Opportunities for artificial intelligence and telemedicine in implantology

DOI: https://doi.org/10.29296/25877305-2023-06-18
Issue: 
6
Year: 
2023

Associate Professor P. Seliverstov(1), Candidate of Medical Sciences; G. Brudyan(2)
1-S.M. Kirov Military Medical Academy, Saint Petersburg
2-Voskresensk Dental Polyclinic

Artificial Intelligence (AI) has been making significant strides in various fields, including healthcare. One such area is dental implantology. AI can assist in accurate diagnosis, treatment planning, in the execution of the procedure, and predict implant success based on various factors like bone density, implant site, patient's medical history, etc. Despite the promising potential, the application of AI in dental implantology is still in its nascent stages. Research in this area of medicine is limited, but there has been an increase in recent years. This trend is related to the possibility of improving patient outcomes, including shorter treatment times, prevention of complications and improved quality of care in general.

Keywords: 
artificial intelligence
telemedicine
dental implantology
treatment planning
diagnosis
prognosis.



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