首页> 外文期刊>Nuclear Instruments & Methods in Physics Research. Section A, Accelerators, Spectrometers, Detectors and Associated Equipment >Sparse-view virtual monochromatic computed tomography reconstruction using a dictionary-learning-based algorithm
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Sparse-view virtual monochromatic computed tomography reconstruction using a dictionary-learning-based algorithm

机译:基于字典学习算法的稀疏视图虚拟单色计算机断层扫描重建

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摘要

Dual-energy computed tomography (DECT) is a well-known imaging technique that can be used to differentiate and classify material composition by using projection data acquired at two different x-ray tube voltages. Dual-energy projection data can be also used to create virtual monochromatic images as the potential to reduce beam-hardening artifacts that are usually observed in conventional polychromatic images. Despite DECT's merits, main concerns in the use of DECT in clinics may be high radiation dose imposed to patients during the examinations. In this study, we investigated sparse-view virtual monochromatic CT reconstruction using a dictionary-learning (DL)-based algorithm to provide quantitative measurements at reduced radiation dose. DL is an advanced representation learning theory that aims to find a sparse representation of the input signal in the form of a linear combination of basis elements. To validate the proposed method, we performed a systematic simulation and also we made an experiment on a skull phantom using a commercially-available dental cone-beam CT system. Two data sets of 60 projections were acquired at 80 kV_p and 120 kV_p separately from the system and used to create virtual monochromatic images at 90 keV and 130 keV. The image qualities were evaluated in terms of the image intensity and the peak signal-to-noise ratio.
机译:双能计算机断层扫描(DECT)是一种众所周知的成像技术,可通过使用在两个不同的X射线管电压下获取的投影数据来对材料成分进行区分和分类。双能量投影数据还可以用于创建虚拟的单色图像,以减少通常在常规多色图像中观察到的光束硬化伪影。尽管具有DECT的优点,但在临床中使用DECT的主要问题可能是检查期间对患者施加的高辐射剂量。在这项研究中,我们研究了基于字典学习(DL)的算法的稀疏视图虚拟单色CT重建,以提供减少辐射剂量的定量测量。 DL是一种高级的表示学习理论,旨在以基本元素的线性组合形式找到输入信号的稀疏表示。为了验证所提出的方法,我们进行了系统的仿真,并且使用市售的牙科锥形束CT系统对头骨模型进行了实验。从系统分别以80 kV_p和120 kV_p采集了两个60个投影的数据集,并用于创建90 keV和130 keV的虚拟单色图像。根据图像强度和峰值信噪比评估图像质量。

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