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JAMIA 1998;5:373-381 doi:10.1136/jamia.1998.0050373
  • Original Investigation
  • Research Paper

Association Rules and Data Mining in Hospital Infection Control and Public Health Surveillance

  1. Stephen E Brossette,
  2. Alan P Sprague,
  3. J Michael Hardin,
  4. Ken B Waites,
  5. Warren T Jones,
  6. Stephen A Moser
  1. Affiliation of the authors: University of Alabama at Birmingham, Birmingham, Alabama
  1. Correspondence and reprints: Stephen Moser, PhD, Department of Pathology P246, 619 19th Street South, Birmingham, AL 35233-7331. e-mail: 〈moser{at}uab.edu
  • Received 3 October 1997
  • Accepted 3 March 1998

Abstract

Objectives The authors consider the problem of identifying new, unexpected, and interesting patterns in hospital infection control and public health surveillance data and present a new data analysis process and system based on association rules to address this problem.

Design The authors first illustrate the need for automated pattern discovery and data mining in hospital infection control and public health surveillance. Next, they define association rules, explain how those rules can be used in surveillance, and present a novel process and system—the Data Mining Surveillance System (DMSS)—that utilize association rules to identify new and interesting patterns in surveillance data.

Results Experimental results were obtained using DMSS to analyze Pseudomonas aeruginosa infection control data collected over one year (1996) at University of Alabama at Birmingham Hospital. Experiments using one-, three-, and six-month time partitions yielded 34, 57, and 28 statistically significant events, respectively. Although not all statistically significant events are clinically significant, a subset of events generated in each analysis indicated potentially significant shifts in the occurrence of infection or antimicrobial resistance patterns of P. aeruginosa.

Conclusion The new process and system are efficient and effective in identifying new, unexpected, and interesting patterns in surveillance data. The clinical relevance and utility of this process await the results of prospective studies currently in progress.

Footnotes

  • This work was supported in part by cooperative agreement U47-CCU411451 with the Centers for Disease Control and Prevention (SAM), grant 1688 from the Paralyzed Veterans of America, Spinal Cord Injury Program (KBW), and predoctoral research fellowship LM-00057 from the National Library of Medicine (SEB).

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