Evaluation of PHI Hunter in Natural Language Processing Research.

نویسندگان

  • Andrew Redd
  • Steve Pickard
  • Stephane Meystre
  • Jeffrey Scehnet
  • Dan Bolton
  • Julia Heavirland
  • Allison Lynn Weaver
  • Carol Hope
  • Jennifer Hornung Garvin
چکیده

OBJECTIVES We introduce and evaluate a new, easily accessible tool using a common statistical analysis and business analytics software suite, SAS, which can be programmed to remove specific protected health information (PHI) from a text document. Removal of PHI is important because the quantity of text documents used for research with natural language processing (NLP) is increasing. When using existing data for research, an investigator must remove all PHI not needed for the research to comply with human subjects' right to privacy. This process is similar, but not identical, to de-identification of a given set of documents. MATERIALS AND METHODS PHI Hunter removes PHI from free-form text. It is a set of rules to identify and remove patterns in text. PHI Hunter was applied to 473 Department of Veterans Affairs (VA) text documents randomly drawn from a research corpus stored as unstructured text in VA files. RESULTS PHI Hunter performed well with PHI in the form of identification numbers such as Social Security numbers, phone numbers, and medical record numbers. The most commonly missed PHI items were names and locations. Incorrect removal of information occurred with text that looked like identification numbers. DISCUSSION PHI Hunter fills a niche role that is related to but not equal to the role of de-identification tools. It gives research staff a tool to reasonably increase patient privacy. It performs well for highly sensitive PHI categories that are rarely used in research, but still shows possible areas for improvement. More development for patterns of text and linked demographic tables from electronic health records (EHRs) would improve the program so that more precise identifiable information can be removed. CONCLUSIONS PHI Hunter is an accessible tool that can flexibly remove PHI not needed for research. If it can be tailored to the specific data set via linked demographic tables, its performance will improve in each new document set.

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عنوان ژورنال:
  • Perspectives in health information management

دوره 12  شماره 

صفحات  -

تاریخ انتشار 2015