Artificial intelligence is reshaping the realm of 'experience' ( jingy`an) in Chinese medicine, forever
Автор: Medeiros E.F.
Журнал: Вестник Международной академии наук (Русская секция) @vestnik-rsias
Рубрика: Медико-биологические науки, науки о человеке
Статья в выпуске: 1, 2023 года.
Бесплатный доступ
Artificial Intelligence (AI) is transforming the concept of 'Experience' (经验 Jīngyàn) in Chinese Medicine. Knowledge is often rooted in practical experience, and wisdom is derived from such experiences. Historically, Chinese medicine has been based on direct patient interactions. This methodology evaluates individual symptoms, treatment responses, and the overall constitution of the patient. The discipline integrates theory, pattern recognition, diagnosis, and personalized treatments. This understanding is enhanced through hands-on clinical practice. The term '临床经验' or 'línchuáng jīngyàn' specifically denotes clinical experience in the context of Chinese medicine.
Ai (artificial intelligence), chinese medicine, experience, jīngyàn, diagnosis, treatment, accuracy
Короткий адрес: https://sciup.org/143183257
IDR: 143183257
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