TIBBIY TA'LIMNI RAQAMLI TRANSFORMASIYASI: ROLI SUN'iy intellekt va katta ma'lumotlar tahlili
Kalit so‘zlar:
artificial intelligence, big data, medical education, digital transformation, virtual simulations, predictive analyticsAbstrak
Zamonaviy tibbiy ta'lim raqamli transformatsiya bosqichidan o'tmoqda
qaysi sun'iy intellekt (AI) va katta ma'lumotlar tahlili muhim rol o'ynaydi. Bularning integratsiyasi
texnologiyalar shaxsiylashtirilgan o'rganish imkonini beradi, klinik tayyorgarlikni optimallashtiradi va ta'limni yaxshilaydi
natijalar. Ushbu maqola tibbiy ta'limda AI va katta ma'lumotlarni qo'llashning asosiy yo'nalishlarini o'rganadi,
adaptiv ta'lim tizimlari, virtual simulyatsiyalar va prognozli ishlash tahlillarini o'z ichiga oladi.
Axloqiy me'yorlar, ma'lumotlar sifati va boshqalar kabi asosiy muammolarga alohida e'tibor beriladi
fanlararo hamkorlik zarurati
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