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High Fidelity System Modeling for High Quality Image Reconstruction in Clinical CT

机译:用于临床CT的高质量图像重建的高保真系统建模

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摘要

Today, while many researchers focus on the improvement of the regularization term in IR algorithms, they pay less concern to the improvement of the fidelity term. In this paper, we hypothesize that improving the fidelity term will further improve IR image quality in low-dose scanning, which typically causes more noise. The purpose of this paper is to systematically test and examine the role of high-fidelity system models using raw data in the performance of iterative image reconstruction approach minimizing energy functional. We first isolated the fidelity term and analyzed the importance of using focal spot area modeling, flying focal spot location modeling, and active detector area modeling as opposed to just flying focal spot motion. We then compared images using different permutations of all three factors. Next, we tested the ability of the fidelity terms to retain signals upon application of the regularization term with all three factors. We then compared the differences between images generated by the proposed method and Filtered-Back-Projection. Lastly, we compared images of low-dose in vivo data using Filtered-Back-Projection, Iterative Reconstruction in Image Space, and the proposed method using raw data. The initial comparison of difference maps of images constructed showed that the focal spot area model and the active detector area model also have significant impacts on the quality of images produced. Upon application of the regularization term, images generated using all three factors were able to substantially decrease model mismatch error, artifacts, and noise. When the images generated by the proposed method were tested, conspicuity greatly increased, noise standard deviation decreased by 90% in homogeneous regions, and resolution also greatly improved. In conclusion, the improvement of the fidelity term to model clinical scanners is essential to generating higher quality images in low-dose imaging.
机译:如今,尽管许多研究人员专注于改进IR算法中的正则项,但他们对保真度项的关注却减少了。在本文中,我们假设改进保真度项将进一步改善低剂量扫描中的IR图像质量,这通常会导致更多噪声。本文的目的是系统地测试和检查使用原始数据的高保真系统模型在减少能量功能的迭代图像重建方法中的作用。我们首先隔离了保真度术语,并分析了使用焦点区域建模,飞行焦点位置建模和主动探测器区域建模的重要性,而不仅仅是飞行焦点运动。然后,我们使用所有三个因素的不同排列来比较图像。接下来,我们测试了保真条件在使用所有三个因素应用正则化条件时保留信号的能力。然后,我们比较了由所提出的方法生成的图像和“滤波后投影”之间的差异。最后,我们使用滤波后投影,图像空间中的迭代重建以及使用原始数据的拟议方法对低剂量体内数据的图像进行了比较。初步比较构造的图像差异图表明,焦点区域模型和主动检测器区域模型也对产生的图像质量产生重大影响。应用正则化项后,使用所有这三个因素生成的图像都能够大幅降低模型失配误差,伪像和噪声。测试通过所提出的方法生成的图像时,显着性大大提高,在均匀区域中的噪声标准偏差降低了90%,并且分辨率也大大提高了。总之,改进保真度以模拟临床扫描仪对于在低剂量成像中生成更高质量的图像至关重要。

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