ИСКУССТВЕННЫЙ ИНТЕЛЛЕКТ КАК ОСНОВА ЦИФРОВОЙ ТЕРАПИИ ДИАБЕТА (ЛИТЕРАТУРНЫЙ ОБЗОР)

Авторы

  • АДЫЛОВА Фатима Туйчиевна
  • АЛИХАНОВА Нодира Миршовкатовна
  • ДАВРОНОВ Рифкат Рахимович
  • ТАХИРОВА Феруза Абраровна

Ключевые слова:

САХАРНЫЙ ДИАБЕТ, ИСКУССТВЕННЫЙ ИНТЕЛЛЕКТ, ЦИФРОВАЯ ТЕРАПИЯ

Аннотация

В век цифровизации жизненно необходимым является использование современных методов информационных технологий. Если раньше технологии основывались на математическом моделировании, в данное время для принятия решений широко используется искусственный интеллект. В статье приведены данные о «цифровой терапии», как о современном методе управления заболеваний, в данном случае сахарного диабета.

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Опубликован

2022-08-30