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Extracting Actionable Findings of Appendicitis from Radiology Reports Using Natural Language Processing

Radiology reports often contain findings about the condition of a patient which should be acted upon quickly. These actionable findings in a radiology report can be automatically detected to ensure that the referring physician is notified about such findings and to provide feedback to the radiologis...

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Detalles Bibliográficos
Autores principales: Rink, Bryan, Roberts, Kirk, Harabagiu, Sanda, Scheuermann, Richard H., Toomay, Seth, Browning, Travis, Bosler, Teresa, Peshock, Ronald
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Informatics Association 201
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3845763/
https://www.ncbi.nlm.nih.gov/pubmed/24303268
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author Rink, Bryan
Roberts, Kirk
Harabagiu, Sanda
Scheuermann, Richard H.
Toomay, Seth
Browning, Travis
Bosler, Teresa
Peshock, Ronald
author_facet Rink, Bryan
Roberts, Kirk
Harabagiu, Sanda
Scheuermann, Richard H.
Toomay, Seth
Browning, Travis
Bosler, Teresa
Peshock, Ronald
author_sort Rink, Bryan
collection PubMed
description Radiology reports often contain findings about the condition of a patient which should be acted upon quickly. These actionable findings in a radiology report can be automatically detected to ensure that the referring physician is notified about such findings and to provide feedback to the radiologist that further action has been taken. In this paper we investigate a method for detecting actionable findings of appendicitis in radiology reports. The method identifies both individual assertions regarding the presence of appendicitis and other findings related to appendicitis using syntactic dependency patterns. All relevant individual statements from a report are collectively considered to determine whether the report is consistent with appendicitis. Evaluation on a corpus of 400 radiology reports annotated by two expert radiologists showed that our approach achieves a precision of 91%, a recall of 83%, and an F1-measure of 87%.
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spelling pubmed-38457632013-12-03 Extracting Actionable Findings of Appendicitis from Radiology Reports Using Natural Language Processing Rink, Bryan Roberts, Kirk Harabagiu, Sanda Scheuermann, Richard H. Toomay, Seth Browning, Travis Bosler, Teresa Peshock, Ronald AMIA Jt Summits Transl Sci Proc Articles Radiology reports often contain findings about the condition of a patient which should be acted upon quickly. These actionable findings in a radiology report can be automatically detected to ensure that the referring physician is notified about such findings and to provide feedback to the radiologist that further action has been taken. In this paper we investigate a method for detecting actionable findings of appendicitis in radiology reports. The method identifies both individual assertions regarding the presence of appendicitis and other findings related to appendicitis using syntactic dependency patterns. All relevant individual statements from a report are collectively considered to determine whether the report is consistent with appendicitis. Evaluation on a corpus of 400 radiology reports annotated by two expert radiologists showed that our approach achieves a precision of 91%, a recall of 83%, and an F1-measure of 87%. American Medical Informatics Association 2013 -03- 18 /pmc/articles/PMC3845763/ /pubmed/24303268 Text en ©2013 AMIA - All rights reserved.
spellingShingle Articles
Rink, Bryan
Roberts, Kirk
Harabagiu, Sanda
Scheuermann, Richard H.
Toomay, Seth
Browning, Travis
Bosler, Teresa
Peshock, Ronald
Extracting Actionable Findings of Appendicitis from Radiology Reports Using Natural Language Processing
title Extracting Actionable Findings of Appendicitis from Radiology Reports Using Natural Language Processing
title_full Extracting Actionable Findings of Appendicitis from Radiology Reports Using Natural Language Processing
title_fullStr Extracting Actionable Findings of Appendicitis from Radiology Reports Using Natural Language Processing
title_full_unstemmed Extracting Actionable Findings of Appendicitis from Radiology Reports Using Natural Language Processing
title_short Extracting Actionable Findings of Appendicitis from Radiology Reports Using Natural Language Processing
title_sort extracting actionable findings of appendicitis from radiology reports using natural language processing
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3845763/
https://www.ncbi.nlm.nih.gov/pubmed/24303268
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