Artificial Intelligence (AI) tools and methodologies can provide crucial contributions not only for medical decision support, but also for medical education. In particular, we operate in the AI in medicine context of Computer-Interpretable Clinical Guidelines, and, within a two-year national project, we are developing GLARE-Edu, a system specifically devoted to medical education. In this paper, we describe some of the main advances we achieved in the first year, concerning teaching and testing learners' capabilities about clinical decisions. Four facilities are proposed, to address different aspects of clinical decisions.

AI-Based Medical Education: Coping with Clinical Decisions in GLARE-Edu

Bottrighi A.;Maconi A.;Nera S.;Piovesan L.;Raina E.;Terenziani P.
2025-01-01

Abstract

Artificial Intelligence (AI) tools and methodologies can provide crucial contributions not only for medical decision support, but also for medical education. In particular, we operate in the AI in medicine context of Computer-Interpretable Clinical Guidelines, and, within a two-year national project, we are developing GLARE-Edu, a system specifically devoted to medical education. In this paper, we describe some of the main advances we achieved in the first year, concerning teaching and testing learners' capabilities about clinical decisions. Four facilities are proposed, to address different aspects of clinical decisions.
2025
9783031803659
9783031803666
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11579/231402
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