ZAMONAVIY TIBBIYOT AXBOROT TIZIMLARI UCHUN JARAYON MODELLARINI LOYIHALASH MASALASI

Authors

  • Samandarov Batirbek Satimovich Muhammad al-Xorazmiy nomidagi Toshkent Axborot Texnologiyalari Universiteti
  • Tajibaev Shuxrat Xudaybergenovich Berdaq nomidagi Qoraqalpoq davlat universiteti

Keywords:

sog‘liqni saqlashni raqamlashtirish, tibbiyot axborot tizimlari, jarayon modellari, tibbiyotda sun’iy intellektning o‘rni

Abstract

Bugungi kunda sog‘liqni saqlashni raqamlashtirish va sun’iy intellekt texnologiyalarini joriy qilish tibbiy xizmat sifatini tubdan takomillashtirish va yaxshilash uchun ulkan salohiyatga ega bo‘lgan asosiy sohalardan biri sanaladi. So‘nggi yillarda raqamli texnologiyalarning jadal rivojlanishi va sun’iy intellektdan sog‘liqni saqlashning tashxislash va davolashdan tortib shifoxona boshqaruvi va sog‘liqni saqlash tizimlarigacha bo‘lgan turli sohalarida qo‘llanilishi sohasida ko‘plagan tadqiqotlar olib borilayotganiga guvox bo‘lyapmiz. Ushbu maqolada tibbiyotni raqamlashtirish, tashxislash va sun’iy intellekt texnologiyalarining sog‘liqni saqlash sohasidagi o‘rni va axborot tizimlariga zaruratlar, shuningdek, ularni loyihalashtirishda duch keladigan foydali jihatlar va keltirib chiqarishi mumkin bo‘lgan muammolar hamda ushbu sohadagi tadqiqotlar sharxi bayon qilingan.

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Published

2024-02-28

How to Cite

Samandarov , B., & Tajibaev , S. (2024). ZAMONAVIY TIBBIYOT AXBOROT TIZIMLARI UCHUN JARAYON MODELLARINI LOYIHALASH MASALASI. DIGITAL TRANSFORMATION AND ARTIFICIAL INTELLIGENCE, 2(1), 176–181. Retrieved from https://dtai.tsue.uz/index.php/dtai/article/view/v2i126

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