Comparison of digital technologies and traditional diagnostic methods in the assessment of oral health
https://doi.org/10.33925/1683-3759-2025-1085
Abstract
Relevance. Modern approaches to diagnosing and monitoring oral health are being increasingly shaped by digital technologies. As remote monitoring tools continue to evolve, increasing attention is being paid to the clinical effectiveness of mobile applications for self-monitoring oral health.
Materials and methods. The study included 300 university students aged 18–29 years. Standard index-based assessment methods were applied (DMFT, Hygiene Index, Occlusogram Index), along with the Dental Scope mobile application. Appbased results were compared with clinical data. Follow-up assessments were carried out after two years in 235 participants. Descriptive statistics, the Wilcoxon signed-rank test, and paired t-test were used to assess changes in the measured indices.
Results. Both the main and control groups showed improvements in most parameters following treatment. The mean app-based score increased from 7.4 to 9.3 in the main group and from 7.9 to 9.1 in the control group (p < 0.001). Positive changes were observed in the DMFT index, hygiene levels, and Occlusogram Index (OGI). These changes correlated with clinical data, confirming the diagnostic value of the digital tool.
Conclusion. The results demonstrate a strong agreement between the dynamics recorded by the mobile application and those observed through conventional clinical assessment. This supports the use of the Dental Scope app as an effective tool in preventive and follow-up dental care.
About the Authors
N. V. AnisovRussian Federation
Nikita V. Anisov, DMD, Assistant Professor, Department of the Prosthodontics with a Course in Orthodontics
28, Krupskoi Str., Smolensk, Russian Federation
N. N. Abolmasov
Russian Federation
Nikolay N. Abolmasov, DMD, PhD, DSc, Professor, Head of the Department of Prosthodontics with a Course in Orthodontics
Smolensk
K. A. Prygunov
Russian Federation
Konstantin A. Prygunov, DMD, PhD, Associate Professor, Department of the Oral Surgery
Kaluga
N. A. Andryushenkova
Russian Federation
Nadezhda A. Andryushenkova, DMD, PhD, Associate Professor, Department of the Oral and Maxillofacial Surgery
Smolensk
A. L. Skotskaya
Russian Federation
Anastasia L. Skotskaya, DMD, Clinical Resident, Department of the Restorative Dentistry
Smolensk
A. A. Efimova
Russian Federation
Anastasia A. Efimova, 6th-year Student, Faculty of General Medicine
Smolensk
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Review
For citations:
Anisov NV, Abolmasov NN, Prygunov KA, Andryushenkova NA, Skotskaya AL, Efimova AA. Comparison of digital technologies and traditional diagnostic methods in the assessment of oral health. Parodontologiya. (In Russ.) https://doi.org/10.33925/1683-3759-2025-1085