4.8 Article

Landscape of Metabolic Fingerprinting for Diagnosis and Risk Stratification of Sepsis

Journal

FRONTIERS IN IMMUNOLOGY
Volume 13, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fimmu.2022.883628

Keywords

sepsis; septic shock; biomarkers; metabolomics; risk score

Categories

Funding

  1. Medical School of Nanjing University [2021-LCYJ-PY-22]
  2. Key medical research project of Jiangsu Provincial Health Commission [ZDA2020021]
  3. Key project of Medical and Technological Development Program of Nanjing [ZKX18013]

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This study compared the metabolic features between sepsis and control groups and identified differentially expressed metabolites. Risk scores based on these metabolites were established to distinguish different stages of sepsis. The findings suggest that these metabolites can aid in personalized treatment and improve current therapeutic strategies.
BackgroundSepsis and septic shock, a subset of sepsis with higher risk stratification, are hallmarked by high mortality rates and necessitated early and accurate biomarkers. MethodsUntargeted metabolomic analysis was performed to compare the metabolic features between the sepsis and control systemic inflammatory response syndrome (SIRS) groups in discovery cohort, and potential metabolic biomarkers were selected and quantified using multiple reaction monitoring based target metabolite detection method. ResultsDifferentially expressed metabolites including 46 metabolites in positive electrospray ionization (ESI) ion mode, 22 metabolites in negative ESI ion mode, and 4 metabolites with dual mode between sepsis and SIRS were identified and revealed. Metabolites 5-Oxoproline, L-Kynurenine and Leukotriene D4 were selected based on least absolute shrinkage and selection operator regularization logistic regression and differential expressed between sepsis and septic shock group in the training and test cohorts. Respective risk scores for sepsis and septic shock based on a 3-metabolite fingerprint classifier were established to distinguish sepsis from SIRS, septic shock from sepsis. Significant relationship between developed sepsis risk scores, septic shock risk scores and Sequential (sepsis-related) Organ Failure Assessment (SOFA), procalcitonin (PCT) and lactic acid were observed. ConclusionsCollectively, our findings demonstrated that the characteristics of plasma metabolites not only manifest phenotypic variation in sepsis onset and risk stratification of sepsis but also enable individualized treatment and improve current therapeutic strategies.

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