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Neural classification of Norwegian radiology reports: using NLP to detect findings in CT-scans of children
16
Zitationen
8
Autoren
2021
Jahr
Abstract
The models performed close to perfectly on its defined domain, and also performed convincingly on reports pertaining to a different patient group and a different modality. The models were deemed suitable for classifying radiology reports for future quality assurance purposes, where the fraction of the examinations with abnormal findings for different sub-groups of patients is a parameter of interest.
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