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30 d’octubre de 2025
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Use of Large Language Models for Cataloging Medical Reports in Reconfigurable Digital Collections

Publicat a: 2023 IEEE 36TH INTERNATIONAL SYMPOSIUM ON COMPUTER-BASED MEDICAL SYSTEMS, CBMS. 851-856 - 2025-01-01 (), DOI: 10.1109/CBMS65348.2025.00173

Autors:

Buendia-Garc a, F; Gayoso-Cabada, J; Sierra-Rodr guez, JL
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Afiliacions

Univ Complutense Madrid, Fac Informat, Madrid, Spain - Autor o coautor
Univ Politecn Valencia, Escuela Tecn Super Ingn Informat, Valencia, Spain - Autor o coautor

Resum

This work proposes an approach based on Large Language Models (LLMs) for creating digital collections from free-text medical reports. The approach uses instruct LLMs to extract relevant clinical terms from these reports, as well as to catalog them using the extracted terms. The cataloged reports are then integrated into a digital collection management platform, enabling further curation by clinical experts. To confirm the feasibility of the approach, we used various models associated with DeepSeek, as well as a coding model developed by Alibaba, and the experimental Clavy reconfigurable collection management platform to handle the resulting collections. The preliminary evaluation results demonstrate the feasibility of the approach, even without relying on external services that could compromise data privacy in real-world scenarios, or on particularly expensive dedicated hardware.
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Paraules clau

Clinical digital collectionLarge language modelMedical report annotationMedical term extraction

Indicis de qualitat

Anàlisi del lideratge dels autors institucionals

Hi ha un lideratge significatiu, ja que alguns dels autors pertanyents a la institució apareixen com a primer o últim signant, es pot apreciar en el detall: Primer Autor (Buendía-García, Félix) .

l'autor responsable d'establir les tasques de correspondència ha estat Buendía-García, Félix.

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Reconeixements vinculats a l’ítem

This work has been supported by the Spanish AEI (research project PID2021-123048NB-I00).
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