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Genetic heterogeneity of asthma phenotypes identified by a clustering approach

Date Issued
2014-01-01
Author(s)
Siroux, Valérie
González, Juan R.
Bouzigon, Emmanuelle
Curjuric, Ivan  
Boudier, Anne
Imboden, Medea  
Anto, Josep Maria
Gut, Ivo
Jarvis, Deborah
Lathrop, Mark
Omenaas, Ernst Reidar
Pin, Isabelle
Wjst, Mathias
Demenais, Florence
Probst-Hensch, Nicole  
Kogevinas, Manolis
Kauffmann, Francine
DOI
10.1183/09031936.00032713
Abstract
The aim of the study was to identify genetic variants associated with refined asthma phenotypes enabling multiple features of the disease to be taken into account. Latent class analysis (LCA) was applied in 3001 adults ever having asthma recruited in the frame of three epidemiological surveys (the European Community Respiratory Health Survey (ECRHS), the Swiss Study on Air Pollution and Lung Disease in Adults (SAPALDIA) and the Epidemiological Study on the Genetics and Environment of Asthma (EGEA)). 14 personal and phenotypic characteristics, gathered from questionnaires and clinical examination, were used. A genome-wide association study was conducted for each LCA-derived asthma phenotype, compared to subjects without asthma (n=3474). The LCA identified four adult asthma phenotypes, mainly characterised by disease activity, age of asthma onset and atopic status. Associations of genome-wide significance (p>1.25×10(-7)) were observed between "active adult-onset nonallergic asthma" and rs9851461 flanking CD200 (3q13.2) and between "inactive/mild nonallergic asthma" and rs2579931 flanking GRIK2 (6q16.3). Borderline significant results (2.5×10(-7)
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