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Trade-off between contrast recovery, image noise and edge artifacts in PET image reconstruction using detector blurring models

机译:探测器模糊模型对比恢复,图像噪声和边缘伪影之间的折衷,图像噪声和边缘伪影

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Accurate system modeling is essential for improved quantitation and lesion detection. Many investigators have made efforts to accurately model detector blurring using point spread functions (PSFs) in sinogram space and to incorporate them into image reconstruction for accurate quantitation. It has been observed that incorporating detector PSF into reconstruction leads to improved contrast recovery and resolution with reduced noise but introduces edge artifacts. It is not straightforward to investigate the impact of PSF kernels on image qualities because of lack of a tool to quantitatively analyze nonlinearly object-dependent OSEM. Accordingly, there have been few methods to reduce edge artifacts in a systematically object-independent way. Our goal is to analyze edge artifacts as well as contrast recovery, resolution and image noise in image reconstruction using various PSF models including full, under-modeled and no PSF kernels, and to provide a systematic solution to reduce edge artifacts without loss of contrast recovery. We focus on penalized likelihood reconstruction with quadratic regularization. Building on previous work, we derive analytical expressions for local impulse response and covariance where a PSF model mismatch exists so that one can analytically predict image qualities, such as contrast recovery, noise and edge artifacts, as a function of regularization parameters and reconstruction PSF kernels. Using the analytical tools, we show that there exists a trade-off between contrast recovery (or resolution), image noise and edge artifacts and that one can control the trade-off by tuning regularization parameters and reconstruction PSF kernels.
机译:精确的系统建模对于改善的定量和病变检测至关重要。许多调查人员已经努力准确地使用Sinogram空间中的点传播功能(PSF)模拟探测器模糊,并将它们纳入图像重建以进行准确定量。已经观察到,将探测器PSF掺入重建引线以改善对比度恢复和分辨率,降低噪音,但引入了边缘伪像。研究PSF内核对图像质量的影响并不简单,因为缺乏用于定量分析非线性对象依赖的OSEM的工具。因此,少量有很少的方法以系统地对象的方式减少边缘伪像。我们的目标是使用各种PSF型号分析边缘伪像以及图像重建中的对比恢复,分辨率和图像噪声,包括完整,模型和没有PSF内核,并提供系统解决方案,以减少边缘伪像而不会损失对比度恢复。我们专注于与二次规范化的惩罚似然重建。在以前的工作中,我们推出了用于本地脉冲响应和协方差的分析表达式,其中存在PSF模型不匹配,使得可以分析图像质量,例如对比度恢复,噪声和边缘伪像,作为正则化参数和重建PSF内核的函数。使用分析工具,我们表明,在对比度恢复(或分辨率),图像噪声和边缘伪影之间存在权衡,并且可以通过调整正则化参数和重建PSF内核来控制权衡。

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