ISSN 2073-2643
En Ru
ISSN 2073-2643
Training of medical personnel to work with artificial intelligence: challenges, methods and prospects

Training of medical personnel to work with artificial intelligence: challenges, methods and prospects

Abstract

The widespread introduction of artificial intelligence(AI) capabilities into the healthcare system creates new requirements and conditions for the training of medical personnel. Th e article is devoted to the study of modern challenges, aspects of methodology and the prospect of training specialists for successful work with AI technologies. Th is study contains an analysis of the most relevant areas for the application of AI systems, an analysis of the requirements for the competencies of specialists, innovations in the educational process and ethical aspects. Special attention is paid to building trust in new technologies, overcoming long-standing organizational barriers and creating modern training programs. Th e results of the study show the importance of a systematic approach to personnel training, taking into account technical education, critical thinking and ethical and psychological training.

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Received: 09/08/2025

Keywords: artificial intelligence, personnel training, medical education, digital healthcare.

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