Prediction model of death risk in patients with sepsis and screening of biomarkers for prognosis of patients with myocardial injury.

Heliyon

Laboratory of Emergency Medicine, West China Hospital, and Disaster Medical Center, Sichuan University, Chengdou, 610041, PR China.

Published: March 2024

This study aimed to create a robust prediction model for sepsis patient mortality and identify key biomarkers in those with myocardial injury. A retrospective analysis of 261 sepsis inpatients was conducted, with 44 deaths and 217 recoveries. Key factors were assessed via univariate and multivariate analyses, revealing myocardial injury, shock, and pulmonary infection as independent mortality risk factors. Using LASSO regression, a reliable prediction model was developed and internally validated. Additionally, procalcitonin (PCT) emerged as a sensitive biomarker for myocardial injury prediction in sepsis patients. In summary, this study highlights myocardial injury, shock, and pulmonary infection as independent risk factors for sepsis-related deaths. The LASSO-based prediction model effectively forecasts the prognosis of septic patients with myocardial injury, with PCT showing promise as a predictive biomarker.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10915407PMC
http://dx.doi.org/10.1016/j.heliyon.2024.e27209DOI Listing

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