Fine-tuning of language models for automated structuring of medical exam reports to improve patient screening and analysis.

Authors

Elvas LB,Santos R,Ferreira JC

Affiliations (7)

  • Department of Logistics, Molde, University College, Britvegen 2, 6410, Molde, Norway. [email protected].
  • ISTAR, Instituto Universitário de Lisboa (ISCTE-IUL), 1649-026, Lisbon, Portugal. [email protected].
  • Inov Inesc Inovação - Instituto de Novas Tecnologias, 1000-029, Lisbon, Portugal. [email protected].
  • Breast Cancer Research Program, Champalimaud Foundation, Lisbon, Portugal. [email protected].
  • ISTAR, Instituto Universitário de Lisboa (ISCTE-IUL), 1649-026, Lisbon, Portugal.
  • Department of Logistics, Molde, University College, Britvegen 2, 6410, Molde, Norway.
  • Inov Inesc Inovação - Instituto de Novas Tecnologias, 1000-029, Lisbon, Portugal.

Abstract

The analysis of medical imaging reports is labour-intensive but crucial for accurate diagnosis and effective patient screening. Often presented as unstructured text, these reports require systematic organisation for efficient interpretation. This study applies Natural Language Processing (NLP) techniques tailored for European Portuguese to automate the analysis of cardiology reports, streamlining patient screening. Using a methodology involving tokenization, part-of-speech tagging and manual annotation, the MediAlbertina PT-PT language model was fine-tuned, achieving 96.13% accuracy in entity recognition. The system enables rapid identification of conditions such as aortic stenosis through an interactive interface, substantially reducing the time and effort required for manual review. It also facilitates patient monitoring and disease quantification, optimising healthcare resource allocation. This research highlights the potential of NLP tools in Portuguese healthcare contexts, demonstrating their applicability to medical report analysis and their broader relevance in improving efficiency and decision-making in diverse clinical environments.

Topics

Natural Language ProcessingJournal Article

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