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Using natural language processing to improve accuracy of automated notifiable disease reporting

The reporting of notifiable diseases by health care providers is currently inadequate. We examined whether using a natural language processing (NLP) system results in improved accuracy and completeness of automated electronic laboratory reporting (ELR) of notifiable conditions. We used data from a community-wide health information exchange that has automated ELR functionality. We focused on methicillin-resistant Staphylococcus Aureus (MRSA), a reportable infection found in unstructured, free-text culture result reports, using the Regenstrief Extraction tool (REX) for this work. REX processed 64,554 reports that mentioned MRSA and we compared its output to a gold standard (human review). REX correctly identified 39,491(99.96%) of the 39,508 reports positive for MRSA, and committed only 74 false positive errors. It achieved high sensitivity, specificity, positive predicted value and F-measure. REX identified over two times as many MRSA positive reports as the ELR system without NLP. Using NLP can improve the reporting completeness and accuracy of automated ELR.

Author(s)
Friedlin J, Grannis S, Overhage JM
Journal
AMIA Annu Symp Proc
Publication Year
2008
Publication Month
Nov 6
Page Number
207-11
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