Treffer: A Bayesian approach for the categorization of radiology reports.

Title:
A Bayesian approach for the categorization of radiology reports.
Authors:
Pyrros A; Department of Radiology, Northwestern University Medical School, Chicago, IL, USA. a-pyrros@md.northwestern.edu, Nikolaidis P, Yaghmai V, Zivin S, Tracy JI, Flanders A
Source:
Academic radiology [Acad Radiol] 2007 Apr; Vol. 14 (4), pp. 426-30.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Association Of University Radiologists Country of Publication: United States NLM ID: 9440159 Publication Model: Print Cited Medium: Print ISSN: 1076-6332 (Print) Linking ISSN: 10766332 NLM ISO Abbreviation: Acad Radiol Subsets: MEDLINE
Imprint Name(s):
Publication: Reston Va : Association Of University Radiologists
Original Publication: Reston, VA : Association of University Radiologists, c1994-
Entry Date(s):
Date Created: 20070321 Date Completed: 20070605 Latest Revision: 20161124
Update Code:
20250114
DOI:
10.1016/j.acra.2007.01.028
PMID:
17368211
Database:
MEDLINE

Weitere Informationen

Rationale and Objective: We sought to develop a Bayesian-filter that could distinguish positive radiology computed tomography (CT) reports of appendicitis from negative reports with no appendicitis.
Materials and Methods: Standard unstructured electronic text radiology reports containing the key word appendicitis were obtained using a Java-based text search engine from a hospital General Electric PACS system. A total of 500 randomly selected reports from multiple radiologists were then manually categorized and merged into two separate text files: 250 positive reports and 250 negative findings of appendicitis. The two text files were then processed by the freely available UNIX-based software dbacl 1.9, a digramic Bayesian classifier for text recognition, on a Linux based Pentium 4 system. The software was then trained on the two separate merged text files categories of positive and negative appendicitis. The ability of the Bayesian filter to discriminate between reports of negative and positive appendicitis images was then tested on 100 randomly selected reports of appendicitis: 50 positive cases and 50 negative cases.
Results: The training time for the Bayesian filter was approximately 2 seconds. The Bayesian filter subsequently was able to categorize 50 of 50 positive reports of appendicitis and 50 of 50 reports of negative appendicitis, in less than 10 seconds.
Conclusion: A Bayesian-filter system can be used to quickly categorize radiology report findings and automatically determine after training, with a high degree of accuracy, whether the reports have text findings of a specific diagnosis. The Bayesian filter can potentially be applied to any type of radiologic report finding and any relevant category.