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Dual-modality 3D brain PET-CT image segmentation based on probabilistic brain atlas and classification fusion

机译:基于概率脑图谱和分类融合的双模态3D脑PET-CT图像分割

摘要

The increasing prevalence of dual medical imaging modalities, such as PET-CT scanners, poses both challenges and opportunities to image segmentation, as they provide distinct but complementary information. In this paper, we propose a novel segmentation algorithm for 3D brain PET-CT images, which classifies each voxel by fusing the voxel's memberships estimated from four points of view using the PET information, CT information, smoothness prior, and probabilistic brain atlas. All memberships having the same dynamic range greatly facilitates weighting the contribution of the four different information sources. The probabilistic brain atlas estimated for each PET-CT image from a set of training samples provides the anatomical information to the segmentation process. We compared the proposed algorithm to three single-classifier based methods, PET-based SPM algorithm, CT-based Otsu thresholding, and PET-CT based MAP-MRF algorithm. The experimental results in 11 clinical brain PET-CT studies demonstrate that the novel algorithm is capable of providing more accurate and reliable segmentation.
机译:双重医学成像模式(例如PET-CT扫描仪)的日益普及,给图像分割带来了挑战和机遇,因为它们提供了独特但互补的信息。在本文中,我们提出了一种新颖的3D大脑PET-CT图像分割算法,该算法通过使用PET信息,CT信息,先验平滑度和概率大脑图集对从四个角度估计的体素进行融合,从而对每个体素进行分类。具有相同动态范围的所有成员资格极大地有助于加权四个不同信息源的贡献。从一组训练样本中为每个PET-CT图像估计的概率脑图谱为分割过程提供了解剖信息。我们将提出的算法与三种基于单分类器的方法进行了比较:基于PET的SPM算法,基于CT的Otsu阈值处理和基于PET-CT的MAP-MRF算法。 11项临床脑部PET-CT研究的实验结果表明,该新算法能够提供更准确和可靠的细分。

著录项

  • 作者

    Xia Y; Eberl S; Feng D;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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