Author:
Bobak Carly A.,Kang Lili,Workman Lesley,Bateman Lindy,Khan Mohammad S.,Prins Margaretha,May Lloyd,Franchina Flavio A.,Baard Cynthia,Nicol Mark P.,Zar Heather J.,Hill Jane E.
Abstract
AbstractPediatric tuberculosis (TB) remains a global health crisis. Despite progress, pediatric patients remain difficult to diagnose, with approximately half of all childhood TB patients lacking bacterial confirmation. In this pilot study (n = 31), we identify a 4-compound breathprint and subsequent machine learning model that accurately classifies children with confirmed TB (n = 10) from children with another lower respiratory tract infection (LRTI) (n = 10) with a sensitivity of 80% and specificity of 100% observed across cross validation folds. Importantly, we demonstrate that the breathprint identified an additional nine of eleven patients who had unconfirmed clinical TB and whose symptoms improved while treated for TB. While more work is necessary to validate the utility of using patient breath to diagnose pediatric TB, it shows promise as a triage instrument or paired as part of an aggregate diagnostic scheme.
Funder
Burroughs Wellcome Fund
South African Medical Research Council
Bill and Melinda Gates Foundation
National Institutes of Health
Cystic Fibrosis Foundation
National Health and Medical Research Council
Publisher
Springer Science and Business Media LLC
Cited by
25 articles.
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