Chen-Mayer Huaiyu Heather, Fuld Matthew K, Hoppel Bernice, Judy Philip F, Sieren Jered P, Guo Junfeng, Lynch David A, Possolo Antonio, Fain Sean B
Radiation Physics Division, Physical Measurements Laboratory, National Institute of Standards and Technology, Gaithersburg, MD, 20899, USA.
Siemens Medical Solutions USA Inc., Malvern, PA, 19355, USA.
Med Phys. 2017 Mar;44(3):974-985. doi: 10.1002/mp.12087. Epub 2017 Feb 21.
Computed Tomography (CT) imaging of the lung, reported in Hounsfield Units (HU), can be parameterized as a quantitative image biomarker for the diagnosis and monitoring of lung density changes due to emphysema, a type of chronic obstructive pulmonary disease (COPD). CT lung density metrics are global measurements based on lung CT number histograms, and are typically a quantity specifying either the percentage of voxels with CT numbers below a threshold, or a single CT number below which a fixed relative lung volume, nth percentile, falls. To reduce variability in the density metrics specified by CT attenuation, the Quantitative Imaging Biomarkers Alliance (QIBA) Lung Density Committee has organized efforts to conduct phantom studies in a variety of scanner models to establish a baseline for assessing the variations in patient studies that can be attributed to scanner calibration and measurement uncertainty.
Data were obtained from a phantom study on CT scanners from four manufacturers with several protocols at various tube potential voltage (kVp) and exposure settings. Free from biological variation, these phantom studies provide an assessment of the accuracy and precision of the density metrics across platforms solely due to machine calibration and uncertainty of the reference materials. The phantom used in this study has three foam density references in the lung density region, which, after calibration against a suite of Standard Reference Materials (SRM) foams with certified physical density, establishes a HU-electron density relationship for each machine-protocol. We devised a 5-step calibration procedure combined with a simplified physical model that enabled the standardization of the CT numbers reported across a total of 22 scanner-protocol settings to a single energy (chosen at 80 keV). A standard deviation was calculated for overall CT numbers for each density, as well as by scanner and other variables, as a measure of the variability, before and after the standardization. In addition, a linear mixed-effects model was used to assess the heterogeneity across scanners, and the 95% confidence interval of the mean CT number was evaluated before and after the standardization.
We show that after applying the standardization procedures to the phantom data, the instrumental reproducibility of the CT density measurement of the reference foams improved by more than 65%, as measured by the standard deviation of the overall mean CT number. Using the lung foam that did not participate in the calibration as a test case, a mixed effects model analysis shows that the 95% confidence intervals are [-862.0 HU, -851.3 HU] before standardization, and [-859.0 HU, -853.7 HU] after standardization to 80 keV. This is in general agreement with the expected CT number value at 80 keV of -855.9 HU with 95% CI of [-857.4 HU, -854.5 HU] based on the calibration and the uncertainty in the SRM certified density.
This study provides a quantitative assessment of the variations expected in CT lung density measures attributed to non-biological sources such as scanner calibration and scanner x-ray spectrum and filtration. By removing scanner-protocol dependence from the measured CT numbers, higher accuracy and reproducibility of quantitative CT measures were attainable. The standardization procedures developed in study may be explored for possible application in CT lung density clinical data.
以亨氏单位(HU)报告的肺部计算机断层扫描(CT)成像,可参数化为一种定量图像生物标志物,用于诊断和监测因肺气肿(一种慢性阻塞性肺疾病(COPD))导致的肺密度变化。CT肺密度指标是基于肺CT数值直方图的全局测量值,通常是一个指定低于阈值的CT数值的体素百分比的量,或者是一个固定相对肺体积(第n百分位数)低于该值的单个CT数值。为了减少CT衰减指定的密度指标中的变异性,定量成像生物标志物联盟(QIBA)肺密度委员会已组织开展了多项工作,在各种扫描仪型号中进行体模研究,以建立一个基线,用于评估可归因于扫描仪校准和测量不确定性的患者研究中的变化。
数据来自对四家制造商的CT扫描仪进行的体模研究,采用了多种在不同管电压(kVp)和曝光设置下的协议。这些体模研究不受生物变异影响,仅因机器校准和参考材料的不确定性,就能对各平台密度指标的准确性和精密度进行评估。本研究中使用的体模在肺密度区域有三个泡沫密度参考物,在针对一套具有经认证物理密度的标准参考材料(SRM)泡沫进行校准后,为每个机器协议建立了HU - 电子密度关系。我们设计了一个五步校准程序,并结合一个简化的物理模型,能够将总共22种扫描仪 - 协议设置下报告的CT数值标准化到单一能量(选择为80 keV)。在标准化前后,计算每种密度的总体CT数值以及按扫描仪和其他变量计算的标准偏差,作为变异性的度量。此外,使用线性混合效应模型评估扫描仪之间的异质性,并在标准化前后评估平均CT数值的95%置信区间。
我们表明,在将标准化程序应用于体模数据后,通过总体平均CT数值的标准偏差测量,参考泡沫CT密度测量的仪器再现性提高了65%以上。以未参与校准的肺泡沫作为测试案例,混合效应模型分析表明,标准化前95%置信区间为[-862.0 HU, -851.3 HU],标准化到80 keV后为[-859.0 HU, -853.7 HU]。这与基于校准和SRM认证密度的不确定性,在80 keV时预期的CT数值-855.9 HU以及95%置信区间[-857.4 HU, -854.5 HU]总体一致。
本研究对因扫描仪校准、扫描仪X射线光谱和过滤等非生物源导致的CT肺密度测量中预期的变化进行了定量评估。通过消除测量的CT数值对扫描仪协议的依赖性,可实现定量CT测量更高的准确性和再现性。本研究中开发的标准化程序可探索其在CT肺密度临床数据中的可能应用。