合成 CBCT 上训练的模型足够稳健且具有通用性,因此也可以在 pCT 和 CBCT 上取得最先进的结果,分别达到 0.81 和 0.74 的 Dice 重叠。总之,我们的基于物理的数据增强涵盖了患者 CBCT/pCT 数据中的真实噪声/伪影谱,并可以很好地跨模式泛化,最终提高治疗设置和反应分析的准确性。