Biomeditsina va amaliyot jurnali, 2022 №3


Maqola mavzusi

ARTIFICIAL INTELLIGENCE AS THE BASIS OF DIGITAL DIABETES THERAPY (335-346)

Mualliflar

ODILOVA Fotima Tuychiyena, ALIXANOVA Nodira Mirshovkatovna, DAVRONOV Rifqat Rahimovich, TAXIROVA Feruza Abrarovna

Muassasa

V.I.Romanovskiy nomidagi matematika instituti, Akademik Y.X.Turaqulov nomidagi RIEIATM,

Annotatsiya

Raqamlashtirish asrida axborot texnologiyalarining zamonaviy usullaridan foydalanish juda muhim. Agarda ilgari texnologiyalar matematik modellashtirishga asoslangan bo'lsa, hozirda qaror qabul qilishda sun'iy intellekt keng qo'llaniladi. Maqolada kasalliklarni, bu holda qandli diabetni davolashning zamonaviy usuli sifatida "raqamli terapiya" haqida ma'lumotlar keltirilgan.

Kalit so'zlar

qandli diabet, sun'iy intellekt, raqamli terapiya

Adabiyotlar

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