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Quantitative image quality evaluation of fast magnetic resonance imaging.

机译:快速磁共振成像的定量图像质量评估。

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摘要

Magnetic resonance imaging (MRI) has been widely used in the diagnosis and treatment of various diseases. The principle of encoding object contrast in the resonance spectrum gives MRI almost unlimited ways to acquire and reconstruct an image, but at the same time, arises the problem of how to effectively evaluate and optimize these parameters and methods. The perceptual difference model (CASE-PDM) is a quantitative image quality evaluation tool developed in our lab and has been successfully applied to several applications of MRI. It determines the visual difference between a high quality reference image and a more quickly obtained, but possibly degraded, MR image. A low CASE-PDM score indicates similarity of the images, and there is a threshold, below which, one cannot detect a difference between the two. The goal of our research is to use the CASE-PDM model to evaluate the image quality in fast MRI and to optimize the parameters. Two Human subject experiments, DSCQS and ADF, were designed and performed to validate the CASE-PDM model. The CASE-PDM predictions are closely correlated with the human subjects predictions, for both low-degradation and high-degradation images. We also found CASE-PDM threshold values that correspond to a "non-perceptible" difference. Using the above validation results, we focused on important variables in fast MR imaging, especially in spiral MRI and advanced parallel MRI techniques, including the SENSE regularization techniques and the GRAPPA reconstruction techniques. Data was generated from real scanners or simulated from the digital phantoms. Various acquisition parameters and reconstruction algorithms were combined to generate thousands of images for each application. CASE-PDM was used to quantitatively compare those images, and the CASE-PDM scores was analyzed statistically to give helpful hints for the engineers. In addition, a new modification of GRAPPA method called Robust GRAPPA was proposed. Robust GRAPPA was compared with conventional GRAPPA and obvious improvement in image quality was observed.
机译:磁共振成像(MRI)已被广泛用于各种疾病的诊断和治疗。在共振光谱中对物体对比度进行编码的原理为MRI提供了几乎无限的方式来获取和重建图像,但是同时出现了如何有效评估和优化这些参数和方法的问题。知觉差异模型(CASE-PDM)是我们实验室开发的定量图像质量评估工具,已成功应用于MRI的多种应用。它确定了高质量参考图像和较快获得但可能降级的MR图像之间的视觉差异。低CASE-PDM分数表示图像相似,并且存在一个阈值,在该阈值以下,无法检测到两者之间的差异。我们研究的目标是使用CASE-PDM模型来评估快速MRI中的图像质量并优化参数。设计并执行了两个人类受试者实验DSCQS和ADF来验证CASE-PDM模型。对于低降解和高降解图像,CASE-PDM预测与人类受试者预测密切相关。我们还发现对应于“不可感知”差异的CASE-PDM阈值。使用以上验证结果,我们将重点放在快速MR成像中的重要变量上,特别是在螺旋MRI和高级并行MRI技术中,包括SENSE正则化技术和GRAPPA重建技术。数据是从真实的扫描仪生成的,或者是从数字体模模拟的。各种采集参数和重建算法结合在一起,可以为每种应用生成数千张图像。使用CASE-PDM对这些图像进行定量比较,并对CASE-PDM分数进行统计分析,从而为工程师提供有用的提示。另外,提出了一种新的改进的GRAPPA方法,称为鲁棒GRAPPA。将健壮的GRAPPA与常规GRAPPA进行了比较,并观察到图像质量的明显改善。

著录项

  • 作者

    Huo, Donglai.;

  • 作者单位

    Case Western Reserve University.;

  • 授予单位 Case Western Reserve University.;
  • 学科 Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 186 p.
  • 总页数 186
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;
  • 关键词

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