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Interleaved 3D‐ CNN CNN s for joint segmentation of small‐volume structures in head and neck CT CT images

机译:用于头部和颈部CT图像中小音量结构的关节分割的交错3D-CNN CNN S.

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摘要

Purpose Accurate 3D image segmentation is a crucial step in radiation therapy planning of head and neck tumors. These segmentation results are currently obtained by manual outlining of tissues, which is a tedious and time‐consuming procedure. Automatic segmentation provides an alternative solution, which, however, is often difficult for small tissues (i.e., chiasm and optic nerves in head and neck CT images) because of their small volumes and highly diverse appearance/shape information. In this work, we propose to interleave multiple 3D Convolutional Neural Networks (3D‐ CNN s) to attain automatic segmentation of small tissues in head and neck CT images. Method A 3D‐ CNN was designed to segment each structure of interest. To make full use of the image appearance information, multiscale patches are extracted to describe the center voxel under consideration and then input to the CNN architecture. Next, as neighboring tissues are often highly related in the physiological and anatomical perspectives, we interleave the CNN s designated for the individual tissues. In this way, the tentative segmentation result of a specific tissue can contribute to refine the segmentations of other neighboring tissues. Finally, as more CNN s are interleaved and cascaded, a complex network of CNN s can be derived, such that all tissues can be jointly segmented and iteratively refined. Result Our method was validated on a set of 48 CT images, obtained from the Medical Image Computing and Computer Assisted Intervention ( MICCAI ) Challenge 2015 . The Dice coefficient ( DC ) and the 95% Hausdorff Distance (95 HD ) are computed to measure the accuracy of the segmentation results. The proposed method achieves higher segmentation accuracy (with the average DC : 0.58?±?0.17 for optic chiasm, and 0.71?±?0.08 for optic nerve; 95 HD : 2.81?±?1.56?mm for optic chiasm, and 2.23?±?0.90?mm for optic nerve) than the MICCAI challenge winner (with the average DC : 0.38 for optic chiasm, and 0.68 for optic nerve; 95 HD : 3.48 for optic chiasm, and 2.48 for optic nerve). Conclusion An accurate and automatic segmentation method has been proposed for small tissues in head and neck CT images, which is important for the planning of radiotherapy.
机译:目的准确的3D图像分割是头部和颈部肿瘤的放射治疗计划中的关键步骤。这些分段结果目前通过手动概述组织,这是一种繁琐且耗时的程序。自动分割提供了一种替代解决方案,然而,由于它们的小体积和高度多样化的外观/形状信息,因此小组织(即,头部和颈部CT图像中的光学神经难以进行替代解决方案。在这项工作中,我们建议对多个3D卷积神经网络(3D-CNNS)进行交织,以获得头部和颈部CT图像中的小组织的自动分割。方法设计3D-CNN以分割每个感兴趣的结构。为了充分利用图像外观信息,提取多尺度修补程序以描述所考虑的中心体素,然后输入CNN架构。接下来,随着邻近组织在生理和解剖视角中往往是高度相关的,我们将指定为各个组织的CNN S交错。以这种方式,特定组织的暂定分割结果可以有助于细化其他相邻组织的分割。最后,随着更多CNN S的交织和级联,可以导出CNN S的复杂网络,使得所有组织可以联合分段和迭代地改进。结果我们的方法在一组48个CT图像上验证,从医学图像计算和计算机辅助干预(Miccai)挑战2015获得。计算骰子系数(DC)和95%Hausdorff距离(95 HD)以测量分段结果的准确性。所提出的方法实现了更高的分割精度(平均DC:0.58?±0.17用于光学性,和0.71Ωηλ08,用于光神经; 95 HD:2.81?±1. 4.56?MM用于光学Chiasm,2.23?±译文0.90?mm的视神经)比米奇挑战冠军(有平均DC:0.38用于光学尖锐,光神经为0.68;光学Chiasm的95高清:3.48,光神经为2.48)。结论已经提出了一种精确和自动分段方法,用于头部和颈部CT图像中的小组织,这对于放射疗法的规划是重要的。

著录项

  • 来源
    《Medical Physics》 |2018年第5期|共13页
  • 作者单位

    School of Biomedical EngineeringShanghai Jiao Tong UniversityShanghai 200030 China;

    School of Biomedical EngineeringShanghai Jiao Tong UniversityShanghai 200030 China;

    Department of Radiology and BRICUniversity of North Carolina at Chapel HillChapel Hill NC 27599 USA;

    Nantong UniversityNantong Jiangsu 226019 China;

    Department of RadiologyRuijin Hospital Affiliated to Shanghai Jiao Tong University School of;

    Department of Radiology and BRICUniversity of North Carolina at Chapel HillChapel Hill NC 27599 USA;

    School of Biomedical EngineeringShanghai Jiao Tong UniversityShanghai 200030 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 基础医学;
  • 关键词

    image segmentation; 3D convolution neural network; treatment planning;

    机译:图像分割;3D卷积神经网络;治疗规划;

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