A 6-mRNA host response classifier in whole blood predicts outcomes in COVID-19 and other acute viral infections
Type
ArticleAuthor/s
Buturovic, LjubomirZheng, Hong
Tang, Benjamin
Lai, Kevin
Kuan, Win Sen
Gillett, Mark
Santram, Rahul
Shojaei, Maryam
Almansa, Raquel
Nieto, Jose Ángel
Muñoz, Sonsoles
Herrero, Carmen
Antonakos, Nikolaos
Koufargyris, Panayiotis
Kontogiorgi, Marina
Damoraki, Georgia
Liesenfeld, Oliver
Wacker, James
Midic, Uros
Luethy, Roland
Rawling, David
Remmel, Melissa
Coyle, Sabrina
Liu, Yiran E.
Rao, Aditya M.
Dermadi, Denis
Toh, Jiaying
Jones, Lara Murphy
Donato, Michele
Khatri, Purvesh
Giamarellos-Bourboulis, Evangelos J.
Sweeney, Timothy E.
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 ...
See morePredicting 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.
See less
See morePredicting 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.
See less
Date
2022Licence
OtherFaculty/School
Faculty of Medicine and HealthShare