Development and Validation of a Multivariable Predictive Model to Distinguish Bacterial From Aseptic Meningitis in Children in the Post-Haemophilus influenzae Era

Author:

Nigrovic Lise E.1,Kuppermann Nathan2,Malley Richard13

Affiliation:

1. Department of Medicine

2. Department of Internal Medicine, Division of Emergency Medicine and the Department of Pediatrics, University of California, Davis, School of Medicine, Davis, California

3. Divisions of Infectious Diseases and Emergency Medicine, Children’s Hospital and Harvard Medical School, Boston, Massachusetts

Abstract

Context. Children with meningitis are routinely admitted to the hospital and administered broad-spectrum antibiotics pending culture results because distinguishing bacterial meningitis from aseptic meningitis is often difficult. Objective. To develop and validate a simple multivariable model to distinguish bacterial meningitis from aseptic meningitis in children using objective parameters available at the time of patient presentation. Design. Retrospective cohort study of all children with meningitis admitted to 1 urban children’s hospital from July 1992 through June 2000, randomly divided into derivation (66%) and validation sets (34%). Patients. Six hundred ninety-six previously healthy children aged 29 days to 19 years, of whom 125 (18%) had bacterial meningitis and 571 (82%) had aseptic meningitis. Intervention. Multivariable logistic regression and recursive partitioning analyses identified the following predictors of bacterial meningitis from the derivation set: Gram stain of cerebrospinal fluid (CSF) showing bacteria, CSF protein ≥80 mg/dL, peripheral absolute neutrophil count ≥10 000 cells/mm3, seizure before or at time of presentation, and CSF absolute neutrophil count ≥1000 cells/mm3. A Bacterial Meningitis Score (BMS) was developed on the derivation set by attributing 2 points for a positive Gram stain and 1 point for each of the other variables. Main Outcome Measure. The accuracy of the BMS when applied to the validation set. Results. A BMS of 0 accurately identified patients with aseptic meningitis without misclassifying any child with bacterial meningitis in the validation set. The negative predictive value of a score of 0 for bacterial meningitis was 100% (95% confidence interval: 97%–100%). A BMS ≥2 predicted bacterial meningitis with a sensitivity of 87% (95% confidence interval: 72%–96%). Conclusions. The BMS accurately identifies children at low (BMS = 0) or high (BMS ≥2) risk of bacterial meningitis. Outpatient management may be considered for children in the low-risk group.

Publisher

American Academy of Pediatrics (AAP)

Subject

Pediatrics, Perinatology and Child Health

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