A machine learning approach for identifying anatomical locations of actionable findings in radiology reports.

Kirk Roberts, Bryan Rink, Sanda M. Harabagiu, Richard H. Scheuermann, Seth M Toomay, Travis G Browning, Teresa Bosler, Ronald M Peshock

Research output: Contribution to journalArticlepeer-review

19 Scopus citations

Abstract

Recognizing the anatomical location of actionable findings in radiology reports is an important part of the communication of critical test results between caregivers. One of the difficulties of identifying anatomical locations of actionable findings stems from the fact that anatomical locations are not always stated in a simple, easy to identify manner. Natural language processing techniques are capable of recognizing the relevant anatomical location by processing a diverse set of lexical and syntactic contexts that correspond to the various ways that radiologists represent spatial relations. We report a precision of 86.2%, recall of 85.9%, and F(1)-measure of 86.0 for extracting the anatomical site of an actionable finding. Additionally, we report a precision of 73.8%, recall of 69.8%, and F(1)-measure of 71.8 for extracting an additional anatomical site that grounds underspecified locations. This demonstrates promising results for identifying locations, while error analysis reveals challenges under certain contexts. Future work will focus on incorporating new forms of medical language processing to improve performance and transitioning our method to new types of clinical data.

Original languageEnglish (US)
Pages (from-to)779-788
Number of pages10
JournalUnknown Journal
Volume2012
StatePublished - 2012

ASJC Scopus subject areas

  • General Medicine

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