CHUQUR O‘QITISH YORDAMIDA EXOKARDIOGRAMMA TASVIRLARINI TASNIFLASH
Ключевые слова:
exokardiogramma, mashinali o‘qitish, chuqur o‘qitish, sun’iy intellekt (AI), konvolyutsion neyron tarmoqlari, tasvir, ma’lumotlar bazasiАннотация
Exokardiografiya zamonaviy kardiologiyada muhim ahamiyatga ega. Biroq, inson tomonidan talqin qilinishi aniq va standartlashtirilgan yuqori samarali tahlilni cheklaydi, bu esa exokardiografiyaning aniq tibbiyot uchun klinik va ilmiy salohiyatini to‘liq ro‘yobga chiqarishiga to‘sqinlik qiladi. Ushbu tadqiqotda biz chuqur o‘qitish texnologiyasining exokardiografik ko‘rish turlarini aniqlashda qo‘llanishini ko‘rsatdik — bunda model 15 ta asosiy transtorasik exokardiogramma (UTT) ko‘rishlarini mutaxassis darajasida aniqlay oldi.
Библиографические ссылки
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