Application of Machine Learning in Dentistry
DOI:
https://doi.org/10.56294/hl2024.443Keywords:
Healthcare, Dentistry, Diagnostics, Machine Learning, Artificial IntelligenceAbstract
One of the key components of artificial intelligence, machine learning is used in many processes, including analysis, modeling, and forecasting, and it spans many industries. In addition to physical sectors such as manufacturing, human-centric sectors (such as medicine) are already continuing to expand the application of artificial intelligence and adapt to the digitalization environment. One of the primary medical subspecialties, dentistry, is a relatively new industry that heavily utilizes artificial intelligence and its potential. However, the field of dentistry is also expanding its use of AI and machine learning as their potential grows.
The use of machine learning in dentistry is examined in this article. Furthermore, the use of machine learning and artificial intelligence in healthcare was also discussed.
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Copyright (c) 2024 Nazila Ragimova, Vugar Abdullayev, Vusala Abuzarova, Ayan Mirzoyeva, Elnare Mirzoyeva (Author)

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