Expert Systems in Clinical Microbiology

Author:

Winstanley Trevor1,Courvalin Patrice2

Affiliation:

1. Royal Hallamshire Hospital, Department of Microbiology, Sheffield S10 2JF, United Kingdom

2. Institut Pasteur, Unité des Agents Antibactériens, 75724 Paris Cedex 15, France

Abstract

SUMMARY This review aims to discuss expert systems in general and how they may be used in medicine as a whole and clinical microbiology in particular (with the aid of interpretive reading). It considers rule-based systems, pattern-based systems, and data mining and introduces neural nets. A variety of noncommercial systems is described, and the central role played by the EUCAST is stressed. The need for expert rules in the environment of reset EUCAST breakpoints is also questioned. Commercial automated systems with on-board expert systems are considered, with emphasis being placed on the “big three”: Vitek 2, BD Phoenix, and MicroScan. By necessity and in places, the review becomes a general review of automated system performances for the detection of specific resistance mechanisms rather than focusing solely on expert systems. Published performance evaluations of each system are drawn together and commented on critically.

Publisher

American Society for Microbiology

Subject

Infectious Diseases,Microbiology (medical),Public Health, Environmental and Occupational Health,General Immunology and Microbiology,Epidemiology

Reference305 articles.

1. Validation of VITEK 2 Version 4.01 Software for Detection, Identification, and Classification of Glycopeptide-Resistant Enterococci

2. Artificial-intelligence-based hospital-acquired infection control;Adlassnig K. P.;Stud. Health Technol. Inform.,2009

3. Accuracy of four agar diffusion methods and the Vitek 2 automated system for the detection of the methicillin resistance in coagulase negative staphylococci;Aissa N.;Pathol. Biol. (Paris),2004

4. Interlaboratory variation of antibiograms of methicillin-resistant and methicillin-susceptible Staphylococcus aureus strains with conventional and commercial testing systems

5. Evaluation of Methods To Identify the Klebsiella pneumoniae Carbapenemase in Enterobacteriaceae

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