Katherine E Goodman1, Justin Lessler1, Anthony D Harris2, Aaron M Milstone1, Pranita D Tamma3. 1. Department of Epidemiology,Johns Hopkins Bloomberg School of Public Health,Baltimore,Maryland. 2. Department of Epidemiology and Public Health,University of Maryland School of Medicine,Baltimore,Maryland. 3. Division of Infectious Diseases, Department of Pediatrics,Johns Hopkins University School of Medicine,Baltimore,Maryland.
Abstract
BACKGROUND: Timely identification of multidrug-resistant gram-negative infections remains an epidemiological challenge. Statistical models for predicting drug resistance can offer utility where rapid diagnostics are unavailable or resource-impractical. Logistic regression-derived risk scores are common in the healthcare epidemiology literature. Machine learning-derived decision trees are an alternative approach for developing decision support tools. Our group previously reported on a decision tree for predicting ESBL bloodstream infections. Our objective in the current study was to develop a risk score from the same ESBL dataset to compare these 2 methods and to offer general guiding principles for using each approach. METHODS: Using a dataset of 1,288 patients with Escherichia coli or Klebsiella spp bacteremia, we generated a risk score to predict the likelihood that a bacteremic patient was infected with an ESBL-producer. We evaluated discrimination (original and cross-validated models) using receiver operating characteristic curves and C statistics. We compared risk score and decision tree performance, and we reviewed their practical and methodological attributes. RESULTS: In total, 194 patients (15%) were infected with ESBL-producing bacteremia. The clinical risk score included 14 variables, compared to the 5 decision-tree variables. The positive and negative predictive values of the risk score and decision tree were similar (>90%), but the C statistic of the risk score (0.87) was 10% higher. CONCLUSIONS: A decision tree and risk score performed similarly for predicting ESBL infection. The decision tree was more user-friendly, with fewer variables for the end user, whereas the risk score offered higher discrimination and greater flexibility for adjusting sensitivity and specificity.
BACKGROUND: Timely identification of multidrug-resistant gram-negative infections remains an epidemiological challenge. Statistical models for predicting drug resistance can offer utility where rapid diagnostics are unavailable or resource-impractical. Logistic regression-derived risk scores are common in the healthcare epidemiology literature. Machine learning-derived decision trees are an alternative approach for developing decision support tools. Our group previously reported on a decision tree for predicting ESBL bloodstream infections. Our objective in the current study was to develop a risk score from the same ESBL dataset to compare these 2 methods and to offer general guiding principles for using each approach. METHODS: Using a dataset of 1,288 patients with Escherichia coli or Klebsiella spp bacteremia, we generated a risk score to predict the likelihood that a bacteremic patient was infected with an ESBL-producer. We evaluated discrimination (original and cross-validated models) using receiver operating characteristic curves and C statistics. We compared risk score and decision tree performance, and we reviewed their practical and methodological attributes. RESULTS: In total, 194 patients (15%) were infected with ESBL-producing bacteremia. The clinical risk score included 14 variables, compared to the 5 decision-tree variables. The positive and negative predictive values of the risk score and decision tree were similar (>90%), but the C statistic of the risk score (0.87) was 10% higher. CONCLUSIONS: A decision tree and risk score performed similarly for predicting ESBL infection. The decision tree was more user-friendly, with fewer variables for the end user, whereas the risk score offered higher discrimination and greater flexibility for adjusting sensitivity and specificity.
Authors: Juan González Del Castillo; Agustín Julián-Jiménez; Julio Javier Gamazo-Del Rio; Eric Jorge García-Lamberechts; Ferrán Llopis-Roca; Josep María Guardiola Tey; Mikel Martínez-Ortiz de Zarate; Carmen Navarro Bustos; Pascual Piñera Salmerón; Jesús Álvarez-Manzanares; María Del Mar Ortega Romero; Martin Ruiz Grinspan; Susana García Gutiérrez; Francisco Javier Martín-Sánchez; Francisco Javier Candel González Journal: Eur J Clin Microbiol Infect Dis Date: 2019-11-13 Impact factor: 3.267
Authors: Sara M Karaba; Katherine E Goodman; Joe Amoah; Sara E Cosgrove; Pranita D Tamma Journal: Antimicrob Agents Chemother Date: 2021-07-16 Impact factor: 5.191