Interpretable chronic obstructive pulmonary disease identification using chest X-ray radiomics: a multicenter study
Qian Zhou, Weihao Zhai, Taohu Zhou, Yi Wang, Xiuxiu Zhou, Xiaoqing Lin, Jie Li, Huawei Wu, Qi Dai, Yanqing Ma, Fangyi Xu, Hong Zhang, Yanming Ge, Li Fan

TL;DR
A new model combining chest X-ray data and clinical info helps identify COPD with high accuracy and clear explanations.
Contribution
Develops an interpretable radiomic-clinical model for COPD identification validated across multiple centers.
Findings
The combined model outperformed clinical-only models in COPD identification across multiple datasets.
SHAP analysis showed radiomic features were the most important for COPD identification, followed by age, sex, and smoking history.
Local SHAP analysis provides intuitive visualization of individual-level model decisions.
Abstract
To construct and validate a combined model integrating chest X-ray (CXR)-based radiomic features and clinical characteristics for chronic obstructive pulmonary disease (COPD) identification, while enhancing model interpretability. Paired CXR images and clinical data were collected from 17 hospitals between January 2017 and December 2023. Data from 11 centers were divided into a training cohort and an internal validation cohort at a 7:3 ratio, with data from the remaining 6 centers serving as an external validation cohort. Three models (radiomic model, clinical model, and combined model) were constructed, and the SHapley Additive exPlanations (SHAP) method was used to interpret model performance. A total of 2433 participants were enrolled, with a mean age of (66.9 ± 11.4) years, including 1564 males and 819 COPD patients. The radiomic model achieved AUCs of 0.760, 0.754, and 0.764 in…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Chronic Obstructive Pulmonary Disease (COPD) Research · Radiology practices and education
