Li Dechun, Sun Yingli, Ma Zongjing, Chen Bin, Jin Liang, Li Ming
Department of Radiology, Huadong Hospital, Fudan University, Shanghai, 200040, China.
Diagnostic and Treatment Center for Micro Nodules in Lungs, Guozhen Zhang, Shanghai, 200040, China.
BMC Med Imaging. 2025 Jan 29;25(1):30. doi: 10.1186/s12880-025-01561-z.
Interstitial lung abnormalities (ILA) are a proposed imaging concept. Fibrous ILA have a higher risk of progression and death. Clinically, computed tomography (CT) examination is a frequently used and convenient method compared with pulmonary function tests. This study aimed to correlate quantitative CT airway parameters with pulmonary function parameters in patients with fibrous ILA, with the goal of establishing a prediction model for abnormal pulmonary function parameters in patients with fibrous ILA.
Ninety-five cases of fibrous ILA including CT images and 64 normal control cases were collected. All patients completed pulmonary function tests within one week. The airway parameters of the CT images of the two groups of cases were measured using a commercial software (Aview). Differences in airway parameters and lung function parameters between the two groups were analyzed by logistic multifactorial regression. The correlation between airway parameters and lung function parameters among 95 patients with fibrous ILA and a prediction model was determined for the decreased percentage forced vital capacity to predicted normal value (FVC%pred) in patients with fibrous ILA.
Logistic multifactorial regression correlated FVC%pred and bronchial wall thickness (WT) were correlated with fibrous ILA. The 95 patients with fibrous ILA were divided into normal FVC%pred (n = 69) and decreased FVC%pred (n = 26) groups at the 80% cut-off. Logistic multifactorial regression revealed that FVC%pred decline in patients with fibrous ILA was effectively predicted by age (odds ratio [OR]: 1.11, 95% confidence interval [CI]: 1.02-1.21, p = 0.014), gender (OR: 4.16,95% CI: 1.27-13.71, p = 0.019), luminal area of the sixth generation brochi (LA; OR: 0.87, 95%CI: 0.78-0.970,p = 0.015), and airway wall area (WA; OR: 1.12, 95%CI: 1.02-1.24, p = 0.020) were effective predictors of. The area under the curve of the prediction model based on the four parameters was 0.8428.
WT is a quantitative CT biomarker and FVC%pred is a valid lung function parameter in fibrous ILA patients. Age, gender, LA, and WA are effective predictors of FVC%pred decline in fibrous ILA patients. The combined model has good predictive value.
2024K249.
间质性肺异常(ILA)是一种提出的影像学概念。纤维化性ILA具有更高的进展和死亡风险。临床上,与肺功能测试相比,计算机断层扫描(CT)检查是一种常用且便捷的方法。本研究旨在将纤维化性ILA患者的定量CT气道参数与肺功能参数相关联,目标是建立纤维化性ILA患者肺功能参数异常的预测模型。
收集95例包括CT图像的纤维化性ILA病例和64例正常对照病例。所有患者在一周内完成肺功能测试。使用商业软件(Aview)测量两组病例CT图像的气道参数。通过逻辑多因素回归分析两组之间气道参数和肺功能参数的差异。确定95例纤维化性ILA患者气道参数与肺功能参数之间的相关性,并为纤维化性ILA患者预测用力肺活量占预计正常值百分比(FVC%pred)下降建立预测模型。
逻辑多因素回归显示FVC%pred与支气管壁厚度(WT)与纤维化性ILA相关。95例纤维化性ILA患者在80%截断值时分为正常FVC%pred(n = 69)和下降FVC%pred(n = 26)组。逻辑多因素回归显示,纤维化性ILA患者FVC%pred下降可通过年龄(比值比[OR]:1.11,95%置信区间[CI]:1.02 - 1.21,p = 0.014)、性别(OR:4.16,95%CI:1.27 - 13.71,p = 0.019)、第六代支气管腔面积(LA;OR:0.87,95%CI:0.78 - 0.970,p = 0.015)和气道壁面积(WA;OR:1.12,95%CI:1.02 - 1.24,p = 0.020)有效预测。基于这四个参数的预测模型曲线下面积为0.8428。
WT是纤维化性ILA患者的定量CT生物标志物,FVC%pred是有效的肺功能参数。年龄、性别、LA和WA是纤维化性ILA患者FVC%pred下降的有效预测因素。联合模型具有良好的预测价值。
2024K249。