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DQS 顾问:一种可视界面和基于知识的系统,用于在迭代 CT 重建中平衡剂量、质量和重建速度,应用于 NLM 正则化。

DQS advisor: a visual interface and knowledge-based system to balance dose, quality, and reconstruction speed in iterative CT reconstruction with application to NLM-regularization.

机构信息

Visual Analytic and Imaging Lab, Computer Science Department, Stony Brook University, NY 11790, USA.

出版信息

Phys Med Biol. 2013 Nov 7;58(21):7857-73. doi: 10.1088/0031-9155/58/21/7857. Epub 2013 Oct 21.

DOI:10.1088/0031-9155/58/21/7857
PMID:24145253
Abstract

Motivated by growing concerns with regards to the x-ray dose delivered to the patient, low-dose computed tomography (CT) has gained substantial interest in recent years. However, achieving high-quality CT reconstructions from the limited projection data collected at reduced x-ray radiation is challenging, and iterative algorithms have been shown to perform much better than conventional analytical schemes in these cases. A problem with iterative methods in general is that they require users to set many parameters, and if set incorrectly high reconstruction time and/or low image quality are likely consequences. Since the interactions among parameters can be complex and thus effective settings can be difficult to identify for a given scanning scenario, these choices are often left to a highly-experienced human expert. To help alleviate this problem, we devise a computer-based assistant for this purpose, called dose, quality and speed (DQS)-advisor. It allows users to balance the three most important CT metrics--DQS--by ways of an intuitive visual interface. Using a known gold-standard, the system uses the ant-colony optimization algorithm to generate the most effective parameter settings for a comprehensive set of DQS configurations. A visual interface then presents the numerical outcome of this optimization, while a matrix display allows users to compare the corresponding images. The interface allows users to intuitively trade-off GPU-enabled reconstruction speed with quality and dose, while the system picks the associated parameter settings automatically. Further, once the knowledge has been generated, it can be used to correctly set the parameters for any new CT scan taken at similar scenarios.

摘要

由于人们对患者所接受的 X 射线剂量越来越关注,近年来,低剂量计算机断层扫描(CT)技术受到了广泛关注。然而,从减少的 X 射线辐射所采集的有限投影数据中获得高质量的 CT 重建是具有挑战性的,在这些情况下,迭代算法已经被证明比传统的分析方案表现得更好。迭代方法通常存在一个问题,即它们需要用户设置许多参数,如果设置不正确,则可能会导致重建时间长和/或图像质量低。由于参数之间的相互作用可能很复杂,因此对于给定的扫描场景,很难确定有效的设置,因此这些选择通常留给经验丰富的人类专家。为了帮助解决这个问题,我们为此设计了一个基于计算机的助手,称为剂量、质量和速度(DQS)顾问。它允许用户通过直观的可视化界面来平衡三个最重要的 CT 指标——DQS。该系统使用已知的黄金标准,使用蚁群优化算法为 DQS 配置的综合集生成最有效的参数设置。然后,可视化界面会显示此优化的数值结果,而矩阵显示则允许用户比较相应的图像。该界面允许用户直观地权衡 GPU 加速重建速度与质量和剂量,而系统会自动选择相关的参数设置。此外,一旦生成了知识,就可以将其用于正确设置任何在类似场景下拍摄的新 CT 扫描的参数。

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