Identification of transcriptomic sepsis endotypes in sub-Saharan Africa: derivation, validation, and global alignment in two Ugandan cohorts

Purpose Sub-Saharan Africa carries the highest global burden of critical illness, yet transcriptomic sepsis endotypes have not been defined in the region. Their clinical relevance and alignment with endotypes identified in high-income countries (HICs) remain unknown. Methods We analyzed data from tw...

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Veröffentlicht in:Intensive care medicine Jg. 51; H. 9; S. 1573 - 1586
Hauptverfasser: Cummings, Matthew J., Lutwama, Julius J., Tomoiaga, Alin S., Zhao, Meng, Owor, Nicholas, Lu, Xuan, Eliku, Peter James, Ross, Jesse E., Nsereko, Christopher, Nayiga, Irene, Kyebambe, Stephen, Nsubuga, John Bosco, Shinyale, Joseph, Asasira, Ignatius, Kiyingi, Tonny, Ochar, Thomas, Kiwubeyi, Moses, Nankwanga, Rittah, Reynolds, Steven J., Nakibuuka, Martina Cathy, Kayiwa, John, Haumba, Mercy, Nakaseegu, Joweria, Che, Xiaoyu, Nie, Kai, Kim-Schulze, Seunghee, Ghosh, Sankar, Lipkin, W. Ian, O’Donnell, Max R., Bakamutumaho, Barnabas
Format: Journal Article
Sprache:Englisch
Veröffentlicht: Berlin/Heidelberg Springer Berlin Heidelberg 01.09.2025
Springer Nature B.V
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ISSN:0342-4642, 1432-1238, 1432-1238
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Zusammenfassung:Purpose Sub-Saharan Africa carries the highest global burden of critical illness, yet transcriptomic sepsis endotypes have not been defined in the region. Their clinical relevance and alignment with endotypes identified in high-income countries (HICs) remain unknown. Methods We analyzed data from two prospective observational cohorts of critically ill adults with sepsis in Uganda (discovery cohort [Tororo, rural], N = 243; validation cohort [Entebbe, urban], N = 112). Unsupervised clustering of whole-blood RNAseq data was used to identify endotypes in the discovery cohort. A random forest classifier was used to predict endotype assignment in the validation cohort. Differential gene expression, pathway enrichment, and digital cytometry were used to define endotype pathobiology and determine overlap with HIC-derived endotypes. Results Two endotypes—Uganda Sepsis Endotypes 1 (USE-1) and 2 (USE-2)—were identified in the discovery cohort. USE-2, marked by neutrophil-driven innate immune activation and lymphocyte suppression, was associated with greater physiological severity and higher mortality (41.3% vs. 22.0%; absolute difference 19.3%, 95% CI 7.6–30.9%), irrespective of HIV, tuberculosis, or malaria infection. A 13-gene classifier (misclassification rate 1.43%) replicated two endotypes in the validation cohort with similar biological and clinical profiles. USE-2 showed strong transcriptional overlap with SRS1 and inflammopathic endotypes but only modest concordance in patient-level assignments. Overlap with Mars1 was variable. Conclusions We identified two transcriptomic sepsis endotypes in Uganda that reflect inter-individual differences in targetable pathobiology and confer prognostic enrichment across high-burden infections. Divergence from HIC-derived endotypes highlights the need for sepsis classifications that are both globally relevant and locally responsive.
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ISSN:0342-4642
1432-1238
1432-1238
DOI:10.1007/s00134-025-08047-0