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Segmenting Hippocampus from 7.0 Tesla MR Images by Combining Multiple Atlases and Auto-Context Models

机译:通过结合多个地图集和自动上下文模型从7.0 Tesla MR图像中分割海马

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摘要

In investigation of neurological diseases, accurate measurement of hippocampus is very important for differentiating inter-subject difference and subtle longitudinal change. Although many automatic segmentation methods have been developed, their performance can be limited by the poor image contrast of hippocampus in the MR images, acquired from either 1.5T or 3.0T scanner. Recently, the emergence of 7.0T scanner sheds new light on the study of hippocampus by providing much higher contrast and resolution. But the automatic segmentation algorithm for 7.0T images still lags behind the development of high-resolution imaging techniques. In this paper, we present a learning-based algorithm for segmenting hippocampi from 7.0T images, by using multi-atlases technique and auto-context models. Specifically, for each atlas (along with other aligned atlases), Auto-Context Model (ACM) is performed to iteratively construct a sequence of classifiers by integrating both image appearance and context features in the local patch. Since there exist plenty of texture information in 7.0T images, more advanced texture features are also extracted and incorporated into the ACM during the training stage. With the use of multiple atlases, multiple sequences of ACM-based classifiers will be trained, respectively in each atlas' space. Thus, in the application stage, a new image will be segmented by first applying the sequence of the learned classifiers of each atlas to it, and then fusing multiple segmentation results from multiple atlases (or multiple sequences of classifiers) by a label-fusion technique. Experimental results on the six 7.0T images with voxel size of 0.35 × 0.35 × 0.35mm~3 show much better results obtained by our method than by the method using only the conventional auto-context model.
机译:在神经系统疾病的研究中,准确区分海马区对于区分受试者间差异和细微的纵向变化非常重要。尽管已经开发了许多自动分割方法,但是它们的性能会受到从1.5T或3.0T扫描仪获取的MR图像中海马图像差的对比度的限制。最近,7.0T扫描仪的出现通过提供更高的对比度和分辨率为海马研究提供了新的思路。但是,针对7.0T图像的自动分割算法仍落后于高分辨率成像技术的发展。在本文中,我们提出了一种基于学习的算法,该算法通过使用多图集技术和自动上下文模型从7.0T图像中分割海马。具体而言,对于每个图集(以及其他对齐的图集),执行自动上下文模型(ACM),以通过将图像外观和上下文特征集成到本地补丁中来迭代构建一系列分类器。由于7.0T图像中存在大量纹理信息,因此在训练阶段还将提取更高级的纹理特征并将其合并到ACM中。通过使用多个地图集,将分别在每个地图集的空间中训练基于ACM的分类器的多个序列。因此,在应用阶段,首先将每个地图集的学习分类器序列应用于新图像,然后通过标签融合技术融合来自多个地图集(或多个分类器序列)的多个分割结果,对新图像进行分割。在六张像素大小为0.35×0.35×0.35mm〜3的7.0T图像上的实验结果表明,与仅使用常规自动上下文模型的方法相比,我们的方法获得了更好的结果。

著录项

  • 来源
    《Machine learning in medical imaging》|2011年|p.100-108|共9页
  • 会议地点 Toronto(CA);Toronto(CA);Toronto(CA);Toronto(CA)
  • 作者单位

    Department of Radiology and BRIC, University of North Carolina at Chapel Hill;

    Department of Radiology and BRIC, University of North Carolina at Chapel Hill;

    Department of Radiology and BRIC, University of North Carolina at Chapel Hill;

    Department of Radiology and BRIC, University of North Carolina at Chapel Hill;

    Neuroscience Research Institute, Gachon University of Medicine and Science, Incheon, Korea;

    Neuroscience Research Institute, Gachon University of Medicine and Science, Incheon, Korea;

    Department of Radiology and BRIC, University of North Carolina at Chapel Hill;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 医用物理学;
  • 关键词

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