Scientific Reports (Jan 2022)

A 6-mRNA host response classifier in whole blood predicts outcomes in COVID-19 and other acute viral infections

  • Ljubomir Buturovic,
  • Hong Zheng,
  • Benjamin Tang,
  • Kevin Lai,
  • Win Sen Kuan,
  • Mark Gillett,
  • Rahul Santram,
  • Maryam Shojaei,
  • Raquel Almansa,
  • Jose Ángel Nieto,
  • Sonsoles Muñoz,
  • Carmen Herrero,
  • Nikolaos Antonakos,
  • Panayiotis Koufargyris,
  • Marina Kontogiorgi,
  • Georgia Damoraki,
  • Oliver Liesenfeld,
  • James Wacker,
  • Uros Midic,
  • Roland Luethy,
  • David Rawling,
  • Melissa Remmel,
  • Sabrina Coyle,
  • Yiran E. Liu,
  • Aditya M. Rao,
  • Denis Dermadi,
  • Jiaying Toh,
  • Lara Murphy Jones,
  • Michele Donato,
  • Purvesh Khatri,
  • Evangelos J. Giamarellos-Bourboulis,
  • Timothy E. Sweeney

DOI
https://doi.org/10.1038/s41598-021-04509-9
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 16

Abstract

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Abstract Predicting the severity of COVID-19 remains an unmet medical need. Our objective was to develop a blood-based host-gene-expression classifier for the severity of viral infections and validate it in independent data, including COVID-19. We developed a logistic regression-based classifier for the severity of viral infections and validated it in multiple viral infection settings including COVID-19. We used training data (N = 705) from 21 retrospective transcriptomic clinical studies of influenza and other viral illnesses looking at a preselected panel of host immune response messenger RNAs. We selected 6 host RNAs and trained logistic regression classifier with a cross-validation area under curve of 0.90 for predicting 30-day mortality in viral illnesses. Next, in 1417 samples across 21 independent retrospective cohorts the locked 6-RNA classifier had an area under curve of 0.94 for discriminating patients with severe vs. non-severe infection. Next, in independent cohorts of prospectively (N = 97) and retrospectively (N = 100) enrolled patients with confirmed COVID-19, the classifier had an area under curve of 0.89 and 0.87, respectively, for identifying patients with severe respiratory failure or 30-day mortality. Finally, we developed a loop-mediated isothermal gene expression assay for the 6-messenger-RNA panel to facilitate implementation as a rapid assay. With further study, the classifier could assist in the risk assessment of COVID-19 and other acute viral infections patients to determine severity and level of care, thereby improving patient management and reducing healthcare burden.