Loading…

Towards data-driven medical imaging using natural language processing in patients with suspected urolithiasis

•This NLP approach allows to correlate clinical information and imaging results in radiological free-text reports.•Clinical information, such as previous stone history had the highest association with positive urolithiasis.•Our study shows the value of NLP for calculating positive hit rates of suspe...

Full description

Saved in:
Bibliographic Details
Published in:International journal of medical informatics (Shannon, Ireland) Ireland), 2020-05, Vol.137, p.104106-104106, Article 104106
Main Authors: Jungmann, Florian, Kämpgen, Benedikt, Mildenberger, Philipp, Tsaur, Igor, Jorg, Tobias, Düber, Christoph, Mildenberger, Peter, Kloeckner, Roman
Format: Article
Language:English
Subjects:
Citations: Items that this one cites
Items that cite this one
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:•This NLP approach allows to correlate clinical information and imaging results in radiological free-text reports.•Clinical information, such as previous stone history had the highest association with positive urolithiasis.•Our study shows the value of NLP for calculating positive hit rates of suspected pathologies for epidemiological studies. The majority of radiological reports are still written as free text and lack structure. Further evaluation of free-text reports is difficult to achieve without a great deal of manual effort, and is not possible in everyday clinical practice. This study aims to automatically capture clinical information and positive hit rates from narrative radiological reports of suspected urolithiasis using natural language processing (NLP). Narrative reports of low dose computed tomography (CT) of the retroperitoneum from April 2016 to July 2018 (n = 1714) were analyzed using NLP. These free-text reports were automatically structured based on RadLex concepts. Manual feedback was used to test and train the NLP engine to further enhance the performance. The chi-squared test, phi coefficient, and logistic regression analysis were performed to determine the effect of clinical information on the positive hit rate of urolithiasis. Urolithiasis was affirmed in 72 % of the reports; in 38 % at least one stone was described in the kidneys, and in 45 % at least one stone was described in the ureter. Clinical information, such as previous stone history and obstructive uropathy, showed a strong correlation with confirmed urolithiasis (p = 0.001). Previous stone history and the combination of obstructive uropathy and loin pain had the highest association with positive urolithiasis (p < 0.001). Applying this NLP approach to already existing free-text reports allows the conversion of such reports into a structured form. This may be valuable for epidemiological studies, to evaluate the appropriateness of CT examinations, or to answer a variety of research questions.
ISSN:1386-5056
1872-8243
DOI:10.1016/j.ijmedinf.2020.104106