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Published online before print May 17, 2002, 10.1148/radiol.2241011118
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(Radiology 2002;224:157-163.)
© RSNA, 2002


Computer Applications

Use of Natural Language Processing to Translate Clinical Information from a Database of 889,921 Chest Radiographic Reports1

George Hripcsak, MD, MS, John H. M. Austin, MD, Philip O. Alderson, MD and Carol Friedman, PhD

1 From the Departments of Medical Informatics (G.H., C.F.) and Radiology (J.H.M.A., P.O.A.), Columbia University, 622 W 168th St, VC-5, New York, NY 10032; and Department of Computer Science, Queens College, City University of New York (C.F.). Received June 29, 2001; revision requested July 27; revision received September 27; accepted November 12. Supported by National Library of Medicine grants R01-LM06910, R01-LM06274, and R29-LM05627. Address correspondence to G.H. (e-mail: hripcsak@columbia.edu).

PURPOSE: To evaluate translation of chest radiographic reports by using natural language processing and to compare the findings with those in the literature.

MATERIALS AND METHODS: A natural language processor coded 10 years of narrative chest radiographic reports from an urban academic medical center. Coding for 150 reports was compared with manual coding. Frequencies and co-occurrences of 24 clinical conditions (diseases, abnormalities, and clinical states) were estimated. The ratio of right to left lung mass, association of pleural effusion with other conditions, and frequency of bullet and stab wounds were compared with independent observations. The sensitivity and specificity of the system’s pneumothorax coding were compared with those of manual financial coding.

RESULTS: The system coded 889,921 reports on 251,186 patients. On the basis of manual coding of 150 reports, the processor’s sensitivity (0.81) and specificity (0.99) were comparable to those previously reported for natural language processing and for expert coders. The frequencies of the selected conditions ranged from 0.22 for pleural effusion to 0.0004 for tension pneumothorax. The database confirmed earlier observations that lung cancer occurs in a 3:2 right-to-left ratio. The association of pleural effusion with other conditions mirrored that in the literature. Bullet and stab wounds decreased during 10 years at a rate consistent with crime statistics. A review of pneumothorax cases showed that the database (sensitivity, 1.00; specificity, 0.996) was more accurate than financial discharge coding (sensitivity, 0.17; P = .002; specificity, 0.996; not significant).

CONCLUSION: Internal and external validation in this study confirmed the accuracy of natural language processing for translating chest radiographic narrative reports into a large database of information.

© RSNA, 2002

Index terms: Computers • Picture archiving and communication system (PACS) • Quality assurance • Thorax, radiography, 60.1215




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