Identification of Asthma Phenotypes Using Cluster Analysis in the Severe Asthma Research Program
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- 15 February 2010
- journal article
- research article
- Published by American Thoracic Society in American Journal of Respiratory and Critical Care Medicine
- Vol. 181 (4), 315-323
- https://doi.org/10.1164/rccm.200906-0896oc
Abstract
Rationale: The Severe Asthma Research Program cohort includes subjects with persistent asthma who have undergone detailed phenotypic characterization. Previous univariate methods compared features of mild, moderate, and severe asthma. Objectives: To identify novel asthma phenotypes using an unsupervised hierarchical cluster analysis. Methods: Reduction of the initial 628 variables to 34 core variables was achieved by elimination of redundant data and transformation of categorical variables into ranked ordinal composite variables. Cluster analysis was performed on 726 subjects. Measurements and Main Results: Five groups were identified. Subjects in Cluster 1 (n = 110) have early onset atopic asthma with normal lung function treated with two or fewer controller medications (82%) and minimal health care utilization. Cluster 2 (n = 321) consists of subjects with early-onset atopic asthma and preserved lung function but increased medication requirements (29% on three or more medications) and health care utilization. Cluster 3 (n = 59) is a unique group of mostly older obese women with late-onset nonatopic asthma, moderate reductions in FEV1, and frequent oral corticosteroid use to manage exacerbations. Subjects in Clusters 4 (n = 120) and 5 (n = 116) have severe airflow obstruction with bronchodilator responsiveness but differ in to their ability to attain normal lung function, age of asthma onset, atopic status, and use of oral corticosteroids. Conclusions: Five distinct clinical phenotypes of asthma have been identified using unsupervised hierarchical cluster analysis. All clusters contain subjects who meet the American Thoracic Society definition of severe asthma, which supports clinical heterogeneity in asthma and the need for new approaches for the classification of disease severity in asthma.Keywords
This publication has 43 references indexed in Scilit:
- Pediatric Asthma: A Different DiseaseProceedings of the American Thoracic Society, 2009
- Noninvasive Markers of Airway Inflammation in AsthmaClinical and Translational Science, 2009
- A Multivariate Analysis of Risk Factors for the Air-Trapping Asthmatic Phenotype as Measured by Quantitative CT AnalysisChest, 2009
- Airway Remodeling Measured by Multidetector CT Is Increased in Severe Asthma and Correlates With PathologyChest, 2008
- Alterations of the Arginine Metabolome in AsthmaAmerican Journal of Respiratory and Critical Care Medicine, 2008
- Molecular phenotyping of severe asthma using pattern recognition of bronchoalveolar lavage–derived cytokinesJournal of Allergy and Clinical Immunology, 2008
- Overweight, Obesity, and Incident AsthmaAmerican Journal of Respiratory and Critical Care Medicine, 2007
- IL4Rα Mutations Are Associated with Asthma Exacerbations and Mast Cell/IgE ExpressionAmerican Journal of Respiratory and Critical Care Medicine, 2007
- Characterization of the severe asthma phenotype by the National Heart, Lung, and Blood Institute's Severe Asthma Research ProgramJournal of Allergy and Clinical Immunology, 2007
- Features of severe asthma in school-age children: Atopy and increased exhaled nitric oxideJournal of Allergy and Clinical Immunology, 2006