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Nosocomial Infections in Surgical Patients: Comparison of Two Measures of Intrinsic Patient Risk

Published online by Cambridge University Press:  02 January 2015

Miguel Delgado-Rodríguez*
Affiliation:
Division of Preventive Medicine and Public Health, School of Medicine, University of Cantabria, Santander, Jaén, Spain Division of Health Programs, Provincial Office for Health, Jaén, Spain
María Sillero-Arenas
Affiliation:
Division of Health Programs, Provincial Office for Health, Jaén, Spain
Marcelino Medina-Cuadros
Affiliation:
Service of General Surgery, General Hospital Ciudad de Jaén, Jaén, Spain Division of Health Programs, Provincial Office for Health, Jaén, Spain
Gabriel Martínez-Gallego
Affiliation:
Service of General Surgery, General Hospital Ciudad de Jaén, Jaén, Spain Division of Health Programs, Provincial Office for Health, Jaén, Spain
*
Division of Preventive Medicine and Public Health, School of Medicine, University of Cantabria, Avenida Cardenal Herrera Oria s/n, 39011-Santander, Spain

Abstract

Objective:

To compare, in subjects undergoing general surgery, two measures of intrinsic patient risk for nosocomial infection: the Study on the Efficacy of Nosocomial Infection Control (SENIC) index and the National Nosocomial Infection Surveillance (NNIS) System index.

Design:

Prospective cohort study, with follow-up for 1 month after hospital discharge.

Setting:

The general surgery service of a tertiary hospital.

Main Outcome Measure:

Surgical-site infection.

Patients:

1,483 subjects aged 10 to 92 years.

Results:

During follow-up, 155 patients developed nosocomial infection, yielding a cumulative incidence of 10.5%. The NNIS index showed a linear trend with both crude and adjusted (for SENIC index) rates of surgicalwound infection. The SENIC index did not exhibit any linear trend with adjusted (for NNIS index) rates of surgical-wound infection. To delineate whether the SENIC index added explanatory information to the NNIS index (or vice versa), we regressed each variable on the other. Logistic regression analyses confirmed the results of stratified analysis: residuals of the NNIS index added discriminating ability to the SENIC index, whereas residuals of the SENIC index did not improve the predictive power of the NNIS index.

Conclusions:

The NNIS index had a better ability than the SENIC index for discriminating and predicting risk of surgical-wound infection

Type
Original Articles
Copyright
Copyright © The Society for Healthcare Epidemiology of America 1997

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