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Classifying asthma control using salivary and fecal bacterial microbiome in children with moderate-to-severe asthma

Authors :
Blankestijn, Jelle M.
Lopez-Rincon, Alejandro
Neerincx, Anne H.
Vijverberg, Susanne J. H.
Hashimoto, Simone
Gorenjak, Mario
Sardón Prado, Olaia
Corcuera-Elosegui, Paula
Korta-Murua, Javier
Pino-Yanes, Maria
Potočnik, Uroš
Bang, Corinna
Franke, Andre
Wolff, Christine
Brandstetter, Susanne
Toncheva, Antoaneta A.
Kheiroddin, Parastoo
Harner, Susanne
Kabesch, Michael
Kraneveld, Aletta D.
Abdel-Aziz, Mahmoud I.
Maitland-van der Zee, Anke H.
Consortium, the SysPharmPediA
Afd Pharmacology
Pharmacology
Pharmacoepidemiology and Clinical Pharmacology
Source :
Pediatric Allergy and Immunology, 34(2), 1. Blackwell Munksgaard
Publication Year :
2023

Abstract

Background: Uncontrolled asthma can lead to severe exacerbations and reduced quality of life. Research has shown that the microbiome may be linked with asthma characteristics; however, its association with asthma control has not been explored. We aimed to investigate whether the gastrointestinal microbiome can be used to discriminate between uncontrolled and controlled asthma in children. Methods: 143 and 103 feces samples were obtained from 143 children with moderate-to-severe asthma aged 6 to 17 years from the SysPharmPediA study. Patients were classified as controlled or uncontrolled asthmatics, and their microbiome at species level was compared using global (alpha/beta) diversity, conventional differential abundance analysis (DAA, analysis of compositions of microbiomes with bias correction), and machine learning [Recursive Ensemble Feature Selection (REFS)]. Results: Global diversity and DAA did not find significant differences between controlled and uncontrolled pediatric asthmatics. REFS detected a set of taxa, including Haemophilus and Veillonella, differentiating uncontrolled and controlled asthma with an average classification accuracy of 81% (saliva) and 86% (feces). These taxa showed enrichment in taxa previously associated with inflammatory diseases for both sampling compartments, and with COPD for the saliva samples. Conclusion: Controlled and uncontrolled children with asthma can be differentiated based on their gastrointestinal microbiome using machine learning, specifically REFS. Our results show an association between asthma control and the gastrointestinal microbiome. This suggests that the gastrointestinal microbiome may be a potential biomarker for treatment responsiveness and thereby help to improve asthma control in children.

Details

Language :
English
ISSN :
09056157
Database :
OpenAIRE
Journal :
Pediatric Allergy and Immunology, 34(2), 1. Blackwell Munksgaard
Accession number :
edsair.narcis........ceb4167c949aa18b2e7c084accb963a1