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A community approach to mortality prediction in sepsis via gene expression analysis

Authors :
Katie L. Burnham
Raymond J. Langley
Jesus F. Bermejo-Martin
Lyle L. Moldawer
Raquel Almansa
Thanneer M. Perumal
Christopher W. Woods
Julian C. Knight
Frederick E. Moore
Benjamin Tang
Ephraim L. Tsalik
Ricardo Henao
Eduardo Tamayo
Augustine M.K. Choi
Emma E. Davenport
Judie A. Howrylak
Marshall Nichols
Grant P Parnell
Timothy E. Sweeney
Charles J. Hinds
Stephen F. Kingsmore
Purvesh Khatri
Hector R. Wong
Geoffrey S. Ginsburg
Lara M. Mangravite
Larsson Omberg
Source :
Nature Communications, Vol 9, Iss 1, Pp 1-10 (2018), Nature Communications
Publication Year :
2018
Publisher :
Springer Science and Business Media LLC, 2018.

Abstract

Improved risk stratification and prognosis prediction in sepsis is a critical unmet need. Clinical severity scores and available assays such as blood lactate reflect global illness severity with suboptimal performance, and do not specifically reveal the underlying dysregulation of sepsis. Here, we present prognostic models for 30-day mortality generated independently by three scientific groups by using 12 discovery cohorts containing transcriptomic data collected from primarily community-onset sepsis patients. Predictive performance is validated in five cohorts of community-onset sepsis patients in which the models show summary AUROCs ranging from 0.765–0.89. Similar performance is observed in four cohorts of hospital-acquired sepsis. Combining the new gene-expression-based prognostic models with prior clinical severity scores leads to significant improvement in prediction of 30-day mortality as measured via AUROC and net reclassification improvement index These models provide an opportunity to develop molecular bedside tests that may improve risk stratification and mortality prediction in patients with sepsis.<br />Sepsis is characterized by deregulated host response to infection. Efficient therapies are still needed but a limitation for sepsis treatment is the heterogeneity in patients. Here Sweeney et al. generate prognostic models based on gene expression to improve risk stratification classification and prediction for 30-day mortality of patients.

Details

ISSN :
20411723
Volume :
9
Database :
OpenAIRE
Journal :
Nature Communications
Accession number :
edsair.doi.dedup.....761438d76d25d0d24452682871f47006