Deep learning-based computed tomography assessment for lung function prediction in chronic obstructive pulmonary disease

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Abstract

Deep learning models based on medical imaging enable numerical functional predictions in combination with regression methods. In this study, we evaluate the prediction performance of a deep learning-based model for the raw value and percent predicted forced expiratory volume in one second (FEV 1 ) in patients with chronic obstructive pulmonary disease (COPD). To this end, ResNet50-based regression prediction models were constructed for FEV 1 and %FEV 1 based on 200 CT scans. 10-fold cross-validation was performed to yield ten models in aggregate. The prediction model for %FEV 1 was externally validated using 20 data points. Two hundred internal CT datasets were assessed using commercial software, producing a regression model predicting airway [%WA] and parenchymal indices [%LAV]. The average Root Mean Squared Error(RMSE) value of the 10 predictive models was 627.65 for FEV 1 as per internal validation and 15.34 for %FEV 1 . The externally validated RMSE for %FEV 1 was 11.52, whereas that for %FEV 1 was 23.18. The predictive model for %FEV 1 yielded significant positive correlations corresponding to both internal and external validation. The proposed models exhibited better prediction accuracy for %FEV 1 than for FEV 1 . Further studies are required to improve the accuracy further and determine the validity of longitudinal applications.

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europepmc
last seen: 2026-05-20T01:45:00.602351+00:00
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last seen: 2026-06-02T02:00:03.124865+00:00
License: CC-BY-4.0