Yapay Zeka ve Diş Yaşı Tahmin Yöntemleri

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19 Nisan 2024

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1.
Karayel O, Altan H. Yapay Zeka ve Diş Yaşı Tahmin Yöntemleri. Içinde: Çiftçi V, editör. Güncel Pedodonti Çalışmaları IV (Bahar) [Internet]. Türkiye: Akademisyen Yayınevi Kitap DOI Portalı; 2024 [a.yer 13 Temmuz 2026]. ss. 197-22. Erişim adresi: https://www.omp35.books.akademisyen.net/index.php/akya/catalog/book/3069/chapter/13376