Mortality prediction in sepsis via gene expression analysis: a community approach

Sweeney Te, Perumal Tm,Ricardo Henao,Marshall Nichols, Howrylak Ja,AM Choi,Jesús F. Bermejo‐Martin,Raquel Almansa,Eduardo Tamayo,Davenport Ee, Burnham Kl,C J Hinds,JC Knight, Woods Cw,SF Kingsmore,G. Ginsburg, Wong Hr,Grant P Parnell,Benjamin Tang, Moldawer Ll, Moore Fe,Larsson Omberg,Purvesh Khatri, Tsalik El, Mangravite Lm, Langley Rj

bioRxiv (Cold Spring Harbor Laboratory)(2016)

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摘要
Abstract Improved risk stratification and prognosis 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 three scientific groups were invited to independently generate prognostic models for 30-day mortality using 12 discovery cohorts (N=650) containing transcriptomic data collected from primarily community-onset sepsis patients. Predictive performance was validated in 5 cohorts of community-onset sepsis patients (N=189) in which the models showed summary AUROCs ranging from 0.765-0.89. Similar performance was observed in 4 cohorts of hospital-acquired sepsis (N=282). Combining the new gene-expression-based prognostic models with prior clinical severity scores led to significant improvement in prediction of 30-day mortality (p<0.01). These models provide an opportunity to develop molecular bedside tests that may improve risk stratification and mortality prediction in patients with sepsis, improving both resource allocation and prognostic enrichment in clinical trials.
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关键词
sepsis,gene expression analysis,mortality,prediction
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