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eNose breath prints as a surrogate biomarker for classifying patients with asthma by atopy

Authors :
Yennece W.F. Dagelet
Andrew Bush
Gunilla Hedlin
Stephen J. Fowler
Ratko Djukanovic
Rianne de Vries
Louise Fleming
John H. Riley
Sven-Erik Dahlén
Anne H. Neerincx
Urs Frey
Kian Fan Chung
Clare S. Murray
Peter J. Sterk
Mahmoud I. Abdel-Aziz
Paul Brinkman
Ian M. Adcock
Anke H. Maitland-van der Zee
Simone Hashimoto
Karen Knipping
Florian Singer
Aletta D. Kraneveld
Graham Roberts
Susanne J. H. Vijverberg
Commission of the European Communities
Pulmonology
Graduate School
APH - Personalized Medicine
AII - Inflammatory diseases
AII - Cancer immunology
Amsterdam Reproduction & Development
Paediatric Pulmonology
ARD - Amsterdam Reproduction and Development
Source :
Journal of allergy and clinical immunology, 146(5), 1045-1055. Mosby Inc., Abdel-Aziz, Mahmoud I; Brinkman, Paul; Vijverberg, Susanne J H; Neerincx, Anne H; de Vries, Rianne; Dagelet, Yennece W F; Riley, John H; Hashimoto, Simone; Chung, Kian Fan; Djukanovic, Ratko; Fleming, Louise J; Murray, Clare S; Frey, Urs; Bush, Andrew; Singer, Florian; Hedlin, Gunilla; Roberts, Graham; Dahlén, Sven-Erik; Adcock, Ian M; Fowler, Stephen J; ... (2020). eNose breath prints as a surrogate biomarker for classifying patients with asthma by atopy. Journal of allergy and clinical immunology, 146(5), pp. 1045-1055. Elsevier 10.1016/j.jaci.2020.05.038 , U-BIOPRED Study Group 2020, ' eNose breath prints as a surrogate biomarker for classifying patients with asthma by atopy ', The Journal of allergy and clinical immunology, vol. 146, no. 5, pp. 1045-1055 . https://doi.org/10.1016/j.jaci.2020.05.038
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

BACKGROUND: Electronic noses (eNoses) are emerging point-of-care tools that may help in the subphenotyping of chronic respiratory diseases such as asthma.OBJECTIVE: We aimed to investigate whether eNoses can classify atopy in pediatric and adult patients with asthma.METHODS: Participants with asthma and/or wheezing from 4 independent cohorts were included; BreathCloud participants (n = 429), Unbiased Biomarkers in Prediction of Respiratory Disease Outcomes adults (n = 96), Unbiased Biomarkers in Prediction of Respiratory Disease Outcomes pediatric participants (n = 100), and Pharmacogenetics of Asthma Medication in Children: Medication with Anti-Inflammatory Effects 2 participants (n = 30). Atopy was defined as a positive skin prick test result (≥3 mm) and/or a positive specific IgE level (≥0.35 kU/L) for common allergens. Exhaled breath profiles were measured by using either an integrated eNose platform or the SpiroNose. Data were divided into 2 training and 2 validation sets according to the technology used. Supervised data analysis involved the use of 3 different machine learning algorithms to classify patients with atopic versus nonatopic asthma with reporting of areas under the receiver operating characteristic curves as a measure of model performance. In addition, an unsupervised approach was performed by using a bayesian network to reveal data-driven relationships between eNose volatile organic compound profiles and asthma characteristics.RESULTS: Breath profiles of 655 participants (n = 601 adults and school-aged children with asthma and 54 preschool children with wheezing [68.2% of whom were atopic]) were included in this study. Machine learning models utilizing volatile organic compound profiles discriminated between atopic and nonatopic participants with areas under the receiver operating characteristic curves of at least 0.84 and 0.72 in the training and validation sets, respectively. The unsupervised approach revealed that breath profiles classifying atopy are not confounded by other patient characteristics.CONCLUSION: eNoses accurately detect atopy in individuals with asthma and wheezing in cohorts with different age groups and could be used in asthma phenotyping.

Details

ISSN :
00916749
Volume :
146
Database :
OpenAIRE
Journal :
Journal of Allergy and Clinical Immunology
Accession number :
edsair.doi.dedup.....3cf51a1ed1030c29bffe2948f0783eec