Cardiovascular Imaging Research Group, Heart and Vascular Center, Semmelweis University, Budapest Hungary, 68. Varosmajor Street, 1122, Budapest, Hungary.
Cardiovascular Imaging Research Group, Heart and Vascular Center, Semmelweis University, Budapest Hungary, 68. Varosmajor Street, 1122, Budapest, Hungary.
J Cardiovasc Comput Tomogr. 2019 Nov-Dec;13(6):325-330. doi: 10.1016/j.jcct.2018.11.004. Epub 2018 Nov 12.
Volumetric and radiomic analysis of atherosclerotic plaques on coronary CT angiography have been shown to predict high-risk plaque morphology and to predict patient outcomes. However, there is limited information whether image reconstruction algorithms and preprocessing steps (type of binning, number of bins used for discretization) may influence parameter values.
We retrospectively identified 60 coronary lesions on coronary CT angiography (CTA). All images were reconstructed using filtered back projection (FBP), hybrid (HIR) and model-based (MIR) iterative reconstruction. Plaques were segmented manually on HIR images and copied to FBP and MIR images to ensure identical voxels were analyzed. Overall, 4 volumetric and 169 radiomic parameters were calculated. Intra-class correlation coefficient (ICC) was used to assess reproducibility between image reconstructions, while linear regression analysis was used to assess the effect of preprocessing steps done before calculating radiomic metrics.
All volumetric and radiomic metrics had ICC>0.90 except for first-order statistics: mode, harmonic mean, minimum (0.45, 0.76, 0.84; respectively) and gray level co-occurrence (GLCM) parameters: inverse difference sum and sum variance (0.01, 0.04; respectively). Among GLCM parameters 90% were significantly affected by the type of binning and 100% by the number of bins. In case of gray level run length matrix parameters 100% of metrics were affected by both preprocessing steps.
Volumetric and radiomic statistics are robust to image reconstruction algorithms. However, all radiomic variables were affected by preprocessing steps therefore, showing the need for standardization before being implemented into everyday clinical practice.
冠状动脉 CT 血管造影术(CCTA)显示粥样斑块的容积和纹理分析可预测高危斑块形态,并预测患者预后。然而,关于图像重建算法和预处理步骤(分箱类型、用于离散化的分箱数量)是否会影响参数值的信息有限。
我们回顾性地在 CCTA 上识别了 60 个冠状动脉病变。所有图像均使用滤波反投影(FBP)、混合(HIR)和基于模型(MIR)迭代重建进行重建。在 HIR 图像上手动分割斑块,并将其复制到 FBP 和 MIR 图像上,以确保分析的体素相同。总共计算了 4 个容积参数和 169 个纹理参数。使用组内相关系数(ICC)评估图像重建之间的可重复性,而使用线性回归分析评估在计算纹理度量之前进行的预处理步骤的影响。
除一阶统计量(模式、调和均值、最小值(分别为 0.45、0.76、0.84)和灰度共生矩阵(GLCM)参数(逆差和和总和方差(分别为 0.01、0.04)外,所有容积和纹理度量的 ICC>0.90。在 GLCM 参数中,90%的参数受分箱类型影响,100%的参数受分箱数量影响。在灰度运行长度矩阵参数中,100%的指标都受到这两个预处理步骤的影响。
容积和纹理统计对图像重建算法具有鲁棒性。然而,所有纹理变量都受到预处理步骤的影响,因此在将其纳入日常临床实践之前需要标准化。