Division of Image Processing, Department of Radiology, Leiden University Medical Center, PO Box 9600, 2300 RC, Leiden, The Netherlands.
Medical Physics, Department of Radiology, Leiden University Medical Center, PO Box 9600, 2300 RC, Leiden, The Netherlands.
Med Phys. 2019 Sep;46(9):3985-3997. doi: 10.1002/mp.13659. Epub 2019 Jul 9.
Vascular remodeling is a significant pathological feature of various pulmonary diseases, which may be assessed by quantitative computed tomography (CT) imaging. The purpose of this study was therefore to develop and validate an automatic method for quantifying pulmonary vascular morphology in CT images.
The proposed method consists of pulmonary vessel extraction and quantification. For extracting pulmonary vessels, a graph-cuts-based method is proposed which considers appearance (CT intensity) and shape (vesselness from a Hessian-based filter) features, and incorporates distance to the airways into the cost function to prevent false detection of airway walls. For quantifying the extracted pulmonary vessels, a radius histogram is generated by counting the occurrence of vessel radii, calculated from a distance transform-based method. Subsequently, two biomarkers, slope α and intercept β, are calculated by linear regression on the radius histogram. A public data set from the VESSEL12 challenge was used to independently evaluate the vessel extraction. The quantitative analysis method was validated using images of a three-dimensional (3D) printed vessel phantom, scanned by a clinical CT scanner and a micro-CT scanner (to obtain a gold standard). To confirm the association between imaging biomarkers and pulmonary function, 77 scleroderma patients were investigated with the proposed method.
In the independent evaluation with the public data set, our vessel segmentation method obtained an area under the receiver operating characteristic (ROC) curve of 0.976. The median radius difference between clinical and micro-CT scans of a 3D printed vessel phantom was 0.062 ± 0.020 mm, with interquartile range of 0.199 ± 0.050 mm. In the studied patient group, a significant correlation between diffusion capacity for carbon monoxide and the biomarkers, α (R = -0.27, P = 0.018) and β (R = 0.321, P = 0.004), was obtained.
In conclusion, the proposed method was validated independently using a public data set resulting in an area under the ROC curve of 0.976 and using a 3D printed vessel phantom data set, showing a vessel sizing error of 0.062 mm (0.16 in-plane pixel units). The correlation between imaging biomarkers and diffusion capacity in a clinical data set confirmed an association between lung structure and function. This quantification of pulmonary vascular morphology may be helpful in understanding the pathophysiology of pulmonary vascular diseases.
血管重构是多种肺部疾病的重要病理特征,可以通过定量 CT(computed tomography,CT)成像进行评估。因此,本研究旨在开发和验证一种自动量化 CT 图像中肺血管形态的方法。
所提出的方法包括肺血管提取和量化。为了提取肺血管,提出了一种基于图割的方法,该方法同时考虑了外观(CT 强度)和形状(基于 Hessian 滤波器的血管度)特征,并将到气道的距离纳入成本函数中,以防止误检气道壁。为了量化提取的肺血管,通过基于距离变换的方法计算血管半径的出现次数来生成半径直方图。随后,通过对半径直方图进行线性回归计算出两个生物标志物斜率α和截距β。使用 VESSEL12 挑战赛的公共数据集独立评估血管提取。使用由临床 CT 扫描仪和微 CT 扫描仪扫描的三维(3D)打印血管模型的图像(以获得金标准)对定量分析方法进行验证。为了确认成像生物标志物与肺功能之间的关联,对 77 例硬皮病患者进行了研究。
在使用公共数据集进行的独立评估中,我们的血管分割方法获得了接收器工作特征(receiver operating characteristic,ROC)曲线下面积为 0.976。3D 打印血管模型的临床和微 CT 扫描的平均半径差异为 0.062 ± 0.020 mm,四分位距为 0.199 ± 0.050 mm。在研究的患者组中,发现一氧化碳弥散量与生物标志物α(R = -0.27,P = 0.018)和β(R = 0.321,P = 0.004)之间存在显著相关性。
总之,本研究使用公共数据集独立验证了该方法,ROC 曲线下面积为 0.976,使用 3D 打印血管模型数据集,显示血管尺寸误差为 0.062 mm(0.16 个平面像素单位)。临床数据集的成像生物标志物与一氧化碳弥散量之间的相关性证实了肺结构和功能之间的关联。这种肺血管形态的量化可能有助于了解肺血管疾病的病理生理学。