| The MITRE Identification Scrubber Toolkit: design, training, and assessment. | |
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MedLine Citation:
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PMID: 20951082 Owner: NLM Status: In-Process |
Abstract/OtherAbstract:
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PURPOSE: Medical records must often be stripped of patient identifiers, or de-identified, before being shared. De-identification by humans is time-consuming, and existing software is limited in its generality. The open source MITRE Identification Scrubber Toolkit (MIST) provides an environment to support rapid tailoring of automated de-identification to different document types, using automatically learned classifiers to de-identify and protect sensitive information. METHODS: MIST was evaluated with four classes of patient records from the Vanderbilt University Medical Center: discharge summaries, laboratory reports, letters, and order summaries. We trained and tested MIST on each class of record separately, as well as on pooled sets of records. We measured precision, recall, F-measure and accuracy at the word level for the detection of patient identifiers as designated by the HIPAA Safe Harbor Rule. RESULTS: MIST was applied to medical records that differed in the amounts and types of protected health information (PHI): lab reports contained only two types of PHI (dates, names) compared to discharge summaries, which were much richer. Performance of the de-identification tool depended on record class; F-measure results were 0.996 for order summaries, 0.996 for discharge summaries, 0.943 for letters and 0.934 for laboratory reports. Experiments suggest the tool requires several hundred training exemplars to reach an F-measure of at least 0.9. CONCLUSIONS: The MIST toolkit makes possible the rapid tailoring of automated de-identification to particular document types and supports the transition of the de-identification software to medical end users, avoiding the need for developers to have access to original medical records. We are making the MIST toolkit available under an open source license to encourage its application to diverse data sets at multiple institutions. |
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Authors:
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John Aberdeen; Samuel Bayer; Reyyan Yeniterzi; Ben Wellner; Cheryl Clark; David Hanauer; Bradley Malin; Lynette Hirschman |
Publication Detail:
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Type: Journal Article; Research Support, Non-U.S. Gov't Date: 2010-10-14 |
Journal Detail:
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Title: International journal of medical informatics Volume: 79 ISSN: 1872-8243 ISO Abbreviation: Int J Med Inform Publication Date: 2010 Dec |
Date Detail:
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Created Date: 2010-11-24 Completed Date: - Revised Date: - |
Medline Journal Info:
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Nlm Unique ID: 9711057 Medline TA: Int J Med Inform Country: Ireland |
Other Details:
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Languages: eng Pagination: 849-59 Citation Subset: IM |
Copyright Information:
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Copyright © 2010 Elsevier Ireland Ltd. All rights reserved. |
Affiliation:
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The MITRE Corporation, 202 Burlington Rd., Bedford, MA 01730, United States. aberdeen@mitre.org |
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From MEDLINE®/PubMed®, a database of the U.S. National Library of Medicine
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