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Ensemble Approaches to Recognize Protected Health Information in Radiology Reports.

Authors :
Horng, Hannah
Steinkamp, Jackson
Kahn Jr., Charles E.
Cook, Tessa S.
Source :
Journal of Digital Imaging; Dec2022, Vol. 35 Issue 6, p1694-1698, 5p, 1 Diagram, 3 Charts
Publication Year :
2022

Abstract

Natural language processing (NLP) techniques for electronic health records have shown great potential to improve the quality of medical care. The text of radiology reports frequently constitutes a large fraction of EHR data, and can provide valuable information about patients' diagnoses, medical history, and imaging findings. The lack of a major public repository for radiological reports severely limits the development, testing, and application of new NLP tools. De-identification of protected health information (PHI) presents a major challenge to building such repositories, as many automated tools for de-identification were trained or designed for clinical notes and do not perform sufficiently well to build a public database of radiology reports. We developed and evaluated six ensemble models based on three publically available de-identification tools: MIT de-id, NeuroNER, and Philter. A set of 1023 reports was set aside as the testing partition. Two individuals with medical training annotated the test set for PHI; differences were resolved by consensus. Ensemble methods included simple voting schemes (1-Vote, 2-Votes, and 3-Votes), a decision tree, a naïve Bayesian classifier, and Adaboost boosting. The 1-Vote ensemble achieved recall of 998 / 1043 (95.7%); the 3-Votes ensemble had precision of 1035 / 1043 (99.2%). F1 scores were: 93.4% for the decision tree, 71.2% for the naïve Bayesian classifier, and 87.5% for the boosting method. Basic voting algorithms and machine learning classifiers incorporating the predictions of multiple tools can outperform each tool acting alone in de-identifying radiology reports. Ensemble methods hold substantial potential to improve automated de-identification tools for radiology reports to make such reports more available for research use to improve patient care and outcomes. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
08971889
Volume :
35
Issue :
6
Database :
Complementary Index
Journal :
Journal of Digital Imaging
Publication Type :
Academic Journal
Accession number :
160503251
Full Text :
https://doi.org/10.1007/s10278-022-00673-0