Dept of Physics, Ryerson University, Toronto, ON, Canada.
A. Moslemi and K. Kontogianni are co-first authors.
Eur Respir J. 2022 Sep 22;60(3). doi: 10.1183/13993003.03078-2021. Print 2022 Sep.
There are similarities and differences between chronic obstructive pulmonary disease (COPD) and asthma patients in terms of computed tomography (CT) disease-related features. Our objective was to determine the optimal subset of CT imaging features for differentiating COPD and asthma using machine learning.
COPD and asthma patients were recruited from Heidelberg University Hospital (Heidelberg, Germany). CT was acquired and 93 features were extracted: percentage of low-attenuating area below -950 HU (LAA), low-attenuation cluster (LAC) total hole count, estimated airway wall thickness for an idealised airway with an internal perimeter of 10 mm (Pi10), total airway count (TAC), as well as airway inner/outer perimeters/areas and wall thickness for each of five segmental airways, and the average of those five airways. Hybrid feature selection was used to select the optimum number of features, and support vector machine learning was used to classify COPD and asthma.
95 participants were included (n=48 COPD and n=47 asthma); there were no differences between COPD and asthma for age (p=0.25) or forced expiratory volume in 1 s (p=0.31). In a model including all CT features, the accuracy and F1 score were 80% and 81%, respectively. The top features were: LAA, outer airway perimeter, inner airway perimeter, TAC, outer airway area RB1, inner airway area RB1 and LAC total hole count. In the model with only CT airway features, the accuracy and F1 score were 66% and 68%, respectively. The top features were: inner airway area RB1, outer airway area LB1, outer airway perimeter, inner airway perimeter, Pi10, TAC, airway wall thickness RB1 and TAC LB10.
COPD and asthma can be differentiated using machine learning with moderate-to-high accuracy by a subset of only seven CT features.
慢性阻塞性肺疾病(COPD)和哮喘患者在 CT 疾病相关特征方面既有相似之处,也有不同之处。我们的目标是使用机器学习确定区分 COPD 和哮喘的 CT 成像特征的最佳子集。
从德国海德堡大学医院(海德堡)招募 COPD 和哮喘患者。采集 CT 并提取 93 个特征:-950 HU 以下低衰减区域的百分比(LAA)、低衰减簇(LAC)总孔计数、内周长为 10mm(Pi10)的理想气道的估计气道壁厚度、总气道计数(TAC)、以及五个节段气道的每个气道的内/外周长/面积和壁厚度,以及这五个气道的平均值。混合特征选择用于选择最佳特征数量,并使用支持向量机学习对 COPD 和哮喘进行分类。
纳入 95 名参与者(n=48 例 COPD 和 n=47 例哮喘);COPD 和哮喘在年龄(p=0.25)或 1 秒用力呼气量(p=0.31)方面无差异。在包含所有 CT 特征的模型中,准确性和 F1 评分分别为 80%和 81%。最重要的特征是:LAA、外气道周长、内气道周长、TAC、外气道面积 RB1、内气道面积 RB1 和 LAC 总孔计数。在仅包含 CT 气道特征的模型中,准确性和 F1 评分分别为 66%和 68%。最重要的特征是:内气道面积 RB1、外气道面积 LB1、外气道周长、内气道周长、Pi10、TAC、气道壁厚度 RB1 和 TAC LB10。
使用机器学习,仅通过一组七个 CT 特征即可以中等至高度的准确性区分 COPD 和哮喘。