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

Clicks: 189
ID: 27441
2019
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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.
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blohmke2019diagnosticembo Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Blohmke, Christoph J;Muller, Julius;Gibani, Malick M;Dobinson, Hazel;Shrestha, Sonu;Perinparajah, Soumya;Jin, Celina;Hughes, Harri;Blackwell, Luke;Dongol, Sabina;Karkey, Abhilasha;Schreiber, Fernanda;Pickard, Derek;Basnyat, Buddha;Dougan, Gordon;Baker, Stephen;Pollard, Andrew J;Darton, Thomas C;
Journal embo molecular medicine
Year 2019
DOI 10.15252/emmm.201910431
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