Abdolijomoor Asma, Choi Jiwoong, Lee David H, Kim So Ri, Park Seoung Ju, Jin Gong Yong, Hoffman Eric A, Castro Mario, Lee Chang Hyun, Chae Kum Ju
Division of Pulmonary Disease, Critical Care, and Sleep Medicine, Department of Internal Medicine, School of Medicine, The University of Kansas, Kansas City, KS, USA.
Department of Bioengineering, The University of Kansas, Lawrence, KS, USA.
ERJ Open Res. 2025 Sep 15;11(5). doi: 10.1183/23120541.00961-2024. eCollection 2025 Sep.
While lower airway remodelling of obstructive lung diseases (OLDs), such as asthma and COPD, is comprehensively studied, the understanding of upper airway remodelling in OLD remains limited. This study aimed to investigate upper airway dimensions in patients with OLD using quantitative computed tomography (QCT) imaging and to identify relevant parameters for predicting OLD using machine learning techniques.
A prospective cohort of 26 healthy controls, 73 COPD patients and 86 asthma patients underwent upper airway computed tomography (CT) scans from the oral cavity to the subglottal region. Multiscale lung structure and function were assessed using ITK-SNAP and in-house QCT software. Feature-importance estimation methods from STREAMLINE were utilised to select potentially relevant upper airway metrics. The Wilcoxon rank-sum test and Pearson's correlation were employed for pairwise comparisons and correlation analysis, respectively. The Youden index was used to determine optimal cut-off values of relevant upper airway features.
After standardising QCT results, patients with OLD exhibited greater mouth-to-supraglottal metrics, notably greater oral space air fraction and pharyngeal length. Both metrics showed a negative correlation with forced expiratory volume in 1 s/forced vital capacity (R=-0.24; p=0.001). Feature-importance analysis identified oral space air fraction and normalised pharyngeal length as key features discriminating patients with OLD from healthy controls. An oral space air fraction value of ≥0.8 predicted OLD with approximately 100% sensitivity and 69% specificity.
Quantitative upper airway CT measurement combined with machine learning analysis revealed oropharyngeal enlargement in patients with OLD.
虽然对哮喘和慢性阻塞性肺疾病(COPD)等阻塞性肺病(OLDs)的下气道重塑进行了全面研究,但对OLDs中上气道重塑的了解仍然有限。本研究旨在使用定量计算机断层扫描(QCT)成像研究OLD患者的上气道尺寸,并使用机器学习技术确定预测OLD的相关参数。
对26名健康对照者、73名COPD患者和86名哮喘患者组成的前瞻性队列进行了从口腔到声门下区域的上气道计算机断层扫描(CT)。使用ITK-SNAP和内部QCT软件评估多尺度肺结构和功能。利用STREAMLINE中的特征重要性估计方法选择潜在相关的上气道指标。分别采用Wilcoxon秩和检验和Pearson相关性分析进行成对比较和相关性分析。Youden指数用于确定相关上气道特征的最佳截断值。
在对QCT结果进行标准化后,OLD患者的口腔至声门上指标更大,尤其是口腔空间空气分数和咽长度更大。这两个指标均与第1秒用力呼气量/用力肺活量呈负相关(R=-0.24;p=0.001)。特征重要性分析确定口腔空间空气分数和标准化咽长度是区分OLD患者与健康对照者的关键特征。口腔空间空气分数值≥0.8预测OLD的敏感性约为100%,特异性为69%。
定量上气道CT测量结合机器学习分析揭示了OLD患者的口咽扩大。