"Powered medical diagnosis support" nomli tibbiy ma’lumotlarni tahlil qilish va shifokorlarga kasallik tarixini yaratishga yordam beruvchi dasturiy ta’minot yaratish

Mualliflar

  • Inomjonov Iqboljon Islomjon o’g’li Farg‘ona davlat texnika universiteti
  • Xolmatov Abrorjon Alisher o’g’li Farg‘ona davlat texnika universiteti

Annotatsiya

Maqola sun’iy intellekt asosida ishlab chiqilgan tibbiy diagnostikani qo’llab-quvvatlash tizimining (Clinical Decision Support System, CDSS) konseptual asoslariga bag’ishlangan. Tadqiqotda elektron tibbiy yozuvlar (Electronic Health Records, EHR) bilan ishlashning standartlashtirilgan formati (HL7 FHIR) qo’llanilgan bo’lib, shifokorga differensial diagnostika ro’yxatini ehtimollik baholari bilan birga taqdim etadigan Bayes tasniflagichi asosidagi yordamchi modul taklif etilgan. Maqolada modelning matematik shakli, EHR ma’lumotlari to’plashning standartlari, hamda tibbiy AI ning huquqiy va etik cheklovlari muhokama qilinadi.

Kalit so’zlar: klinik qarorlarni qo’llab-quvvatlash, CDSS, EHR, HL7 FHIR, Bayes tasniflagichi, differensial diagnostika, tibbiy AI, anamnez

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Chop etilgan

2026-05-27

Nashr

Bo'lim

Статьи

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