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Prognosis Biomarkers of Severe Sepsis and Septic Shock by 1H NMR Urine Metabolomics in the Intensive Care Unit
Authors:Monica Garcia-Simon  Jose M. Morales  Vicente Modesto-Alapont  Vannina Gonzalez-Marrachelli  Rosa Vento-Rehues  Angela Jorda-Mi?ana  Jose Blanquer-Olivas  Daniel Monleon
Affiliation:1. Department of Critical Care, Clinical University Hospital of Valencia, Valencia, Spain.; 2. Central Unit of Research in Medicine, University of Valencia, Valencia, Spain.; 3. Department of Paediatric Critical Care, University and Polytechnic Hospital La Fe, Valencia, Spain.; 4. Clinical Hospital Research Foundation-INCLIVA, Valencia, Spain.; The Norwegian University of Science and Technology (NTNU), NORWAY,
Abstract:Early diagnosis and patient stratification may improve sepsis outcome by a timely start of the proper specific treatment. We aimed to identify metabolomic biomarkers of sepsis in urine by 1H-NMR spectroscopy to assess the severity and to predict outcomes. Urine samples were collected from 64 patients with severe sepsis or septic shock in the ICU for a 1H NMR spectra acquisition. A supervised analysis was performed on the processed spectra, and a predictive model for prognosis (30-days mortality/survival) of sepsis was constructed using partial least-squares discriminant analysis (PLS-DA). In addition, we compared the prediction power of metabolomics data respect the Sequential Organ Failure Assessment (SOFA) score. Supervised multivariate analysis afforded a good predictive model to distinguish the patient groups and detect specific metabolic patterns. Negative prognosis patients presented higher values of ethanol, glucose and hippurate, and on the contrary, lower levels of methionine, glutamine, arginine and phenylalanine. These metabolites could be part of a composite biopattern of the human metabolic response to sepsis shock and its mortality in ICU patients. The internal cross-validation showed robustness of the metabolic predictive model obtained and a better predictive ability in comparison with SOFA values. Our results indicate that NMR metabolic profiling might be helpful for determining the metabolomic phenotype of worst-prognosis septic patients in an early stage. A predictive model for the evolution of septic patients using these metabolites was able to classify cases with more sensitivity and specificity than the well-established organ dysfunction score SOFA.
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