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Optimization-based image reconstruction from a small number of projections.

机译:基于少量投影的基于优化的图像重建。

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摘要

As X-ray computed tomography (CT) is widely used in medicine, the radiation dose in CT scans has become a significant concern regarding patient health. A great deal of effort from both industry and academia has been devoted to the development of approaches to reducing the CT-imaging dose. A natural way of reducing the CT-imaging dose is to lower the number of projection views at which data are acquired. The use of reduced projection views may also lead to a shorter imaging time in step-and-shoot and/or stationary-source CT, thus improving the work flow and minimizing potential motion artifacts. Data collected at sparsely distributed projection views pose a challenging image-reconstruction problem. The application of conventional analytic-based algorithms such as the filtered-backprojection (FBP) algorithms to sparse-view data can result in prominent streak artifacts because they require densely sampled projection data. On the other hand, optimization-based algorithms may yield images with improved quality over those obtained by use of the analytic-based algorithms when they are applied to the large amount of data typically collected in current applications. Optimization-based algorithms are also more flexible in accommodating imaging conditions of practical significance than analytic-based algorithms.;There has been renewed interest in the development and evaluation of optimization-based algorithms for image reconstruction in CT because optimization-based algorithms can potentially reconstruct images with minimized artifacts from sparse-view data. It has been demonstrated that optimization-based algorithms that exploit certain image-sparsity properties may yield CT-reconstruction images of practical utility from sparse-view projection data. The adaptive-steepest-descent projection-onto-convex-set (ASD-POCS) algorithm is one of the optimization-based algorithms which reconstruct images through solving a constraint optimization problem that specifies an image solution. In this dissertation study, we investigated and developed image-reconstruction algorithms of the ASD-POCS type and applied them to reconstructing images from data collected with non-diagnostic CT scanners in applications representing different data conditions for the purpose of reduction of imaging dose or improvement of image quality. The developed reconstruction algorithms were tailored to those different systems, with image-quality characterization studies being performed. The results of these studies demonstrate that ASD-POCS-type algorithms can yield quality images from much less data than those required by analytic-based algorithms in current imaging applications. The results also suggest that even for low-signal-to-noise-ratio (SNR) data, optimization-based algorithms can yield images of quality comparable to, or improved over, those obtained with the currently used analytic-based algorithms, in particular in terms of reduction of background noise and improvement of image contrast.;This dissertation research demonstrates the potential of optimization-based algorithms in the reconstruction of images of practical utility from data collected at projection views that are significantly fewer than those being used in current CT imaging. Optimization-based algorithms may hold promise in reducing the radiation dose involved in CT imaging.
机译:由于X射线计算机断层扫描(CT)在医学中被广泛使用,因此CT扫描中的辐射剂量已成为有关患者健康的重要问题。工业界和学术界都付出了巨大的努力来开发减少CT成像剂量的方法。减少CT成像剂量的自然方法是减少获取数据的投影视图的数量。缩小投影视图的使用还可能导致步进摄影和/或固定源CT中的成像时间缩短,从而改善工作流程并最大程度地减少潜在的运动伪影。在稀疏分布的投影视图上收集的数据构成了一个具有挑战性的图像重建问题。将常规的基于分析的算法(例如,滤波反投影(FBP)算法)应用于稀疏视图数据会导致明显的条纹伪影,因为它们需要密集采样的投影数据。另一方面,当将基于优化的算法应用于通常在当前应用程序中收集的大量数据时,与使用基于解析的算法所获得的图像相比,基于优化的算法可以产生质量更高的图像。与基于分析的算法相比,基于优化的算法在适应具有实际意义的成像条件方面也更加灵活。;由于基于优化的算法可以潜在地进行重构,因此人们对基于优化的算法在CT图像重建中的开发和评估有了新的兴趣。稀疏视图数据中伪像最少的图像。已经证明,利用某些图像稀疏特性的基于优化的算法可以从稀疏视图投影数据中获得实用的CT重建图像。自适应最速下降凸集投影(ASD-POCS)算法是基于优化的算法之一,它通过解决指定图像解决方案的约束优化问题来重建图像。在本论文的研究中,我们研究并开发了ASD-POCS类型的图像重建算法,并将其用于从代表不同数据条件的应用程序中使用非诊断CT扫描仪收集的数据中重建图像,以减少成像剂量或改善成像效果。图像质量。所开发的重建算法是针对那些不同的系统量身定制的,并进行了图像质量表征研究。这些研究的结果表明,与当前成像应用中基于分析的算法所需的数据相比,ASD-POCS类型的算法可从少得多的数据中生成高质量的图像。结果还表明,即使对于低信噪比(SNR)数据,基于优化的算法也可以产生与使用当前基于分析的算法所获得的图像相当或更高的图像质量,特别是在减少背景噪声和改善图像对比度方面。本论文的研究表明,基于优化的算法在从投影视图收集的数据中重建实用图像的潜力大大低于当前CT中使用的算法。成像。基于优化的算法可能有望减少CT成像中涉及的辐射剂量。

著录项

  • 作者

    Bian, Junguo.;

  • 作者单位

    The University of Chicago.;

  • 授予单位 The University of Chicago.;
  • 学科 Engineering Biomedical.;Health Sciences Radiology.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 206 p.
  • 总页数 206
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 宗教;
  • 关键词

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