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Detection of blood culture bacterial contamination using natural language processing.

  • Michael E. Matheny
  • , Fern Fitzhenry
  • , Theodore Speroff
  • , Jacob Hathaway
  • , Harvey J. Murff
  • , Steven H. Brown
  • , Elliot M. Fielstein
  • , Robert S. Dittus
  • , Peter L. Elkin
  • Vanderbilt University

Research output: Contribution to journalArticlepeer-review

16 Scopus citations

Abstract

Microbiology results are reported in semi-structured formats and have a high content of useful patient information. We developed and validated a hybrid regular expression and natural language processing solution for processing blood culture microbiology reports. Multi-center Veterans Affairs training and testing data sets were randomly extracted and manually reviewed to determine the culture and sensitivity as well as contamination results. The tool was iteratively developed for both outcomes using a training dataset, and then evaluated on the test dataset to determine antibiotic susceptibility data extraction and contamination detection performance. Our algorithm had a sensitivity of 84.8% and a positive predictive value of 96.0% for mapping the antibiotics and bacteria with appropriate sensitivity findings in the test data. The bacterial contamination detection algorithm had a sensitivity of 83.3% and a positive predictive value of 81.8%.

Original languageEnglish
Pages (from-to)411-415
Number of pages5
JournalAMIA Annual Symposium proceedings
Volume2009
StatePublished - 2009

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