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An efficient framework for high-quality low-dose CT reconstruction and reference-based image restoration.

机译:用于高质量低剂量CT重建和基于参考的图像恢复的有效框架。

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摘要

CT imaging procedures have been shown to considerably increase the medical radiation dose to patients, giving rise to cancer. As a result, low dose imaging modalities have gained much attention recently. However, this renders traditional CT reconstruction processes no longer sufficient. Iterative reconstruction algorithms using numerical optimization paradigms are better suited, but they suffer from (1) expensive computation, (2) problems with the selection of optimal parameters to simultaneously optimize speed and (3) poor reconstruction quality.;To cope with these problems, we have made several contributions to low-dose CT. First, we have devised a GPU-accelerated ordered subset iterative CT reconstruction algorithm (OS-SIRT) with regularization and effective parameter learning. We generalized two algebraic algorithms (SIRT, SART) to an ordered subset scheme which balanced the speed of computation and the rate of convergence of these algorithms. Second, we mapped the computation to GPUs, achieving remarkable performance gains. Third, for high-quality reconstruction, we introduced four filters for denoising and streak artifact reduction, i.e., bilateral, trilateral, non-local means (NLM) and optimal adaptive NLM, all of which are popular in computer vision. We have used these filters within an interleaved CT reconstruction regularization pipeline and found that they compare favorably with the traditionally used TVM algorithm. Fourth, to overcome the difficulties with optimal parameter tuning within our algorithm and for any parameter-dependent applications, we devised two parameter-learning approaches---exhaustive benchmark testing and multi-objective optimization---and allow user interaction via an interactive parameter space visualization tool. We then generalized our framework to Electron Tomography. Our fifth contribution is a scheme that broadens the low-dose image restoration capability of traditional NLM filtering to also include high-dose reference images. We developed two variants. The first variant uses a prior scan of the same patient when available. The second variant generalizes this concept to a database of images of other patients to learn the reference images. Our experiments show that this scheme has vast potential to restore the quality of low-dose CT imagery.
机译:CT成像程序已显示出可大大增加对患者的医疗辐射剂量,从而引发癌症。结果,近来低剂量成像方式引起了很多关注。然而,这使得传统的CT重建过程不再足够。使用数值优化范例的迭代重建算法更适合,但它们遭受(1)昂贵的计算,(2)选择最佳参数以同时优化速度的问题以及(3)重建质量较差的问题;为了解决这些问题,我们为低剂量CT做出了一些贡献。首先,我们设计了具有正则化和有效参数学习功能的GPU加速有序子集迭代CT重建算法(OS-SIRT)。我们将两种代数算法(SIRT,SART)归纳为一个有序子集方案,该方案平衡了这些算法的计算速度和收敛速度。其次,我们将计算结果映射到GPU,获得了显着的性能提升。第三,为了进行高质量的重建,我们引入了四个用于降噪和减少条纹伪影的滤波器,即双边,三边,非局部均值(NLM)和最佳自适应NLM,它们在计算机视觉中都很流行。我们在交错的CT重建正则化流水线中使用了这些滤波器,发现它们与传统使用的TVM算法相比具有优势。第四,为了克服算法中优化参数调整的困难以及针对任何与参数相关的应用程序,我们设计了两种参数学习方法-详尽的基准测试和多目标优化-并允许用户通过交互式参数进行交互空间可视化工具。然后,我们将框架推广到电子断层扫描。我们的第五个贡献是扩展了传统NLM滤波的低剂量图像恢复功能,使其也包括高剂量参考图像的方案。我们开发了两个变体。第一种变体在可用时使用同一患者的先前扫描。第二个变体将这个概念推广到其他患者的图像数据库中,以学习参考图像。我们的实验表明,该方案具有恢复低剂量CT图像质量的巨大潜力。

著录项

  • 作者

    Xu, Wei.;

  • 作者单位

    State University of New York at Stony Brook.;

  • 授予单位 State University of New York at Stony Brook.;
  • 学科 Computer Science.;Health Sciences Radiology.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 174 p.
  • 总页数 174
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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