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A predictive model to estimate the risk of serious bacterial infections in febrile infants

Low risk criteria have been defined to identify febrile infants unlikely to have serious bacterial infection (SBI). Using these criteria approximately 40% of all febrile infants can be defined as being at low risk. Of the remaining infants (60%) only 10%-20% have an SBI. No adequate criteria exist t...

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Published in:European journal of pediatrics 1996-06, Vol.155 (6), p.468-473
Main Authors: BERGER, R. M. F, BERGER, M. Y, VAN STEENSEL-MOLL, H. A, DZOLJIC-DANILOVIC, G, DERKSEN-LUBSEN, G
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description Low risk criteria have been defined to identify febrile infants unlikely to have serious bacterial infection (SBI). Using these criteria approximately 40% of all febrile infants can be defined as being at low risk. Of the remaining infants (60%) only 10%-20% have an SBI. No adequate criteria exist to identify these infants. All infants aged 2 weeks-1 year, presenting during a 1-year-period with rectal temperature > or = 38.0 degrees C to the Sophia Children's Hospital were included in a prospective study. Infants with a history of prematurity, perinatal complications, known underlying disease, antibiotic treatment or vaccination during the preceding 48 h were excluded. Clinical and laboratory variables at presentation were evaluated by a multivariate logistic regression model using SBI as the dependent variable. By using likelihood ratios a predictive model was derived, providing a post test probability of SBI for every individual patient. Of the 138 infants included in the study, 33 (24%) had SBI. Logistic regression analysis defined C-reactive protein (CRP), duration of fever, standardized clinical impression score, a history of diarrhoea and focal signs of infection as independent predictors of SBI. CRP, duration of fever, the "standardized clinical impression score", a history of diarrhoea and focal signs of infection were the independent, most powerful predictors of SBI in febrile infants, identified by logistic regression analysis. Although the predictive model is not validated for direct clinical use, it illustrates the clinical potential of the used technique. This technique offers the advantage of assess the probability of SBI in every individual infant. This probability will form the best basis for well-founded decisions in the management of the individual febrile infant.
doi_str_mv 10.1007/BF01955183
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ispartof European journal of pediatrics, 1996-06, Vol.155 (6), p.468-473
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subjects Bacterial infections
Bacterial Infections - diagnosis
Bacterial Infections - epidemiology
Biological and medical sciences
C-reactive protein
C-Reactive Protein - analysis
Children
Computerized, statistical medical data processing and models in biomedicine
Diarrhea
Diarrhea, Infantile - epidemiology
Diarrhea, Infantile - etiology
Female
Fever
Fever of Unknown Origin - etiology
Humans
Infant
Infant, Newborn
Infants
Infections
Likelihood Functions
Male
Medical management aid. Diagnosis aid
Medical sciences
Models, Statistical
Netherlands
Regression Analysis
Risk
Vaccination
title A predictive model to estimate the risk of serious bacterial infections in febrile infants
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