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Automatic Segmentation of Ground-Glass Opacities in Lung CT Images by Using Markov Random Field-Based Algorithms

机译:基于马尔可夫随机场的算法自动分割肺部CT图像中的玻璃不透明度

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摘要

Chest radiologists rely on the segmentation and quantificational analysis of ground-glass opacities (GGO) to perform imaging diagnoses that evaluate the disease severity or recovery stages of diffuse parenchymal lung diseases. However, it is computationally difficult to segment and analyze patterns of GGO while compared with other lung diseases, since GGO usually do not have clear boundaries. In this paper, we present a new approach which automatically segments GGO in lung computed tomography (CT) images using algorithms derived from Markov random field theory. Further, we systematically evaluate the performance of the algorithms in segmenting GGO in lung CT images under different situations. CT image studies from 41 patients with diffuse lung diseases were enrolled in this research. The local distributions were modeled with both simple and adaptive (AMAP) models of maximum a posteriori (MAP). For best segmentation, we used the simulated annealing algorithm with a Gibbs sampler to solve the combinatorial optimization problem of MAP estimators, and we applied a knowledge-guided strategy to reduce false positive regions. We achieved AMAP-based GGO segmentation results of 86.94%, 94.33%, and 94.06% in average sensitivity, specificity, and accuracy, respectively, and we evaluated the performance using radiologists’ subjective evaluation and quantificational analysis and diagnosis. We also compared the results of AMAP-based GGO segmentation with those of support vector machine-based methods, and we discuss the reliability and other issues of AMAP-based GGO segmentation. Our research results demonstrate the acceptability and usefulness of AMAP-based GGO segmentation for assisting radiologists in detecting GGO in high-resolution CT diagnostic procedures.
机译:胸部放射科医生依靠磨玻璃片混浊(GGO)的分割和定量分析来进行影像学诊断,以评估疾病的严重程度或弥漫性实质性肺疾病的恢复阶段。但是,与其他肺部疾病相比,GGO的分割和分析在计算上存在困难,因为GGO通常没有明确的界限。在本文中,我们提出了一种新方法,该方法使用从马尔可夫随机场理论派生的算法自动分割肺部CT图像中的GGO。此外,我们系统地评估了算法在不同情况下分割肺部CT图像中GGO的性能。本研究纳入了41例弥漫性肺部疾病的CT图像研究。局部分布使用最大后验(MAP)的简单和自适应(AMAP)模型进行建模。为了获得最佳分割,我们将模拟退火算法与Gibbs采样器配合使用来解决MAP估计器的组合优化问题,并应用知识指导的策略来减少假阳性区域。我们基于AMAP的GGO分割结果的平均敏感性,特异性和准确性分别为86.94%,94.33%和94.06%,并且我们使用了放射科医生的主观评估以及定量分析和诊断来评估其性能。我们还将基于AMAP的GGO分割的结果与基于支持向量机的方法的结果进行了比较,并讨论了基于AMAP的GGO分割的可靠性和其他问题。我们的研究结果证明了基于AMAP的GGO分割在辅助放射科医生在高分辨率CT诊断程序中检测GGO方面的可接受性和实用性。

著录项

  • 来源
    《Journal of Digital Imaging》 |2012年第3期|p.409-422|共14页
  • 作者单位

    Shanghai Institute of Technical Physics, Chinese Academy of Sciences, 500 Yu Tian Road, Shanghai, 200083, China;

    Shanghai Institute of Technical Physics, Chinese Academy of Sciences, 500 Yu Tian Road, Shanghai, 200083, China;

    Department of Radiology, Huadong Hospital, Shanghai, China;

    Department of Radiology, Huadong Hospital, Shanghai, China;

    Shanghai Institute of Technical Physics, Chinese Academy of Sciences, 500 Yu Tian Road, Shanghai, 200083, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Image segmentation; Lung diseases; Markov chains; Tomography; X-ray computed;

    机译:图像分割肺部疾病马尔可夫链断层扫描X线计算机;

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