Scientific Reports (Dec 2023)

Host-response transcriptional biomarkers accurately discriminate bacterial and viral infections of global relevance

  • Emily R. Ko,
  • Megan E. Reller,
  • L. Gayani Tillekeratne,
  • Champica K. Bodinayake,
  • Cameron Miller,
  • Thomas W. Burke,
  • Ricardo Henao,
  • Micah T. McClain,
  • Sunil Suchindran,
  • Bradly Nicholson,
  • Adam Blatt,
  • Elizabeth Petzold,
  • Ephraim L. Tsalik,
  • Ajith Nagahawatte,
  • Vasantha Devasiri,
  • Matthew P. Rubach,
  • Venance P. Maro,
  • Bingileki F. Lwezaula,
  • Wasantha Kodikara-Arachichi,
  • Ruvini Kurukulasooriya,
  • Aruna D. De Silva,
  • Danielle V. Clark,
  • Kevin L. Schully,
  • Deng Madut,
  • J. Stephen Dumler,
  • Cecilia Kato,
  • Renee Galloway,
  • John A. Crump,
  • Geoffrey S. Ginsburg,
  • Timothy D. Minogue,
  • Christopher W. Woods

DOI
https://doi.org/10.1038/s41598-023-49734-6
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 12

Abstract

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Abstract Diagnostic limitations challenge management of clinically indistinguishable acute infectious illness globally. Gene expression classification models show great promise distinguishing causes of fever. We generated transcriptional data for a 294-participant (USA, Sri Lanka) discovery cohort with adjudicated viral or bacterial infections of diverse etiology or non-infectious disease mimics. We then derived and cross-validated gene expression classifiers including: 1) a single model to distinguish bacterial vs. viral (Global Fever-Bacterial/Viral [GF-B/V]) and 2) a two-model system to discriminate bacterial and viral in the context of noninfection (Global Fever-Bacterial/Viral/Non-infectious [GF-B/V/N]). We then translated to a multiplex RT-PCR assay and independent validation involved 101 participants (USA, Sri Lanka, Australia, Cambodia, Tanzania). The GF-B/V model discriminated bacterial from viral infection in the discovery cohort an area under the receiver operator curve (AUROC) of 0.93. Validation in an independent cohort demonstrated the GF-B/V model had an AUROC of 0.84 (95% CI 0.76–0.90) with overall accuracy of 81.6% (95% CI 72.7–88.5). Performance did not vary with age, demographics, or site. Host transcriptional response diagnostics distinguish bacterial and viral illness across global sites with diverse endemic pathogens.