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Diagnostic host gene signature for distinguishing enteric fever from other febrile diseases.

Published version
Peer-reviewed

Type

Article

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Authors

Blohmke, Christoph J  ORCID logo  https://orcid.org/0000-0002-1453-9651
Muller, Julius 
Gibani, Malick M 
Dobinson, Hazel 
Shrestha, Sonu 

Abstract

Misdiagnosis of enteric fever is a major global health problem, resulting in patient mismanagement, antimicrobial misuse and inaccurate disease burden estimates. Applying a machine learning algorithm to host gene expression profiles, we identified a diagnostic signature, which could distinguish culture-confirmed enteric fever cases from other febrile illnesses (area under receiver operating characteristic curve > 95%). Applying this signature to a culture-negative suspected enteric fever cohort in Nepal identified a further 12.6% as likely true cases. Our analysis highlights the power of data-driven approaches to identify host response patterns for the diagnosis of febrile illnesses. Expression signatures were validated using qPCR, highlighting their utility as PCR-based diagnostics for use in endemic settings.

Description

Keywords

biomarker, enteric fever, machine learning, transcriptomics, Diagnosis, Differential, Gene Expression Profiling, Humans, Machine Learning, Molecular Diagnostic Techniques, Nepal, Polymerase Chain Reaction, ROC Curve, Typhoid Fever

Journal Title

EMBO Mol Med

Conference Name

Journal ISSN

1757-4676
1757-4684

Volume Title

11

Publisher

Springer Science and Business Media LLC
Sponsorship
Wellcome Trust (092661/Z/10/Z)