首页> 外文会议>International Conference on Medical Imaging Physics and Engineering >Automatic segmentation of head-neck organs by Multi-mode CNNs for radiation therapy
【24h】

Automatic segmentation of head-neck organs by Multi-mode CNNs for radiation therapy

机译:通过多模CNN进行辐射治疗的头颈器官自动分割

获取原文

摘要

Objective: Accurate and fast automatic segmentation of organs is a key step for efficient planning for radiation therapy. In this paper, we propose the Multi-mode CNNs, which is for accurate and fast automatic segmentation of mandible, parotid glands, brainstem, optic nerves, cerebellum, eyes, lens, pituitary, thyroid, temporal lobes, brain and head respectively in 3D CT image of head and neck.Methods: The proposed Multi-mode CNNs consist of three convolutional neural networks. The first CNN is a simple classification network to distinguish slices of head and neck. It accelerates the next step by reducing the search space. The second network is a 3DCNN for locating the region of interest (ROI) of organs. It can enhance the robustness of the algorithm to CT images from different hospitals. The third network is a full convolution network (FCN) based on U-Net. This is a pixel-wise detailed segmented network to classify voxels in a region of interest and generate segmentation results. We used public and clinical datasets to evaluate our algorithm. The public datasets are from the MICCAI 2015 Head and Neck Auto Segmentation Grand Challenge. For the private datasets, we collected 3D CT images of 88 patients from A and B Hospital.Results: For the public datasets, our segmentation results of the nine organs in the challenge surpassed the first rank. For the private datasets, clinical trials have proved that it is effective for real image data in different hospitals. The average total segmentation time for one patient with above whole organs is less than one minute, which indicates proposed method having clinical value.Conclusion: The proposed Multi-mode CNNs can be used to accurate and fast automatic segmentation of organs in radiation therapy. It can assist doctors in outlining the organs during the planning of radiation therapy in the clinic.
机译:目的:准确快速地自动分割器官是有效规划放射治疗的关键步骤。在本文中,我们提出了多模CNN,其用于颌下,腮腺,脑干,视神经,小脑,眼睛,透镜,垂体,甲状腺,颞叶,脑和脑和头部的准确和快速的自动分割。头部和颈部的CT图像。方法:所提出的多模式CNN由三个卷积神经网络组成。第一个CNN是一个简单的分类网络,以区分头部和颈部。它通过减少搜索空间来加速下一步。第二网络是用于定位器官的感兴趣区域(ROI)的3DCNN。它可以增强算法从不同医院的CT图像的稳健性。第三个网络是基于U-Net的完整卷积网络(FCN)。这是一个像素明智的详细分段网络,用于在感兴趣区域中对体素进行分类并生成分段结果。我们使用公共和临床数据集来评估我们的算法。公共数据集来自Miccai 2015头和颈部自动分割大挑战。对于私人数据集,我们收集了A和B Hospital的88名患者的3D CT图像。结果:对于公共数据集,我们挑战中九个器官的细分结果超越了第一个等级。对于私人数据集,证明了临床试验,它对不同医院的真实图像数据有效。整个器官的一个患者的平均总分段时间小于1分钟,这表明了具有临床价值的提出方法。结论:所提出的多模CNN可用于准确和快速地自动分割器官在放射治疗中的器官的自动分段。它可以帮助医生在诊所规划放射治疗期间概述器官。

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