Department of Spine, Shandong Provincial Hospital Affiliated to Shandong First Medical University, No. 9677 in Jingshi Road, Jinan City, China.
Department of Neurology, The First Affiliated Hospital of Shandong First Medical University & Shandong Provincial Qianfoshan Hospital, Jinan, China.
Eur Radiol. 2021 Oct;31(10):7626-7636. doi: 10.1007/s00330-021-07812-1. Epub 2021 Mar 25.
To develop and evaluate a logistics regression diagnostic model based on computer tomography (CT) features to differentiate tuberculous spondylitis (TS) from pyogenic spondylitis (PS).
Demographic and clinical features were collected from the Electronic Medical Record System. Data of bony changes seen on CT images were compared between the PS (n = 61) and TS (n = 51) groups using the chi-squared test or t test. Based on features that were identified to be significant, a diagnostic model was developed from a derivation set (two thirds) and evaluated in a validation set (one third). The sensitivity, specificity, and area under the receiver operating characteristic curve (AUC) were calculated.
The width of bone formation around the vertebra and sequestrum was greater in the TS group. There were significant differences between the two groups in the horizontal and longitudinal location of erosion and the morphology of axial bone destruction and sagittal residual vertebra. Kyphotic deformity and overlapping vertebrae were more common in the TS group. A diagnostic model that included eight predictors was developed and simplified to include the following six predictors: width of the bone formation surrounding the vertebra, longitudinal location, axial-specific erosive morphology, specific morphology of the residual vertebra, kyphotic deformity, and overlapping vertebrae. The simplified model showed good sensitivity, specificity, and total accuracy (85.59%, 87.80%, and 86.50%, respectively); the AUC was 0.95, indicating good clinical predictive ability.
A diagnostic model based on bone destruction and formation seen on CT images can facilitate clinical differentiation of TS from PS.
• We have developed and validated a simple diagnostic model based on bone destruction and formation observed on CT images that can differentiate tuberculous spondylitis from pyogenic spondylitis. • The model includes six predictors: width of the bone formation surrounding the vertebra, longitudinal location, axial-specific erosive morphology, specific morphology of the residual vertebra, kyphotic deformity, and overlapping vertebrae. • The simplified model has good sensitivity, specificity, and total accuracy with a high AUC, indicating excellent predictive ability.
基于计算机断层扫描(CT)特征开发并评估一个物流回归诊断模型,以区分结核性脊柱炎(TS)和化脓性脊柱炎(PS)。
从电子病历系统中收集人口统计学和临床特征。使用卡方检验或 t 检验比较 PS(n=61)和 TS(n=51)组之间 CT 图像上骨改变的数据。基于被确定为显著的特征,从推导集(三分之二)中开发诊断模型,并在验证集(三分之一)中进行评估。计算灵敏度、特异性和接受者操作特征曲线下面积(AUC)。
TS 组椎体周围骨形成的宽度更大。两组之间在侵蚀的水平和纵向位置以及轴向骨破坏和矢状残留椎体的形态方面存在显著差异。TS 组更常见后凸畸形和重叠椎体。建立了一个包含八个预测因子的诊断模型,并简化为包含以下六个预测因子:椎体周围骨形成的宽度、纵向位置、轴向特异性侵蚀形态、残留椎体的特定形态、后凸畸形和重叠椎体。简化模型显示出良好的敏感性、特异性和总准确性(分别为 85.59%、87.80%和 86.50%);AUC 为 0.95,表明具有良好的临床预测能力。
基于 CT 图像上骨破坏和形成的诊断模型有助于临床区分 TS 和 PS。
我们已经开发并验证了一个基于 CT 图像上骨破坏和形成的简单诊断模型,可区分结核性脊柱炎和化脓性脊柱炎。
该模型包括六个预测因子:椎体周围骨形成的宽度、纵向位置、轴向特异性侵蚀形态、残留椎体的特定形态、后凸畸形和重叠椎体。
简化模型具有良好的灵敏度、特异性和总准确性,AUC 较高,表明具有出色的预测能力。