A community approach to mortality prediction in sepsis via gene expression analysis.
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.
Type
Journal articleSubject
HumansCommunity-Acquired Infections
Cross Infection
Sepsis
Prognosis
Severity of Illness Index
Gene Expression Profiling
Models, Theoretical
Biomarkers
Permalink
https://hdl.handle.net/10161/26958Published Version (Please cite this version)
10.1038/s41467-018-03078-2Publication Info
Sweeney, Timothy E; Perumal, Thanneer M; Henao, Ricardo; Nichols, Marshall; Howrylak,
Judith A; Choi, Augustine M; ... Langley, Raymond J (2018). A community approach to mortality prediction in sepsis via gene expression analysis.
Nature communications, 9(1). pp. 694. 10.1038/s41467-018-03078-2. Retrieved from https://hdl.handle.net/10161/26958.This is constructed from limited available data and may be imprecise. To cite this
article, please review & use the official citation provided by the journal.
Collections
More Info
Show full item recordScholars@Duke
Geoffrey Steven Ginsburg
Adjunct Professor in the Department of Medicine
Dr. Geoffrey S. Ginsburg's research interests are in the development of novel paradigms
for developing and translating genomic information into medical practice and the integration
of personalized medicine into health care.
Ricardo Henao
Associate Professor in Biostatistics & Bioinformatics
Ephraim Tsalik
Adjunct Associate Professor in the Department of Medicine
My research at Duke has focused on understanding the dynamic between host and pathogen
so as to discover and develop host-response markers that can diagnose and predict
health and disease. This new and evolving approach to diagnosing illness has the
potential to significantly impact individual as well as public health considering
the rise of antibiotic resistance.
With any potential infectious disease diagnosis, it is difficult, if not impossible,
to determine at the time of pre
Christopher Wildrick Woods
Wolfgang Joklik Distinguished Professor of Global Health
1. Emerging Infections 2. Global Health 3. Epidemiology of infectious diseases
4. Clinical microbiology and diagnostics 5. Bioterrorism Preparedness 6. Surveillance
for communicable diseases 7. Antimicrobial resistance
Alphabetical list of authors with Scholars@Duke profiles.

Articles written by Duke faculty are made available through the campus open access policy. For more information see: Duke Open Access Policy
Rights for Collection: Scholarly Articles
Works are deposited here by their authors, and represent their research and opinions, not that of Duke University. Some materials and descriptions may include offensive content. More info