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基于 atlas 和深度学习的乳腺癌多器官和临床靶区自动分割的临床评估。

Clinical evaluation of atlas- and deep learning-based automatic segmentation of multiple organs and clinical target volumes for breast cancer.

机构信息

Department of Radiation Oncology, Yonsei Cancer Center, Yonsei University College of Medicine, Seoul, South Korea.

Department of Radiation Oncology, Ajou University School of Medicine, Suwon, South Korea.

出版信息

Radiother Oncol. 2020 Dec;153:139-145. doi: 10.1016/j.radonc.2020.09.045. Epub 2020 Sep 28.

Abstract

Manual segmentation is the gold standard method for radiation therapy planning; however, it is time-consuming and prone to inter- and intra-observer variation, giving rise to interests in auto-segmentation methods. We evaluated the feasibility of deep learning-based auto-segmentation (DLBAS) in comparison to commercially available atlas-based segmentation solutions (ABAS) for breast cancer radiation therapy. This study used contrast-enhanced planning computed tomography scans from 62 patients with breast cancer who underwent breast-conservation surgery. Contours of target volumes (CTVs), organs, and heart substructures were generated using two commercial ABAS solutions and DLBAS using fully convolutional DenseNet. The accuracy of the segmentation was assessed using 14 test patients using the Dice Similarity Coefficient and Hausdorff Distance referencing the expert contours. A sensitivity analysis was performed using non-contrast planning CT from 14 additional patients. Compared to ABAS, the proposed DLBAS model yielded more consistent results and the highest average Dice Similarity Coefficient values and lowest Hausdorff Distances, especially for CTVs and the substructures of the heart. ABAS showed limited performance in soft-tissue-based regions, such as the esophagus, cardiac arteries, and smaller CTVs. The results of sensitivity analysis between contrast and non-contrast CT test sets showed little difference in the performance of DLBAS and conversely, a large discrepancy for ABAS. The proposed DLBAS algorithm was more consistent and robust in its performance than ABAS across the majority of structures when examining both CTVs and normal organs. DLBAS has great potential to aid a key process in the radiation therapy workflow, helping optimise and reduce the clinical workload.

摘要

手动分割是放射治疗计划的金标准方法;然而,它既耗时又容易受到观察者内和观察者间的变化的影响,因此人们对自动分割方法产生了兴趣。我们评估了基于深度学习的自动分割(DLBAS)与商业上可用的图谱基分割解决方案(ABAS)在乳腺癌放射治疗中的可行性。本研究使用了 62 名接受保乳手术的乳腺癌患者的对比增强计划计算机断层扫描。使用两种商业 ABAS 解决方案和使用全卷积 DenseNet 的 DLBAS 生成目标体积(CTV)、器官和心脏亚结构的轮廓。使用 14 名测试患者的 Dice 相似系数和 Hausdorff 距离评估分割的准确性,参考专家轮廓。对来自另外 14 名患者的非对比计划 CT 进行了敏感性分析。与 ABAS 相比,所提出的 DLBAS 模型产生了更一致的结果,平均 Dice 相似系数值最高,Hausdorff 距离最低,特别是对于 CTV 和心脏亚结构。ABAS 在基于软组织的区域(如食管、心脏动脉和较小的 CTV)的性能有限。对比和非对比 CT 测试集之间的敏感性分析结果表明,DLBAS 的性能差异不大,而 ABAS 的性能差异很大。在所检查的 CTV 和正常器官中,大多数结构中,与 ABAS 相比,所提出的 DLBAS 算法在性能上更一致、更稳健。DLBAS 有可能帮助放射治疗工作流程中的一个关键过程,帮助优化和减少临床工作量。

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