STATISTICAL PROCESSING OF SALIVARY GLAND PATHOLOGIES USING ARTIFICIAL INTELLIGENCE AT THE SAMARKAND STATE MEDICAL UNIVERSITY CLINIC

Dilshod Davronovich Maksudov

PhD, Assistant at the Department of Maxillofacial Surgery, Samarkand State Medical University.

Buranov Mukhriddin Khusniddin ugli

Student of Samarkand State Medical University

##semicolon## Artificial intelligence, salivary glands, pathology, statistics, diagnostics, clinical analysis, machine learning, neural network, differential diagnosis, medical informatics, imaging diagnostics, forecasting, healthcare.


सार

This article explores the potential of artificial intelligence (AI) technologies in studying salivary gland pathologies at the Samarkand State Medical University clinic and their significance in statistical processing. The limitations of traditional diagnostic methods are highlighted, and the advantages of AI algorithms in improving accuracy, speed, and reliability are analyzed based on scientific evidence. The integration of AI technologies into clinical practice is examined using a large database collected in clinical settings. Research results demonstrated a 15-20% increase in diagnostic accuracy and a several-fold improvement in statistical processing speed. The article reveals the prospects for widespread application of AI-based approaches in the healthcare system. 


##submission.citations##

1. Karimov A. Sh., Tibbiyotda sun’iy intellekt texnologiyalarining qo‘llanilishi, Toshkent: Fan va texnologiya, 2021. – 245 b

2. АШ Ахроров. Features of the use of a bone block taken from the zone of the zygomaticalveolar buttress. Web of Medicine :Journal of Medicini,Practice and Nursing 2 (ISSN (E):2938 …, 2024

3. Qodirov B. R., So‘lak bezlari kasalliklarining klinik diagnostikasi, Samarqand: SamDTU nashriyoti, 2020. – 198 b

4. БАМ Ахроров Алишер Шавкатович , Усмонов Рахматилло Файзуллаевич. Особенности применения костного блока, взятого из зоны скуло-альвеолярного контрфорса. Journal of new century innovations 47, 149-157, 2024

5. Rustamova M. D., Sun’iy intellekt va mashina o‘qitish asoslari, Toshkent: Innovatsiya Press, 2022. – 310 b

6. AA Shavkatovich. Modern Aspects of Treatment of Odontogenic Sinusitis. Genius Repository 25, 23-26, 2023

7. Johnson R., Artificial Intelligence in Medical Imaging, London: Springer, 2020. – 356 p

8. Burxanov M. Kh., Tibbiy statistika va uning amaliyotdagi o‘rni, Samarqand: SamDTU, 2019. – 175 b

9. AA Shavkatovich, MD Davronovich. Peculiarities of the treatment algorithm for the congenital defect that crosses the palate. Intent Research Scientific Journal 2, 101-107, 2023

10. Ivanov V. P., Meditsinskaya informatika i iskusstvennyy intellekt, Moskva: Meditsina, 2021. – 280 b.

11. Рахматов, Ф. О., & Нуриев, К. К. (2022). Исследование плодов дыни как объекта технической переработки. Илмий мақолалар тўплами, 330.

12. Нуриев, К. К., Рахматов, О., Кадирова, Р. С., & Рахматов, О. О. (2015). Биоконверсия органических отходов растительного происхождения в условиях Узбекистана. In Проблемы рекультивации отходов быта, промышленного и сельскохозяйственного производства (pp. 468-470).

13. Джураев, А. Ж., Нуриев, К. К., & Юсуфалиев, А. (2003). Разработка высокоресурсных лап для культиваторов. Тракторы и сельскохозяйственные машины, 2, 42-43.

14. Raxmatov, F. O., Raxmatov, O., Nuriev, K. K., & Nuriev, M. K. (2021, October). Combined dryer with high efficiency for drying high-moist agricultural products. In IOP Conference Series: Earth and Environmental Science (Vol. 868, No. 1, p. 012076). IOP Publishing.

15. Nuriev, K. K., Nuriev, M. K., Rakhmatov, O., & Rakhmatov, F. O. (2022, August). Comprehensive assessment of the degree of flooding of soil-cutting working bodies (on the example of plow shares). In IOP Conference Series: Earth and Environmental Science (Vol. 1076, No. 1, p. 012069). IOP Publishing.