RADIOLOGIYADA SUN’IY INTELLEKT: MRT VA KT TASVIRLARINI MASHINAVIY O‘RGANISH IMKONIYATLARI

Авторы

  • Musulmonov Shoxrux Ravshanbekovich Toshkent Davlat Tibbiyot Universiteti 1 son tibbiy radiologiya kafedrasi assistenti Автор
  • Atovullayeva Mohinur Botir qizi Toshkent davlat tibbiyot universititi 2-bosqich 2-son davolash fakulteti talabasi Автор

Ключевые слова:

Sun’iy intellekt (AI), chuqur o‘rganish (DL), MRT, KT, konvolyutsion neyron tarmoqlar (CNN), tasvirni qayta ishlash, diagnostika, mashinaviy o‘rganish (ML).

Аннотация

Ushbu maqolada sun’iy intellekt (AI) va uning tarkibiy qismi bo‘lgan chuqur o‘rganish (Deep Learning), mashinaviy o‘rganish (Machine Learning) texnologiyalarining, ayniqsa Konvolyutsion Neyron Tarmog‘i (CNN) radiologiya sohasida qo‘llanilishi ko‘rib chiqildi. Tadqiqotning asosiy maqsadi ushbu algoritmlarning tasvirlarni qayta ishlash, segmentatsiya qilish va patologik o‘zgarishlarni aniqlashdagi samaradorligini baholashdan iborat.

Библиографические ссылки

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Опубликован

2026-05-05

Как цитировать

RADIOLOGIYADA SUN’IY INTELLEKT: MRT VA KT TASVIRLARINI MASHINAVIY O‘RGANISH IMKONIYATLARI. (2026). Центральноазиатский журнал академических исследований, 4(5), 27-34. https://www.in-academy.uz/index.php/CAJAR/article/view/39724
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