0000000001094918

AUTHOR

Benedikt Kämpgen

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

2020

Abstract Objective 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). Methods 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…

medicine.medical_specialty020205 medical informaticsHealth Informatics02 engineering and technologycomputer.software_genreLogistic regression03 medical and health sciences0302 clinical medicineUreterUrolithiasisEpidemiology0202 electrical engineering electronic engineering information engineeringmedicineMedical imagingHumansIn patient030212 general & internal medicineObstructive uropathyNatural Language ProcessingRetrospective StudiesElectronic Data Processingbusiness.industrymedicine.diseaseTest (assessment)medicine.anatomical_structureRadiological weaponArtificial intelligencebusinessTomography X-Ray ComputedcomputerNatural language processingAlgorithmsInternational journal of medical informatics
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