Title | Machine learning for screening of at-risk, mild and moderate COPD patients at risk of FEV decline: results from COPDGene and SPIROMICS. |
Publication Type | Publication |
Year | 2023 |
Authors | Wang JM, Labaki WW, Murray S, Martinez FJ, Curtis JL, Hoffman EA, Ram S, Bell AJ, Galbán CJ, Han MK, Hatt C |
Journal | Front Physiol |
Volume | 14 |
Pagination | 1144192 |
Date Published | 2023 |
ISSN | 1664-042X |
Abstract | The purpose of this study was to train and validate machine learning models for predicting rapid decline of forced expiratory volume in 1 s (FEV) in individuals with a smoking history at-risk-for chronic obstructive pulmonary disease (COPD), Global Initiative for Chronic Obstructive Lung Disease (GOLD 0), or with mild-to-moderate (GOLD 1-2) COPD. We trained multiple models to predict rapid FEV decline using demographic, clinical and radiologic biomarker data. Training and internal validation data were obtained from the COPDGene study and prediction models were validated against the SPIROMICS cohort. We used GOLD 0-2 participants ( = 3,821) from COPDGene (60.0 ± 8.8 years, 49.9% male) for variable selection and model training. Accelerated lung function decline was defined as a mean drop in FEV% predicted of > 1.5%/year at 5-year follow-up. We built logistic regression models predicting accelerated decline based on 22 chest CT imaging biomarker, pulmonary function, symptom, and demographic features. Models were validated using = 885 SPIROMICS subjects (63.6 ± 8.6 years, 47.8% male). The most important variables for predicting FEV decline in GOLD 0 participants were bronchodilator responsiveness (BDR), post bronchodilator FEV% predicted (FEV.pp.post), and CT-derived expiratory lung volume; among GOLD 1 and 2 subjects, they were BDR, age, and PRM. In the validation cohort, GOLD 0 and GOLD 1-2 full variable models had significant predictive performance with AUCs of 0.620 ± 0.081 ( = 0.041) and 0.640 ± 0.059 ( < 0.001). Subjects with higher model-derived risk scores had significantly greater odds of FEV decline than those with lower scores. Predicting FEV decline in at-risk patients remains challenging but a combination of clinical, physiologic and imaging variables provided the best performance across two COPD cohorts. |
DOI | 10.3389/fphys.2023.1144192 |
Alternate Journal | Front Physiol |
PubMed ID | 37153221 |
PubMed Central ID | PMC10161244 |
Grant List | R01 HL139690 / HL / NHLBI NIH HHS / United States |
Machine learning for screening of at-risk, mild and moderate COPD patients at risk of FEV decline: results from COPDGene and SPIROMICS.
MS#:
MS289
Manuscript Full Title:
Machine learning for screening of at-risk, mild and moderate COPD patients at risk of FEV decline: results from COPDGene and SPIROMICS.
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