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Clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis

BACKGROUND: About 10-20% of neonates with suspected or proven early onset sepsis (EOS) fail on the empiric antibiotic regimen of ampicillin or penicillin and gentamicin. We aimed to identify clinical and laboratory markers associated with empiric antibiotic treatment failure in neonates with suspect...

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Autores principales: Metsvaht, Tuuli, Pisarev, Heti, Ilmoja, Mari-Liis, Parm, Ülle, Maipuu, Lea, Merila, Mirjam, Müürsepp, Piia, Lutsar, Irja
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2789707/
https://www.ncbi.nlm.nih.gov/pubmed/19930706
http://dx.doi.org/10.1186/1471-2431-9-72
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author Metsvaht, Tuuli
Pisarev, Heti
Ilmoja, Mari-Liis
Parm, Ülle
Maipuu, Lea
Merila, Mirjam
Müürsepp, Piia
Lutsar, Irja
author_facet Metsvaht, Tuuli
Pisarev, Heti
Ilmoja, Mari-Liis
Parm, Ülle
Maipuu, Lea
Merila, Mirjam
Müürsepp, Piia
Lutsar, Irja
author_sort Metsvaht, Tuuli
collection PubMed
description BACKGROUND: About 10-20% of neonates with suspected or proven early onset sepsis (EOS) fail on the empiric antibiotic regimen of ampicillin or penicillin and gentamicin. We aimed to identify clinical and laboratory markers associated with empiric antibiotic treatment failure in neonates with suspected EOS. METHODS: Maternal and early neonatal characteristics predicting failure of empiric antibiotic treatment were identified by univariate logistic regression analysis from a prospective database of 283 neonates admitted to neonatal intensive care unit within 72 hours of life and requiring antibiotic therapy with penicillin or ampicillin and gentamicin. Variables, identified as significant by univariate analysis, were entered into stepwise multiple logistic regression (MLR) analysis and classification and regression tree (CRT) analysis to develop a decision algorithm for clinical application. In order to ensure the earliest possible timing separate analysis for 24 and 72 hours of age was performed. RESULTS: At 24 hours of age neonates with hypoglycaemia ≤ 2.55 mmol/L together with CRP values > 1.35 mg/L or those with BW ≤ 678 g had more than 30% likelihood of treatment failure. In normoglycaemic neonates with higher BW the best predictors of treatment failure at 24 hours were GA ≤ 27 weeks and among those, with higher GA, WBC ≤ 8.25 × 10(9 )L(-1 )together with platelet count ≤ 143 × 10(9 )L(-1). The algorithm allowed capture of 75% of treatment failure cases with a specificity of 89%. By 72 hours of age minimum platelet count ≤ 94.5 × 10(9 )L(-1 )with need for vasoactive treatment or leukopaenia ≤ 3.5 × 10(9 )L(-1 )or leukocytosis > 39.8 × 10(9 )L(-1 )or blood glucose ≤ 1.65 mmol/L allowed capture of 81% of treatment failure cases with the specificity of 88%. The performance of MLR and CRT models was similar, except for higher specificity of the CRT at 72 h, compared to MLR analysis. CONCLUSION: There is an identifiable group of neonates with high risk of EOS, likely to fail on conventional antibiotic therapy.
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spelling pubmed-27897072009-12-08 Clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis Metsvaht, Tuuli Pisarev, Heti Ilmoja, Mari-Liis Parm, Ülle Maipuu, Lea Merila, Mirjam Müürsepp, Piia Lutsar, Irja BMC Pediatr Research article BACKGROUND: About 10-20% of neonates with suspected or proven early onset sepsis (EOS) fail on the empiric antibiotic regimen of ampicillin or penicillin and gentamicin. We aimed to identify clinical and laboratory markers associated with empiric antibiotic treatment failure in neonates with suspected EOS. METHODS: Maternal and early neonatal characteristics predicting failure of empiric antibiotic treatment were identified by univariate logistic regression analysis from a prospective database of 283 neonates admitted to neonatal intensive care unit within 72 hours of life and requiring antibiotic therapy with penicillin or ampicillin and gentamicin. Variables, identified as significant by univariate analysis, were entered into stepwise multiple logistic regression (MLR) analysis and classification and regression tree (CRT) analysis to develop a decision algorithm for clinical application. In order to ensure the earliest possible timing separate analysis for 24 and 72 hours of age was performed. RESULTS: At 24 hours of age neonates with hypoglycaemia ≤ 2.55 mmol/L together with CRP values > 1.35 mg/L or those with BW ≤ 678 g had more than 30% likelihood of treatment failure. In normoglycaemic neonates with higher BW the best predictors of treatment failure at 24 hours were GA ≤ 27 weeks and among those, with higher GA, WBC ≤ 8.25 × 10(9 )L(-1 )together with platelet count ≤ 143 × 10(9 )L(-1). The algorithm allowed capture of 75% of treatment failure cases with a specificity of 89%. By 72 hours of age minimum platelet count ≤ 94.5 × 10(9 )L(-1 )with need for vasoactive treatment or leukopaenia ≤ 3.5 × 10(9 )L(-1 )or leukocytosis > 39.8 × 10(9 )L(-1 )or blood glucose ≤ 1.65 mmol/L allowed capture of 81% of treatment failure cases with the specificity of 88%. The performance of MLR and CRT models was similar, except for higher specificity of the CRT at 72 h, compared to MLR analysis. CONCLUSION: There is an identifiable group of neonates with high risk of EOS, likely to fail on conventional antibiotic therapy. BioMed Central 2009-11-24 /pmc/articles/PMC2789707/ /pubmed/19930706 http://dx.doi.org/10.1186/1471-2431-9-72 Text en Copyright ©2009 Metsvaht et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research article
Metsvaht, Tuuli
Pisarev, Heti
Ilmoja, Mari-Liis
Parm, Ülle
Maipuu, Lea
Merila, Mirjam
Müürsepp, Piia
Lutsar, Irja
Clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis
title Clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis
title_full Clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis
title_fullStr Clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis
title_full_unstemmed Clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis
title_short Clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis
title_sort clinical parameters predicting failure of empirical antibacterial therapy in early onset neonatal sepsis, identified by classification and regression tree analysis
topic Research article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2789707/
https://www.ncbi.nlm.nih.gov/pubmed/19930706
http://dx.doi.org/10.1186/1471-2431-9-72
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