Formulation of a model for automating infection surveillance: algorithmic detection of central-line associated bloodstream infection
- Bala Hota1,2,
- Michael Lin1,2,
- Joshua A Doherty3,
- Tara Borlawsky4,
- Keith Woeltje3,
- Kurt Stevenson4,
- Yosef Khan4,
- Jeremy Young4,
- Robert A Weinstein1,2,
- William Trickfor the CDC Prevention Epicenter Program1,2
- 1Department of Medicine, John H Stroger, Jr Hospital, Chicago, Illinois, USA
- 2Department of Medicine, Rush University Medical Center, Chicago, Illinois, USA
- 3Department of Medicine, Washington University Medical Center, St Louis, Missouri, USA
- 4Department of Medicine, Ohio State Medical Center, Columbus, Ohio, USA
- Correspondence to Dr B Hota, 1900 W Polk, Room 1248, Chicago, IL 60612, USA; bhota{at}rush.edu
- Received 26 February 2009
- Accepted 1 September 2009
Abstract
Objective To formulate a model for translating manual infection control surveillance methods to automated, algorithmic approaches.
Design We propose a model for creating electronic surveillance algorithms by translating existing manual surveillance practices into automated electronic methods. Our model suggests that three dimensions of expert knowledge be consulted: clinical, surveillance, and informatics. Once collected, knowledge should be applied through a process of conceptualization, synthesis, programming, and testing.
Results We applied our framework to central vascular catheter associated bloodstream infection surveillance, a major healthcare performance outcome measure. We found that despite major barriers such as differences in availability of structured data, in types of databases used and in semantic representation of clinical terms, bloodstream infection detection algorithms could be deployed at four very diverse medical centers.
Conclusions We present a framework that translates existing practice—manual infection detection—to an automated process for surveillance. Our experience details barriers and solutions discovered during development of electronic surveillance for central vascular catheter associated bloodstream infections at four hospitals in a variety of data environments. Moving electronic surveillance to the next level—availability at a majority of acute care hospitals nationwide—would be hastened by the incorporation of necessary data elements, vocabularies and standards into commercially available electronic health records.
Footnotes
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Funding This study was provided by Grants U01 CI 000327-01, U01 C1 000333 and U01 CI000328-03 from the Centers for Disease Control and Prevention.
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Competing interests None.
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Provenance and peer review Not commissioned; externally peer reviewed.









