Identification of Asthma Phenotypes in the Spanish MEGA Cohort Study Using Cluster Analysis
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Elsevier
Abstract
Introduction
The definition of asthma phenotypes has not been fully established, neither there are cluster studies showing homogeneous results to solidly establish clear phenotypes. The purpose of this study was to develop a classification algorithm based on unsupervised cluster analysis, identifying clusters that represent clinically relevant asthma phenotypes that may share asthma-related outcomes.
Methods
We performed a multicentre prospective cohort study, including adult patients with asthma (N=512) from the MEGA study (Mechanisms underlying the Genesis and evolution of Asthma). A standardised clinical history was completed for each patient. Cluster analysis was performed using the kernel k-groups algorithm.
Results
Four clusters were identified. Cluster 1 (31.5% of subjects) includes adult-onset atopic patients with better lung function, lower BMI, good asthma control, low ICS dose, and few exacerbations. Cluster 2 (23.6%) is made of adolescent-onset atopic asthma patients with normal lung function, but low adherence to treatment (59% well-controlled) and smokers (48%). Cluster 3 (17.1%) includes adult-onset patients, mostly severe non-atopic, with overweight, the worse lung function and asthma control, and receiving combination of treatments. Cluster 4 (26.7%) consists of the elderly-onset patients, mostly female, atopic (64%), with high BMI and normal lung function, prevalence of smokers and comorbidities.
Conclusion
We defined four phenotypes of asthma using unsupervised cluster analysis. These clusters are clinically relevant and differ from each other as regards FEV1, age of onset, age, BMI, atopy, asthma severity, exacerbations, control, social class, smoking and nasal polyps.
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https://doi.org/10.1016/j.arbres.2023.01.007Sponsors
This study has been supported by Sanofi [02/055], the Health Research Fund (Fondo de Investigación Sanitaria – FIS [PI15/00803]), [PI15/01900], the Merck Health Foundation, 6CIBER (Biomedical Research Centre Network) Respiratory Diseases (Centro de Investigación Biomédica en Red – Enfermedades Res- piratorias [CIBERES]), a Carlos III Institute of Health Initiative, and European Regional Development Funds (ERDF). Dr. Nieto-Fontarigo is recipient of a Sara Borrell Fellowship from Instituto de Salud Carlos III (European Social Fund, ESF+).
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Attribution-NonCommercial-NoDerivatives 4.0 International








