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Advisor(s)
Abstract(s)
Timely and accurate identification of bloodstream infections (BSIs) in intensive care unit (ICU) patients remains a key challenge, particularly in COVID-19 settings, where immune dysregulation can obscure early clinical signs. Methods: Cytokine profiling was evaluated to discriminate between ICU patients with and without BSIs, and, among those with confirmed BSIs, to further stratify bacterial infections by Gram type. Serum samples from 45 ICU COVID-19 patients were analyzed using a 21-cytokine panel, with feature selection applied to identify candidate markers. Results: A machine learning workflow identified key features, achieving robust performance metrics with AUC values up to 0.97 for BSI classification and 0.98 for Gram typing. Conclusions: In contrast to traditional approaches that focus on individual cytokines or simple ratios, the present analysis employed programmatically generated ratios between pro-inflammatory and anti-inflammatory cytokines, refined through feature selection. Although further validation in larger and more diverse cohorts is warranted, these findings underscore the potential of advanced cytokine-based diagnostics to enhance precision medicine in infection management.
Description
Keywords
Cytokine profiling Bloodstream infections Gram typing ICU diagnostics COVID-19 Machine learning
Citation
Araújo, R., Ramalhete, L., Von Rekowski, C. P., Fonseca, T. A. H., Calado, C. R. C., & Bento, L. (2025). Cytokine-based insights into bloodstream infections and bacterial gram typing in ICU COVID-19 patients. Metabolites, 15(3), 204. https://doi.org/10.3390/metabo15030204
Publisher
MDPI