NEYROXIRURGIYADA SUN’IY INTELLEKT (SI) TIZIMLARINING QO‘LLANILISHI VA ULARNING KLINIK SAMARADORLIGI
Keywords:
sun’iy intellekt, neyroxirurgiya, U-Net, BCI (miya-kompyuter interfeysi), brain shift, neyronavigatsiya, 3D vizualizatsiya, klinik samaradorlikAbstract
Mazkur maqolada neyroxirurgiya amaliyotida sun’iy intellekt (SI) tizimlarini qo‘llashning dolzarbligi, ularning diagnostika va jarrohlik jarayonidagi o‘rni hamda klinik samaradorligi keng tahlil qilinadi. Xususan, U-Net segmentatsiya modeli yordamida tibbiy tasvirlarni qayta ishlash, miya o‘smalarini aniqlash va ularning chegaralarini aniqlik bilan belgilash imkoniyatlari yoritilgan. Shuningdek, miya-kompyuter interfeysi (BCI) texnologiyalari va zamonaviy neyronavigatsiya tizimlarining operatsiya jarayonidagi ahamiyati, “brain shift” kabi murakkab holatlarni boshqarishdagi roli ko‘rib chiqiladi. Statistik ma’lumotlar asosida sun’iy intellekt texnologiyalarining jarrohlik asoratlarini kamaytirish, operatsiya aniqligini oshirish va bemorlar hayot sifatini yaxshilashdagi ijobiy ta’siri asoslab berilgan.
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