首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention >Deep Esophageal Clinical Target Volume Delineation Using Encoded 3D Spatial Context of Tumors, Lymph Nodes, and Organs At Risk
【24h】

Deep Esophageal Clinical Target Volume Delineation Using Encoded 3D Spatial Context of Tumors, Lymph Nodes, and Organs At Risk

机译:使用肿瘤,淋巴结和处于危险中的器官的编码3D空间上下文描述深食道临床目标体积

获取原文

摘要

Clinical target volume (CTV) delineation from radiotherapy computed tomography (RTCT) images is used to define the treatment areas containing the gross tumor volume (GTV) and/or sub-clinical malignant disease for radiotherapy (RT). High intra- and inter-user variability makes this a particularly difficult task for esophageal cancer. This motivates automated solutions, which is the aim of our work. Because CTV delineation is highly context-dependent—it must encompass the GTV and regional lymph nodes (LNs) while also avoiding excessive exposure to the organs at risk (OARs)—we formulate it as a deep contextual appearance-based problem using encoded spatial contexts of these anatomical structures. This allows the deep network to better learn from and emulate the margin- and appearance-based delineation performed by human physicians. Additionally, we develop domain-specific data augmentation to inject robustness to our system. Finally, we show that a simple 3D progressive holistically nested network (PHNN), which avoids computationally heavy decoding paths while still aggregating features at different levels of context, can outperform more complicated networks. Cross-validated experiments on a dataset of 135 esophageal cancer patients demonstrate that our encoded spatial context approach can produce concrete performance improvements, with an average Dice score of 83.9 ± 5.4% and an average surface distance of 4.2 ± 2.7 mm, representing improvements of 3.8% and 2.4 mm, respectively, over the state-of-the-art approach.
机译:从放射线计算机断层扫描(RTCT)图像划定的临床目标体积(CTV)用于定义包含总肿瘤体积(GTV)和/或放射治疗(RT)的亚临床恶性疾病的治疗区域。高的使用者内部和使用者之间的可变性使得这对于食道癌而言是特别困难的任务。这激发了自动化解决方案,这是我们工作的目标。由于CTV的描述高度依赖于上下文,因此它必须包含GTV和区域淋巴结(LN),同时还要避免过度暴露于有风险的器官(OAR),因此,我们使用编码的空间上下文将其描述为基于上下文的深层问题这些解剖结构。这使深度网络可以更好地学习和模拟人类医师执行的基于边缘和外观的描绘。此外,我们开发了特定领域的数据增强功能,以为系统注入鲁棒性。最后,我们证明了一个简单的3D渐进式整体嵌套网络(PHNN),其性能优于更复杂的网络,该网络避免了计算量大的解码路径,同时仍在不同上下文级别上聚合了特征。在135个食道癌患者的数据集上进行的交叉验证实验表明,我们的编码空间上下文方法可以带来具体的性能改善,平均Dice评分为83.9±5.4%,平均表面距离为4.2±2.7 mm,代表改善3.8最先进的方法分别为%和2.4 mm。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号