...
首页> 外文期刊>Medical Physics >Learning directional relative positions between mediastinal lymph node stations and organs
【24h】

Learning directional relative positions between mediastinal lymph node stations and organs

机译:学习纵隔淋巴结站与器官之间的定向相对位置

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose: To automatically learn directional relative positions (DRP) between mediastinal lymph node stations and anatomical organs. Those spatial relationships are used to semiautomatically segment the stations in thoracic CT images. Methods: Fuzzy maps of DRP were automatically extracted by a learning procedure from a database composed of images with stations and anatomical structures manually segmented by consensus between experts. Spatial relationships common to all patients were retained. The segmentation of a new image used an initial rough delineation of anatomical organs and applied the DRP operators. The algorithm was tested with a leave-one-out approach on a database of 5 patients with 10 lymph stations and 30 anatomical structures each. Results were compared to expert delineations with dice similarity coefficient (DSC) and bidirectional local distance (BLD). Results: The overall mean DSC was 66% and the mean BLD was 1.7 mm. Best matches were obtained from stations S3P or S4R while lower matches were obtained for stations 1R and 1L. On average, more than 30 spatial relationships were automatically extracted for each station. Conclusions: This feasibility study suggests that mediastinal lymph node stations could be satisfactory segmented from thoracic CT using automatically extracted positional relationships with anatomical organs. This approach requires the anatomical structures to be initially roughly delineated. A similar approach could be applied to other sites where spatial relationships exists between anatomical structures. The complete database of the five reference cases is made publicly available.
机译:目的:自动了解纵隔淋巴结站与解剖器官之间的方向相对位置(DRP)。这些空间关系用于对胸部CT图像中的工作站进行半自动分割。方法:通过学习程序从数据库中自动提取DRP的模糊图,该数据库由具有工作站和解剖结构的图像组成,并通过专家之间的共识进行了手动分割。保留了所有患者共有的空间关系。新图像的分割使用了解剖器官的初始粗略轮廓,并应用了DRP运算符。该算法使用留一法在数据库中进行了测试,该数据库由5位患者(每个患者具有10个淋巴站和30个解剖结构)组成。将结果与具有骰子相似系数(DSC)和双向局部距离(BLD)的专家描述进行比较。结果:总平均DSC为66%,平均BLD为1.7 mm。从站点S3P或S4R获得了最佳匹配,而从站点1R和1L获得了较低的匹配。平均而言,每个站自动提取了30多个空间关系。结论:这项可行性研究表明,通过自动提取与解剖器官的位置关系,从胸部CT分割纵隔淋巴结站可以令人满意。这种方法需要首先大致勾勒出解剖结构。类似的方法可以应用于在解剖结构之间存在空间关系的其他部位。五个参考案例的完整数据库已公开提供。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 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