GenAI Assisting Medical Training
- URL: http://arxiv.org/abs/2410.16164v1
- Date: Mon, 21 Oct 2024 16:31:16 GMT
- Title: GenAI Assisting Medical Training
- Authors: Stefan Fritsch, Matthias Tschoepe, Vitor Fortes Rey, Lars Krupp, Agnes Gruenerbl, Eloise Monger, Sarah Travenna,
- Abstract summary: The study aims to help students with skill acquisition by integrating generative AI methods to provide real-time feedback on medical procedures such as venipuncture and cannulation.
- Score: 0.07538606213726905
- License:
- Abstract: Medical procedures such as venipuncture and cannulation are essential for nurses and require precise skills. Learning this skill, in turn, is a challenge for educators due to the number of teachers per class and the complexity of the task. The study aims to help students with skill acquisition and alleviate the educator's workload by integrating generative AI methods to provide real-time feedback on medical procedures such as venipuncture and cannulation.
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