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Characterization of statistical prior image constrained compressed sensing (PICCS): II. Application to dose reduction

机译:统计先验图像约束压缩感知(PICCS)的特征:II。适用于减量

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Purpose: The ionizing radiation imparted to patients during computed tomography exams is raising concerns. This paper studies the performance of a scheme called dose reduction using prior image constrained compressed sensing (DR-PICCS). The purpose of this study is to characterize the effects of a statistical model of x-ray detection in the DR-PICCS framework and its impact on spatial resolution. Methods: Both numerical simulations with known ground truth and in vivo animal dataset were used in this study. In numerical simulations, a phantom was simulated with Poisson noise and with varying levels of eccentricity. Both the conventional filtered backprojection (FBP) and the PICCS algorithms were used to reconstruct images. In PICCS reconstructions, the prior image was generated using two different denoising methods: a simple Gaussian blur and a more advanced diffusion filter. Due to the lack of shift-invariance in nonlinear image reconstruction such as the one studied in this paper, the concept of local spatial resolution was used to study the sharpness of a reconstructed image. Specifically, a directional metric of image sharpness, the so-called pseudopoint spread function (pseudo-PSF), was employed to investigate local spatial resolution. Results: In the numerical studies, the pseudo-PSF was reduced from twice the voxel width in the prior image down to less than 1.1 times the voxel width in DR-PICCS reconstructions when the statistical model was not included. At the same noise level, when statistical weighting was used, the pseudo-PSF width in DR-PICCS reconstructed images varied between 1.5 and 0.75 times the voxel width depending on the direction along which it was measured. However, this anisotropy was largely eliminated when the prior image was generated using diffusion filtering; the pseudo-PSF width was reduced to below one voxel width in that case. In the in vivo study, a fourfold improvement in CNR was achieved while qualitatively maintaining sharpness; images also had a qualitatively more uniform noise spatial distribution when including a statistical model. Conclusions: DR-PICCS enables to reconstruct CT images with lower noise than FBP and the loss of spatial resolution can be mitigated to a large extent. The introduction of statistical modeling in DR-PICCS may improve some noise characteristics, but it also leads to anisotropic spatial resolution properties. A denoising method, such as the directional diffusion filtering, has been demonstrated to reduce anisotropy in spatial resolution effectively when it was combined with DR-PICCS with statistical modeling. ? 2013 American Association of Physicists in Medicine.
机译:目的:在计算机断层扫描检查期间给予患者的电离辐射引起人们的关注。本文研究了一种使用先验图像约束压缩传感(DR-PICCS)的称为剂量减少方案的性能。这项研究的目的是表征DR-PICCS框架中X射线检测统计模型的效果及其对空间分辨率的影响。方法:本研究使用已知地面事实的数值模拟和体内动物数据集。在数值模拟中,用泊松噪声和变化的偏心度模拟了模型。常规滤波反投影(FBP)和PICCS算法都用于重建图像。在PICCS重建中,使用两种不同的降噪方法生成先验图像:简单的高斯模糊和更高级的扩散滤波器。由于本文研究的非线性图像重建方法缺乏位移不变性,因此采用局部空间分辨率的概念来研究重建图像的清晰度。具体而言,采用图像清晰度的方向性度量(所谓的伪点扩展函数(pseudo-PSF))来研究局部空间分辨率。结果:在数值研究中,当不包括统计模型时,伪PSF从先前图像中的体素宽度的两倍减小到小于DR-PICCS重建中体素宽度的1.1倍。在相同的噪声水平下,使用统计加权时,DR-PICCS重建图像中的伪PSF宽度取决于体素宽度的测量方向,在体素宽度的1.5到0.75倍之间变化。但是,当使用扩散滤波生成先验图像时,这种各向异性被大大消除了。在这种情况下,伪PSF宽度减小到一个体素宽度以下。在体内研究中,CNR改善了四倍,同时在质量上保持了清晰度。当包括统计模型时,图像还具有定性更均匀的噪声空间分布。结论:DR-PICCS能够以比FBP更低的噪声重建CT图像,并且可以在很大程度上减轻空间分辨率的损失。在DR-PICCS中引入统计建模可能会改善一些噪声特性,但也会导致各向异性的空间分辨率特性。已经证明,将降噪方法(例如定向扩散滤波)与DR-PICCS与统计建模结合使用时,可有效降低空间分辨率的各向异性。 ? 2013年美国医学物理学会。

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