Department of Radiology, Massachusetts General Hospital, Harvard Medical School, 55 Fruit Street, Boston, MA, 02114, USA.
Department of Nuclear Medicine, Peking University First Hospital, 8 Xishiku Street, Xicheng District, Beijing, 100034, China.
Eur J Radiol. 2020 Mar;124:108840. doi: 10.1016/j.ejrad.2020.108840. Epub 2020 Jan 16.
To establish an accurate and reliable equation for kidney depth estimation in adult patients from different Chinese geographical regions.
This multicenter study enrolled Eastern Asian Chinese patients with abdominal PET/CT scans at 26 imaging centers from six macro-regions across China in 3 years. Age, gender, height, weight, primary disease and its extent on PET scans of the participants were collected as potential predictive factors. Kidney depth on CT, defined as the average of the vertical distances from the posterior skin to the farthest anterior and closest posterior surfaces of each kidney, was measured as the standard reference. The new kidney depth model was constructed using a multiple regression model, and its performance was compared to those of three established models by computing the absolute value of estimation errors in comparison with CT-measured kidney depth.
A total of 2502 patients were enrolled and classified into training (n=1653) and testing (n = 849) subsets. In the training subset, two kidney depth models were constructed: Left (cm): 0.013×age+0.117×gender-0.044×height+0.087×weight+7.951, Right (cm): 0.005×age+0.013×gender-0.035×height+0.082×weight+7.266 (weight: kg, height: cm, gender = 0 if female, 1 if male). In the testing subset, one-way analysis of variance showed that the estimation errors of the new models did not significantly differ among the 6 regions. Bland-Altman analysis determined that new equations had lower estimated biases (left: 0.039 cm, right: 0.018 cm) compared with other existing models.
The new equations were highly accurate for kidney depth estimation in adults from all over China, with lower estimation errors compared to other established models.
建立一种适用于来自中国不同地理区域的成年患者的准确、可靠的肾脏深度估计方程。
本多中心研究纳入了来自中国六个大区 26 家影像中心的 3 年内接受腹部 PET/CT 扫描的东亚华裔患者。收集了患者的年龄、性别、身高、体重、原发疾病及其在 PET 扫描上的范围作为潜在的预测因素。肾脏深度定义为每侧肾脏最前和最后表面的垂直距离的平均值,通过 CT 测量作为标准参考。使用多元回归模型构建新的肾脏深度模型,并通过计算与 CT 测量的肾脏深度相比的估计误差的绝对值,比较其与三个已建立模型的性能。
共纳入 2502 例患者,分为训练集(n=1653)和测试集(n=849)。在训练集中,构建了两个肾脏深度模型:左(cm):0.013×年龄+0.117×性别-0.044×身高+0.087×体重+7.951,右(cm):0.005×年龄+0.013×性别-0.035×身高+0.082×体重+7.266(体重:kg,身高:cm,性别=0 表示女性,1 表示男性)。在测试集中,单向方差分析显示新模型的估计误差在 6 个区域之间没有显著差异。Bland-Altman 分析确定新方程的估计偏差较低(左:0.039cm,右:0.018cm),与其他现有模型相比。
新方程对于来自中国各地的成年人的肾脏深度估计非常准确,与其他已建立的模型相比,估计误差较低。