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Revista científica ciencias de la salud

On-line version ISSN 2664-2891

Abstract

MERELES-ARANDA, Eva Fabiana et al. Predictors of severity in patients hospitalized for COVID-19 at the Alto Paraná Integrated Respiratory Hospital, 2021. Rev. cient. cienc. salud [online]. 2022, vol.4, n.1, pp.105-113. ISSN 2664-2891.  https://doi.org/10.53732/rccsalud/04.01.2022.105.

Introduction. The severity of patients hospitalized for COVID-19 can be determined by its sociodemographic characteristics and underlying diseases, as well as changes in symptoms and laboratory results. Objective. to analyze severity predictors in patients hospitalized for COVID-19 at the Alto Paraná Respiratory Integrated Hospital. Methodology. Observational cros-sectional, retrospective study. Clinical charts of patients hospitalized between January and March of 2021 were retrospectively reviewed. Sociodemographic and clinical characteristics and severity risk factors were analyzed. Results. Of the 137 patients studied, 62.0% (n=85) were male. Mortality was 43.8% (n=60), similar in those under and over 60 years old. ICU admission was associated with higher mortality 69.4% (n=43) (p<0.001). The main symptoms were dyspnea 63.5% (n=87), dry cough 55.47% (n=76) and fever 54.0% (n=74), only dyspnea was associated (p<0.05) to death. The most frequent underlying diseases associated with a higher risk of death (p<0.001) were arterial hypertension, diabetes mellitus and obesity. The most frequently altered laboratory parameters were leukocytosis, neutrophilia, lymphopenia, AST, D-dimer, ferritin and glycemia, but the markers associated (p<0.05) with death were lymphopenia, AST and glycemia. Conclusion. Some severity parameters were identified that contributed to the monitoring of the patient's evolution, which can be useful as predictors in the decisions of health professionals for treatment.

Keywords : COVID-19; inpatients; risk factors; biomarkers..

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