FEATURES OF AI IN PRACTICAL MEDICINE: THE VIEW OF PRE-SERVICE DOCTORS
DOI:
https://doi.org/10.32782/eddiscourses/2024-4-11Keywords:
artificial intelligence, medical education, ethical issues, healthcare technology, diagnostic automationAbstract
The relevance of the use of artificial intelligence (AI) in medicine is growing due to the potential of these technologies and the ability to improve the quality of medical research, optimize clinical processes and the possibility of reducing the costs of medical care. The aim of the article is to investigate the impact of artificial intelligence (AI) on practical medicine from the point of view of pre-service doctors, using the example of a survey conducted among students of the Bogomolets National Medical University. Quantitative methods were used to collect data, in particular, questionnaires of 52 respondents. The results showed that 57.7% of students believe that the main role of AI in medical research is faster analysis of large volumes of data, and 25% pointed to the optimization of clinical trials. Among ethical issues, 23.1% of respondents noted responsibility for diagnostic errors as the most serious problem. Conclusion: the results of the study indicate that students recognize the significant potential of AI in medicine, while emphasizing the need for comprehensive training of medical professionals to integrate new technologies, taking into account ethical and practical challenges.
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