Articles
| Open Access |
https://doi.org/10.55640/
A QUESTIONNAIRE STUDY FOR DENTAL STUDENTS’ SATISFACTION WITH “THE USE OF ARTIFICIAL INTELLIGENCE IN DENTISTRY’’
Axmadaliyev Qaxramonjon Xusanbayevich , Department of therapeutic dentistry Andijan state medical instituteAbstract
Background/purpose: Using artificial intelligence to “detect cephalometric landmarks” can effectively improve dentist’s effectiveness. This study evaluated dental students’ satisfaction with the use of artificial intelligence to detect cephalometric landmarks in 2023 and 2024 at Tashkent State Dental Institute, Uzbekistan.
Keywords
Artificial intelligence; Cephalometrics; machine learning.
References
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