APPLICATIONS OF ARTIFICIAL INTELLIGENCE IN MEDICAL EDUCATION

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Elyor Akimovich Valitov
Muminova Mekhribonu

Abstract

The field of artificial intelligence is a recent addition to technology. Its goal is to simulate, extend, and expand human intellect via the study and development of theory, method, technique, and application system using computer technology. New artificial intelligence technologies have brought about significant changes to the traditional medical setting. For instance, a patient's diagnosis derived from biochemical, endoscopic, ultrasonographic, radiographic, and pathological exams has been successfully advanced with reduced human workload and increased accuracy. Better surgical outcomes have significantly improved the medical care provided during the perioperative phase, which includes preoperative planning, surgery, and postoperative recuperation.

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How to Cite
Elyor Akimovich Valitov, & Muminova Mekhribonu. (2024). APPLICATIONS OF ARTIFICIAL INTELLIGENCE IN MEDICAL EDUCATION. Uz-Conferences, 149–154. Retrieved from https://uz-conference.com/index.php/p/article/view/495
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References

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