Αρχειοθήκη ιστολογίου

Πέμπτη 13 Δεκεμβρίου 2018

Data‐driven adult asthma phenotypes based on clinical characteristics are associated with asthma outcomes twenty years later

Abstract

Background

Research based on cluster analyses led to the identification of particular phenotypes confirming phenotypic heterogeneity of asthma. The long‐term clinical course of asthma phenotypes defined by clustering analysis remains unknown, although it is a key aspect to underpin their clinical relevance. We aimed to estimate risk of poor asthma events between asthma clusters identified 20 years earlier.

Methods

The study relied on two cohorts of adults with asthma with 20‐year follow‐up, ECRHS (European Community Respiratory Health Survey) and EGEA (Epidemiological study on Genetics and Environment of Asthma). Regression models were used to compare asthma characteristics (current asthma, asthma exacerbations, asthma control, quality of life and FEV1) at follow‐up and the course of FEV1 between seven cluster‐based asthma phenotypes identified 20 years earlier.

Results

The analysis included 1325 adults with ever asthma. For each asthma characteristic assessed at follow‐up, the risk for adverse outcomes differed significantly between the seven asthma clusters identified at baseline. As compared with the mildest asthma phenotype, ORs (95%CI) for asthma exacerbations varied from 0.9 (0.4 to 2.0) to 4.0 (2.0 to 7.8) and the regression estimates (95%CI) for FEV1% predicted varied from 0.6 (‐3.5 to 4.6) to ‐9.9 (‐14.2 to ‐5.5) between clusters. Change of FEV1 over time did not differ significantly across clusters.

Conclusion

Our findings show that the long‐term risk for poor asthma outcomes differed between comprehensive adult asthma phenotypes identified 20‐years earlier, and suggest a strong tracking of asthma activity and impaired lung function over time.

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