Liu Zheng, Li Jing, Li Bo, Yi Guozhen, Pang Shaoqian, Zhang Ruinan, Li Peixiu, Yin Zhaoping, Zhang Jing, Lv Bingxin, Yan Jingjing, Ma Jiao
Department of Respiratory Medicine, Petroleum Clinical Medical College, Hebei Medical University, No.51 Xinkai Road, Guangyang District, Langfang, 065000, China.
GENERTEC Intelligent Cloud Imaging Technology (Beijing) Co., Ltd, Beijing, 100000, China.
BMC Pulm Med. 2025 Aug 1;25(1):371. doi: 10.1186/s12890-025-03848-x.
Accurate quantification of the extent of bronchial damage across various airway levels in chronic obstructive pulmonary disease (COPD) remains a challenge. In this study, artificial intelligence (AI) was employed to develop an airway segmentation model to investigate the morphological changes of the central and peripheral airways in COPD patients and the effects of these airway changes on pulmonary function classification and acute COPD exacerbations.
Clinical data from a total of 340 patients with COPD and 73 healthy volunteers were collected and compiled. An AI-driven airway segmentation model was constructed using Convolutional Neural Regressor (CNR) and Airway Transfer Network (ATN) algorithms. The efficacy of the model was evaluated through support vector machine (SVM) and random forest regression approaches.
The area under the receiver operating characteristic (ROC) curve (AUC) of the SVM in evaluating the COPD airway segmentation model was 0.96, with a sensitivity of 97% and a specificity of 92%, however, the AUC value of the SVM was 0.81 when it was replaced the healthy group by non-COPD outpatients. Compared with the healthy group, the grade and the total number of airway segmentation were decreased and the diameters of the right main bronchus and bilateral lobar bronchi of patients with COPD were smaller and the airway walls were thinner (all P < 0.01). However, the diameters of the subsegmental and small airway bronchi were increased, and airway walls were thickened, and the arc lengths were shorter ( all P < 0.01), especially in patients with severe COPD (all P < 0.05). Correlation and regression analysis showed that FEV1%pre was positively correlated with the diameters and airway wall thickness of the main and lobar airway, and the arc lengths of small airway bronchi (all P < 0.05). Airway wall thickness of the subsegment and small airway were found to have the greatest impact on the frequency of COPD exacerbations.
Artificial intelligence lung CT airway segmentation model is a non-invasive quantitative tool for measuring chronic obstructive pulmonary disease. The main changes in COPD patients are that the central airway diameter becomes narrower and the thickness becomes thinner. The arc length of the peripheral airway becomes shorter, and the diameter and airway wall thickness become larger, which is more obvious in severe patients. Pulmonary function classification and small and medium airway dysfunction are also affected by the diameter, thickness and arc length of large and small airways. Small airway remodeling is more significant in acute exacerbations of COPD.
准确量化慢性阻塞性肺疾病(COPD)不同气道水平的支气管损伤程度仍然是一项挑战。在本研究中,采用人工智能(AI)开发气道分割模型,以研究COPD患者中央和外周气道的形态变化以及这些气道变化对肺功能分级和COPD急性加重的影响。
收集并整理了总共340例COPD患者和73名健康志愿者的临床资料。使用卷积神经回归器(CNR)和气道转移网络(ATN)算法构建了一个由AI驱动的气道分割模型。通过支持向量机(SVM)和随机森林回归方法评估该模型的有效性。
SVM在评估COPD气道分割模型时的受试者操作特征(ROC)曲线下面积(AUC)为0.96,灵敏度为97%,特异性为92%,然而,当用非COPD门诊患者取代健康组时,SVM的AUC值为0.81。与健康组相比,COPD患者气道分割的分级和总数减少,右主支气管和双侧叶支气管的直径较小,气道壁较薄(所有P<0.01)。然而,亚段支气管和小气道支气管的直径增加,气道壁增厚,弧长缩短(所有P<0.01),尤其是在重度COPD患者中(所有P<0.05)。相关性和回归分析表明,FEV1%预计值与主气道和叶气道的直径、气道壁厚度以及小气道支气管的弧长呈正相关(所有P<0.05)。发现亚段和小气道的气道壁厚度对COPD急性加重的频率影响最大。
人工智能肺CT气道分割模型是一种用于测量慢性阻塞性肺疾病的非侵入性定量工具。COPD患者的主要变化是中央气道直径变窄,厚度变薄。外周气道的弧长变短,直径和气道壁厚度变大,在重度患者中更明显。肺功能分级以及中小气道功能障碍也受大小气道的直径、厚度和弧长影响。小气道重塑在COPD急性加重中更为显著。