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Artificial intelligence and transfusion education, research and practice: The view from the <scp>ISBT</scp> Clinical Transfusion Working Party
6
Zitationen
5
Autoren
2025
Jahr
Abstract
BACKGROUND AND OBJECTIVES: Artificial intelligence (AI) has been gaining increasing interest in healthcare. During the 2024 International Society of Blood Transfusion (ISBT) Congress, the Clinical Transfusion Working Party (CTWP) conducted a session to explore the exciting intersection of AI in transfusion medicine (TM) practice, education and research. We report here the potential applications and the session outcome. MATERIALS AND METHODS: A pre-workshop survey explored the participants' demographics and areas of use of AI and whether they have had any AI-specific training or education. The workshop included presentations on the regulatory aspects of AI use and its application in TM practice, education and research. These were followed by round-table discussions to explore participants' experience and concerns. RESULTS: The workshop had 72 attendees, with 38% falling in the 36-45-year age group. A total of 70% indicated the use of AI, but only 12% reported having specific training or education. Participants expressed interest in different potential applications but also shared concerns on over-reliance, potential loss of skills, the accuracy of provided information and content plagiarism. CONCLUSION: The findings of the workshop highlight the need for training, educational resources, standards and regulatory frameworks to guide the use of AI tools in the field of TM.
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