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  • Title: External validation of the sepsis severity score.
    Author: Wełna M, Adamik B, Goździk W, Kübler A.
    Journal: Int J Immunopathol Pharmacol; 2020; 34():2058738420936386. PubMed ID: 32602801.
    Abstract:
    INTRODUCTION: Sepsis is defined as a life-threatening organ dysfunction caused by a dysregulated host response to infection. Mortality rates are high, exceeding 50% in patients with septic shock. The sepsis severity score (SSS) was developed to determine the severity of sepsis and as a prognostic model. The aim of this study was to externally validate the SSS model. METHODS: Calibration and discrimination of the SSS were retrospectively evaluated using data from a single-center sepsis registry. RESULTS: Data from 156 septic patients were recorded; 56% of them had septic shock, 94% of patients required mechanical ventilation. The observed hospital mortality was 60.3%. The mean SSS value was 94.4 (95% CI 90.5-98.3). The SSS presented excellent discrimination with an area under the receiver operating characteristic curve (AUC) of 0.806 (95% CI 0.734-0.866). The pairwise comparison of APACHE II (AUC = 0.789; 95% CI 0.715-0.851) with SSS and 1st day SOFA (AUC = 0.75; 95% CI 0.673-0.817) with SSS revealed no significant differences in discrimination between the models. The calibration of the SSS was good with the Hosmer-Lemeshow goodness-of-fit H test 9.59, P > 0.05. Analyses of calibration curve show absence of accurate predictions in lower deciles of lower risk (2nd and 4th). CONCLUSION: The SSS demonstrated excellent discrimination. The calibration evaluation gave conflicting results; the H-L test result indicated a good calibration, while the visual analysis of the calibration curve suggested the opposite. The SSS requires further evaluation before it can be safely recommended as an outcome prediction model.
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