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Article Abstract

Background: The objective was to evaluate the combined utility of alertness-vigilance-pain-unresponsiveness (AVPU) scoring and serological factors in predicting outcomes for children with acute respiratory infections (ARIs) in the emergency department.

Methods: This retrospective cohort study with a case-control design included 100 children with ARIs admitted to a pediatric department from May 2022 to May 2024. Patients were divided into the good prognosis group (GPG) and the poor prognosis group (PPG) based on their outcomes. Clinical data, vital signs, alertness-vigilance-pain-unresponsiveness (AVPU) scores, serum inflammatory markers (SIMs), immunoglobulin levels, and immune cell counts were compared between the two groups.

Results: The GPG had significantly lower WBC, CRP, IL-6, and PCT levels than the PPG. AVPU scores were substantially lower in the PPG. Pearson correlation analysis revealed no notable correlation between AVPU scores and SIMs. Receiver operating characteristic (ROC) curve analysis showed that AVPU scores had higher sensitivity and specificity for predicting unfavourable outcomes than SIMs.

Conclusions: AVPU scores and SIMs are valuable predictors of unfavourable outcomes in pediatric ARIs. Combined testing of AVPU scores and SIMs may improve predictive performance. These findings can inform early identification and timely intervention for children with ARIs at risk of unfavourable outcomes.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC12357632PMC
http://dx.doi.org/10.5937/jomb0-53846DOI Listing

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