PERSPECTIVES OF USING ARTIFICIAL INTELLIGENCE IN POSTGRADUATE MEDICAL EDUCATION

Автор(и)

DOI:

https://doi.org/10.30888/2663-5712.2023-20-02-018

Ключові слова:

Medical education, postgraduate, Artificial Intelligence

Анотація

The field of postgraduate medical education is continuously evolving, with advancements in technology playing a significant role in shaping its future. One such advancement is the integration of artificial intelligence (AI) or piece intelligence (PI) into

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Beam AL, Drazen JM, Kohane IS, Leong TY, Manrai AK, Rubin EJ. Artificial Intelligence in Medicine. N Engl J Med. 2023 Mar 30;388(13):1220-1221. doi: 10.1056/NEJMe2206291.

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Опубліковано

2023-07-30

Як цитувати

Пашковський, В., Пашковська, Н., & Царик, І. (2023). PERSPECTIVES OF USING ARTIFICIAL INTELLIGENCE IN POSTGRADUATE MEDICAL EDUCATION. SWorldJournal, 2(20-02), 61–64. https://doi.org/10.30888/2663-5712.2023-20-02-018

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