
Antibiogram-Derived Radial Decision Trees: An Innovative Approach to Susceptibility Data Display
Author(s) -
Rocco J. Perla,
Paul P. Belliveau
Publication year - 2005
Publication title -
american journal of infectious diseases
Language(s) - English
Resource type - Journals
eISSN - 1558-6340
pISSN - 1553-6203
DOI - 10.3844/ajidsp.2005.124.127
Subject(s) - antibiogram , decision tree , computer science , environmental science , materials science , artificial intelligence , microbiology and biotechnology , biology , antibiotics , antibiotic resistance
Hospital antibiograms (ABGMs) are often presented in the form of large 2-factor (single organism vs. single antimicrobial) tables. Presenting susceptibility data in this fashion, although of value, does have limitations relative to drug resistant subpopulations. As the crisis of antimicrobial drug-resistance continues to escalate globally, clinicians need (1) to have access to susceptibility data that, for isolates resistant to first-line drugs, indicates susceptibility to second line drugs and (2) to understand the probabilities of encountering such organisms in a particular institution. This article describes a strategy used to transform data in a hospital ABGM into a probability-based radial decision tree (RDT) that can be used as a guide to empiric antimicrobial therapy. Presenting ABGM data in the form of a radial decision tree versus a table makes it easier to visually organize complex data and to demonstrate different levels of therapeutic decision-making. The RDT model discussed here may also serve as a more effective tool to understand the prevalence of different resistant subpopulations in a given institution compared to the traditional ABGM