Carl E. Ravin Advanced Imaging Laboratories and Center for Virtual Imaging Trials, Department of Radiology, Duke University Medical Center, Durham, NC 27705, United States of America.
Medical Physics Graduate Program, Duke University Medical Center, Durham, NC 27705, United States of America.
Phys Med Biol. 2024 Jul 8;69(14). doi: 10.1088/1361-6560/ad5d4a.
With the introduction of spectral CT techniques into the clinic, the imaging capacities of CT were expanded to multiple energy levels. Due to a variety of factors, the acquired signal in spectral CT datasets is shared between these images. Conventional image quality metrics assume independence between images which is not preserved within spectral CT datasets, limiting their utility for characterizing energy selective images. The purpose of this work was to develop a metrology to characterize energy selective images by incorporating the shared information between images within a spectral CT dataset.The signal-to-noise ratio (SNR) was extended into a multivariate space where each image within a spectral CT dataset was treated as a separate information channel. The general definition was applied to the specific case of contrast to define a multivariate contrast-to-noise ratio (CNR). The matrix contained two types of terms: a conventional CNR term which characterized image quality within each image in the spectral CT dataset and covariance weighted CNR (Covar-CNR) which characterized the contrast in each image relative to the covariance between images. Experimental data from an investigational photon-counting CT scanner was used to demonstrate the insight of this metrology. A cylindrical water phantom containing vials of iodine and gadolinium (2, 4, and 8 mg ml) was imaged under conditions of variable tube current, tube voltage, and energy threshold. Two image series (threshold and bin images) containing two images each were defined based upon the contribution of photons to reconstructed images. Analysis of variance (ANOVA) was calculated between CNR terms and image acquisition variables. A multivariate regression was then fitted to experimental data.Image type had a major difference on how Covar-CNR values were distributed. Bin images had a slightly higher mean and wider standard deviation (Covar-CNR: 3.38 ±17.25, Covar-CNR: 5.77 ± 30.64) compared to threshold images (Covar-CNR: 2.08 ±1.89, Covar-CNR: 3.45 ± 2.49) across all conditions. ANOVA found that each acquisition variable had a significant relationship with both Covar-CNR terms. The multivariate regression model suggested that material concentration had the largest impact on all CNR terms.In this work, we described a theoretical framework to extend the SNR to a multivariate form that is able to characterize images independently and also provide insight regarding the relationship between images. Experimental data was used to demonstrate the insight that this metrology provides about image formation factors in spectral CT.
随着光谱 CT 技术在临床中的引入,CT 的成像能力扩展到了多个能级。由于多种因素的影响,光谱 CT 数据集中的采集信号在这些图像之间共享。传统的图像质量指标假设图像之间相互独立,但这在光谱 CT 数据集中并不成立,限制了它们在描述能量选择图像方面的应用。本工作旨在开发一种计量学方法,通过在光谱 CT 数据集中的图像之间共享信息来描述能量选择图像。将信噪比 (SNR) 扩展到多变量空间,其中光谱 CT 数据集中的每个图像都被视为一个单独的信息通道。一般定义应用于对比度的具体情况,定义了多变量对比度噪声比 (CNR)。该矩阵包含两种类型的项:一个常规 CNR 项,用于描述光谱 CT 数据集内每个图像的图像质量;协方差加权 CNR (Covar-CNR),用于描述每个图像相对于图像之间协方差的对比度。使用来自研究用光子计数 CT 扫描仪的实验数据来证明这种计量学的洞察力。一个圆柱形水模,包含碘和钆的小瓶(2、4 和 8mg/ml),在可变管电流、管电压和能量阈值的条件下成像。根据对重建图像的光子贡献,定义了两个包含两个图像的图像系列(阈值图像和 bin 图像)。方差分析(ANOVA)计算了 CNR 项与图像采集变量之间的关系。然后,对实验数据进行多元回归拟合。图像类型对 Covar-CNR 值的分布有很大影响。与阈值图像(Covar-CNR:2.08 ±1.89,Covar-CNR:3.45 ± 2.49)相比,bin 图像的均值略高,标准差略宽(Covar-CNR:3.38 ±17.25,Covar-CNR:5.77 ± 30.64),在所有条件下。ANOVA 发现,每个采集变量与两个 Covar-CNR 项都有显著的关系。多元回归模型表明,材料浓度对所有 CNR 项的影响最大。在这项工作中,我们描述了一种理论框架,将 SNR 扩展到多变量形式,能够独立地描述图像,并提供关于图像之间关系的见解。使用实验数据来证明这种计量学方法在光谱 CT 中提供的关于图像形成因素的见解。