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Iterative tomographic reconstruction with applications to breast and small animal imaging.

机译:迭代层析重建技术在乳腺和小动物成像中的应用。

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摘要

CT and SPECT are two popular noninvasive medical imaging modalities. Image reconstruction algorithms play an extremely important role in these tomographic imaging systems. In particular, iterative reconstruction algorithms have the advantages of being able to handle arbitrary geometries, reconstruct from incomplete data, and incorporate stochastic image and noise models. In this dissertation, we described novel iterative reconstruction algorithms for two CT/SPECT dual modality applications. The first application is limited angle breast imaging, where only a few projection images for both CT and SPECT are available and quantifying lesion radioactivity is difficult. We developed algorithms to reconstruct 3D images, correcting for attenuation, detector blurring, and limited angle effects. We estimated lesion volume from the X-ray CT reconstruction and the total lesion radioactivity from the SPECT reconstruction. Quantification results using experimental data showed that our technique achieved an accuracy of less than 15% error. The second application is high-resolution small animal imaging, where limited gamma detector size constrains spatial resolution and field of view. We studied a novel half-cone/dual-cone SPECT data acquisition geometry, which significantly increases resolution without reducing the field of view, and we developed iterative joint reconstruction/deblurring algorithms suitable for the half-cone geometry. Reconstruction of experimental phantom data demonstrated much better spatial resolution than conventional pinhole SPECT.; Finally, as a contribution to the theory of iterative reconstruction, we proved the convergence of our reconstruction algorithms for both breast imaging and small animal imaging applications.
机译:CT和SPECT是两种流行的非侵入性医学成像方式。图像重建算法在这些断层成像系统中扮演着极其重要的角色。特别地,迭代重建算法的优点是能够处理任意几何形状,从不完整的数据重建以及合并随机图像和噪声模型。本文介绍了两种CT / SPECT双模态应用的新颖迭代重建算法。第一种应用是有限角度的胸部成像,其中只有少量的CT和SPECT投影图像可用,并且难以量化病变的放射性。我们开发了可重建3D图像,校正衰减,检测器模糊和有限角度效果的算法。我们通过X射线CT重建估计了病变体积,并通过SPECT重建估计了总病变放射性。使用实验数据的量化结果表明,我们的技术实现了小于15%的误差精度。第二个应用是高分辨率小动物成像,其中有限的伽马探测器尺寸会限制空间分辨率和视野。我们研究了一种新颖的半圆锥/双圆锥SPECT数据采集几何结构,该几何结构可显着提高分辨率而不会减小视场,并开发了适用于半圆锥几何形状的迭代联合重建/去模糊算法。实验体模数据的重建显示出比常规针孔SPECT更好的空间分辨率。最后,作为对迭代重建理论的贡献,我们证明了针对乳房成像和小动物成像应用的重建算法的收敛性。

著录项

  • 作者

    Li, Heng.;

  • 作者单位

    University of Virginia.;

  • 授予单位 University of Virginia.;
  • 学科 Engineering Electronics and Electrical.; Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 109 p.
  • 总页数 109
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;生物医学工程;
  • 关键词

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