Oral Radyolojide Yapay Zeka

Gelişen, değişen ve ilerleyen teknolojide sağlık ve diş hekimliğinin de yerini alması gerekmektedir. Son dönemlerde adını sık sık duyduğumuz yapay zekânın diş hekimliğine girişi başlamış ve ilerlemeler kaydedilmiştir. Yapay zekânın sağlık ve diş hekimliği çalışanlarına çalışmalarında yardımcı olduğu iş akışını kolaylaştırdığı düşünüldüğünde ilerde daha çok tercih edileceği ve hayatımıza aktif olarak girecektir. Bu konu da elde edeceğimiz bilgiler bize yardımcı olacak ve teşhis ve tanıya daha hızlı ve yanlışsız ulaşmamızı sağlayacaktır. Diş hekimliğinde tanı, teşhis ve veri depolamasında oral radyologların payı daha fazladır. Bu sebepledir ki diş hekimlerin ve özellikle oral radyologların yapay zekâ hakkında fikir sahibi olması önem arz etmektedir. Bu derlemenin amacı son dönemlerde güncel bir konu haline gelmiş olan yapay zekânın diş hekimliği alanındaki uygulamalarını incelemek ve diş hekimlerinde bu teknoloji hakkında farkındalık oluşturmaktır.

Artıfıcıal Intellıgence in Oral Radıology

In the developing, changing and advancing technology, health and dentistry should also take its place.The entry of artificial intelligence into dentistry, whose name we have heard often recently, has begun and progress has been made.Considering that artificial intelligence facilitates the workflow that helps health and dentistry employees in their work, it will be more preferred in the future and will enter our lives actively.The information we will obtain on this subject will help us and enable us to reach diagnosis and diagnosis faster and more accurately.Oral radiologists have a greater share in diagnosis, diagnosis and data storage in dentistry.For this reason, it is important for dentists and especially oral radiologists to have an idea about artificial intelligence.The purpose of this review is to examine the applications of artificial intelligence in dentistry, which has recently become a current issue, and to raise awareness about this technology in dentists.

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