败血症
医学
聚类分析
信息学
凝血病
转录组
生物信息学
计算生物学
重症监护医学
内科学
人工智能
计算机科学
基因
生物
遗传学
基因表达
工程类
电气工程
作者
Timothy E. Sweeney,Tej D. Azad,Michele Donato,Winston Haynes,Thanneer M. Perumal,Ricardo Henao,Jesús F. Bermejo-Martín,Raquel Almansa,Eduardo Tamayo,Judith A. Howrylak,Augustine M.K. Choi,Grant P. Parnell,Benjamin Tang,Marshall Nichols,Christopher W. Woods,Geoffrey S. Ginsburg,Stephen F. Kingsmore,Larsson Omberg,Lara M. Mangravite,Hector R. Wong
标识
DOI:10.1097/ccm.0000000000003084
摘要
Objectives: To find and validate generalizable sepsis subtypes using data-driven clustering. Design: We used advanced informatics techniques to pool data from 14 bacterial sepsis transcriptomic datasets from eight different countries ( n = 700). Setting: Retrospective analysis. Subjects: Persons admitted to the hospital with bacterial sepsis. Interventions: None. Measurements and Main Results: A unified clustering analysis across 14 discovery datasets revealed three subtypes, which, based on functional analysis, we termed “Inflammopathic, Adaptive, and Coagulopathic.” We then validated these subtypes in nine independent datasets from five different countries ( n = 600). In both discovery and validation data, the Adaptive subtype is associated with a lower clinical severity and lower mortality rate, and the Coagulopathic subtype is associated with higher mortality and clinical coagulopathy. Further, these clusters are statistically associated with clusters derived by others in independent single sepsis cohorts. Conclusions: The three sepsis subtypes may represent a unifying framework for understanding the molecular heterogeneity of the sepsis syndrome. Further study could potentially enable a precision medicine approach of matching novel immunomodulatory therapies with septic patients most likely to benefit.
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