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Comparison Between Pre-log and Post-log Statistical Models in Ultra-Low-Dose CT Reconstruction

机译:超低剂量CT重建前对数和后对数统计模型的比较

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摘要

X-ray detectors in clinical computed tomography (CT) usually operate in current-integrating mode. Their complicated signal statistics often lead to intractable likelihood functions for practical use in model-based image reconstruction (MBIR). It is therefore desirable to design simplified statistical models without losing the essential factors. Depending on whether the CT transmission data are logarithmically transformed, pre-log and post-log models are two major categories of choices in CT MBIR. Both being approximations, it remains an open question whether one model can notably improve image quality over the other on real scanners. In this study, we develop and compare several pre-log and post-log MBIR algorithms under a unified framework. Their reconstruction accuracy based on simulation and clinical datasets are evaluated. The results show that pre-log MBIR can achieve notably better quantitative accuracy than post-log MBIR in ultra-low-dose CT, although in less extreme cases, post-log MBIR with handcrafted pre-processing remains a competitive alternative. Pre-log MBIR could play a growing role in emerging ultra-low-dose CT applications.
机译:临床计算机断层扫描(CT)中的X射线探测器通常以电流积分模式运行。它们复杂的信号统计通常会导致难以估计的似然函数在基于模型的图像重建(MBIR)中实际使用。因此,需要设计简化的统计模型而又不损失基本要素。根据对数传输是否经过对数转换,对数前和对数后模型是CT MBIR中的两个主要选择。两者都是近似值,在实际的扫描仪上,一个模型是否可以显着提高图像质量仍是一个悬而未决的问题。在这项研究中,我们在统一框架下开发并比较了几种对数前和对数后MBIR算法。评估了基于仿真和临床数据集的重建精度。结果表明,在超低剂量CT中,对数后MBIR可以比对数后MBIR显着提高定量精度,尽管在极端情况下,采用手工预处理的对数后MBIR仍然是竞争性选择。预记录MBIR在新兴的超低剂量CT应用中将发挥越来越重要的作用。

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