U-BIOPRED clinical adult asthma clusters linked to a subset of sputum omics

Diane Lefaudeux, Bertrand De Meulder, Matthew J. Loza, Nancy Peffer, Anthony Rowe, Frédéric Baribaud, Aruna T. Bansal, Rene Lutter, Ana R. Sousa, Julie Corfield, Ioannis Pandis, Per S. Bakke, Massimo Caruso, Pascal Chanez, Sven Erik Dahlén, Louise J. Fleming, Stephen J. Fowler, Ildiko Horvath, Norbert Krug, Paolo MontuschiMarek Sanak, Thomas Sandstrom, Dominic E. Shaw, Florian Singer, Peter J. Sterk, Graham Roberts, Ian M. Adcock, Ratko Djukanovic, Charles Auffray, Kian Fan Chung*, Nora Adriaens, Hassan Ahmed, Antonios Aliprantis, Kjell Alving, Philipp Badorek, David Balgoma, Clair Barber, An Bautmans, Annelie F. Behndig, Elisabeth Bel, Jorge Beleta, Ann Berglind, Alix Berton, Jeanette Bigler, Hans Bisgaard, Grazyna Bochenek, Michael J. Boedigheimer, Klaus Bøonnelykke, Joost Brandsma, Alexander Mazein, U-BIOPRED Study Group, U-BIOPRED Study Group

*Corresponding author for this work

Research output: Contribution to journalArticleResearchpeer-review

236 Citations (Scopus)

Abstract

Background Asthma is a heterogeneous disease in which there is a differential response to asthma treatments. This heterogeneity needs to be evaluated so that a personalized management approach can be provided. Objectives We stratified patients with moderate-to-severe asthma based on clinicophysiologic parameters and performed an omics analysis of sputum. Methods Partition-around-medoids clustering was applied to a training set of 266 asthmatic participants from the European Unbiased Biomarkers for the Prediction of Respiratory Diseases Outcomes (U-BIOPRED) adult cohort using 8 prespecified clinic-physiologic variables. This was repeated in a separate validation set of 152 asthmatic patients. The clusters were compared based on sputum proteomics and transcriptomics data. Results Four reproducible and stable clusters of asthmatic patients were identified. The training set cluster T1 consists of patients with well-controlled moderate-to-severe asthma, whereas cluster T2 is a group of patients with late-onset severe asthma with a history of smoking and chronic airflow obstruction. Cluster T3 is similar to cluster T2 in terms of chronic airflow obstruction but is composed of nonsmokers. Cluster T4 is predominantly composed of obese female patients with uncontrolled severe asthma with increased exacerbations but with normal lung function. The validation set exhibited similar clusters, demonstrating reproducibility of the classification. There were significant differences in sputum proteomics and transcriptomics between the clusters. The severe asthma clusters (T2, T3, and T4) had higher sputum eosinophilia than cluster T1, with no differences in sputum neutrophil counts and exhaled nitric oxide and serum IgE levels. Conclusion Clustering based on clinicophysiologic parameters yielded 4 stable and reproducible clusters that associate with different pathobiological pathways.

Original languageEnglish
Pages (from-to)1797-1807
Number of pages11
JournalJournal of Allergy and Clinical Immunology
Volume139
Issue number6
DOIs
Publication statusPublished - Jun 2017

Keywords

  • Severe asthma
  • clustering
  • partition-around-medoids algorithm
  • sputum eosinophilia

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