DOI:

10.37988/1811-153X_2026_1_126

Application of artificial intelligence in pediatric dentistry: a systematic review

Authors

  • E.E. Maslak 1, Doctor of Science in Medicine, professor of the Pediatric dentistry Department
    ORCID: 0000-0003-2011-9714
  • B.O. Khudanov 2, 3, Doctor of Science in Medicine, president; professor of the Preventive dentistry Department
    ORCID: 0000-0003-2080-1975
  • A.A. Shkhagosheva 1, PhD in Medical Sciences, associate professor of the Pediatric dentistry Department
    ORCID: 0000-0003-2925-7662
  • N.V. Matvienko 1, PhD in Medical Sciences, associate professor of the Pediatric dentistry Department
    ORCID: 0000-0002-3913-5725
  • N. Tuygunov 3, PhD student of the Preventive dentistry Department
    ORCID: 0009-0000-9781-1755
  • F.A. Abdurahimova 3, PhD in Medical Sciences, associate professor of the Preventive dentistry Department
    ORCID: 0009-0003-8113-2725
  • T.N. Kamennova 1, PhD in Medical Sciences, associate professor of the Pediatric dentistry Department
    ORCID: 0000-0002-1641-8159
  • O.A. Kostovinskaya 1, 5th year student at the Dental Faculty
    ORCID: 0009-0009-8932-7897
  • 1 Volgograd State Medical University, 400066, Volgograd, Russia
  • 2 Medical Institute “Impulse”, 111711, Chirchik, Uzbekistan
  • 3 Tashkent State Medical University, 100047, Tashkent, Uzbekistan

Abstract

The use of artificial intelligence in medicine is controversial. Objective: to synthesize and evaluate current evidence on AI use in pediatric dentistry.
Materials and methods.
A comprehensive literature search was conducted across PubMed/MEDLINE, eLibrary, etc. The PRISMA framework guided the selection process. Forty-one studies were included in the final analysis.
Results.
AI applications clustered into: radiographic analysis; intraoral photography interpretation; caries-risk prediction; and virtual assistants for decision support and education. Diagnostic efficiency of programs ranged broadly: accuracy 72—99%, sensitivity 20—100%, specificity 49—100%. Key barriers include heterogeneous datasets, limited real-world validation, and unresolved legal/ethical governance.
Conclusion.
AI can augment diagnostics, prevention, and training in pediatric dentistry, but should be considered as complement and not replace clinical judgment. Future work should prioritize large multicentre datasets, prospective clinical validation, and robust ethical—legal frameworks to ensure safe, equitable deployment AI in pediatric dentistry.

Key words:

artificial intelligence, pediatric dentistry, caries, radiograph analysis, training

For Citation

[1]
Maslak E.E., Khudanov B.O., Shkhagosheva A.A., Matvienko N.V., Tuygunov N., Abdurahimova F.A., Kamennova T.N., Kostovinskaya O.A. Application of artificial intelligence in pediatric dentistry: a systematic review. Clinical Dentistry (Russia).  2026; 29 (1): 126—135. DOI: 10.37988/1811-153X_2026_1_126

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Received

November 4, 2025

Accepted

January 16, 2026

Published on

March 31, 2026