THE ROLE OF ARTIFICIAL INTELLIGENCE IN OPTIMIZING ULTRASOUND DIAGNOSIS OF ADENOMYOSIS AND PELVIC ENDOMETRIOSIS

Authors

DOI:

https://doi.org/10.32782/health-2026.1.5

Keywords:

machine learning, automated image processing, clinical optimization, personalized medicine, gynecological pathology

Abstract

The application of artificial intelligence (AI) in medical diagnostics opens new perspectives for enhancing the accuracy, speed, and efficiency of examinations in patients with gynecological pathology. Ultrasound diagnosis of adenomyosis and pelvic endometriosis remains a challenging task due to the variability of clinical manifestations, indistinct boundaries of affected tissues, and individual anatomical features. The aim of this study is a comprehensive analysis of the role of AI algorithms in optimizing the ultrasound examination process, improving the accuracy of diagnostic conclusions, and reducing the likelihood of diagnostic errors. Based on current scientific research and international clinical guidelines, methods of automated ultrasound image processing, the use of machine learning algorithms for identifying pathological changes in the endometrium and myometrium, and the integration of AI solutions into the workflow of diagnostic physicians are discussed. The prospects of applying deep learning models for automatic delineation of lesion areas, predicting disease severity, and monitoring treatment effectiveness are also considered. Special attention is given to the clinical advantages of AI implementation: reducing examination time, minimizing subjective operator influence, increasing result reproducibility, and enabling early detection of pathologies, which significantly impacts individualized therapy planning. The economic efficiency of AI integration is also highlighted, as automation of the examination process allows for optimized personnel time and reduced costs for repeat studies. It is concluded that an effective combination of physician expertise and intelligent algorithms enables the creation of a highly accurate and reliable system for ultrasound diagnosis of adenomyosis and endometriosis, meeting modern requirements of personalized medicine. Implementing AI in routine examinations of gynecological patients represents an important step toward improving the quality of medical care and optimizing clinical resources

References

Epidemiology of endometriosis in Ukraine: results a multicenter study (2019–2021) / A. G. Salmanov et al. Polski Merkuriusz Lekarski. 2024. Vol. LII. № 3. Р. 277–285. URL: https://repo.odmu.edu.ua/xmlui/bitstream/handle/123456789/16614/Korniyenko.pdf?sequence=1&isAllowed=y (дата звернення: 08.03.2026).

Mishra I., Melo P., Easter C., Sephton V., Dhillon‐Smith R., Coomarasamy A. Prevalence of adenomyosis in women with subfertility: systematic review and meta‐analysis. Ultrasound in Obstetrics & Gynecology. 2023. Vol. 62. № 1. Р. 23–41. DOI: https://doi.org/10.1002/uog.26159

Запорожан В. М., Гладчук І. З., Рожковська Н. М., Гайдаржі Х. Д. Глибокий ендометріоз: огляд сучасних рекомендацій та власні дані. Збірник наукових праць Асоціації акушерів-гінекологів України. 2022. № 2(50). С. 26–36. DOI: https://doi.org/10.35278/2664-0767.2(50).2023.274979

Бакун О. В., Чоповці І. І. Переваги трансвагінального ультразвукового дослідження у діагностиці ендометріоза. Science and technology: challenges, prospects and innovations: the 10 th International scientific and practical conference (Osaka, May 22-24, 2025) Osaka, 2025. Р. 166–171. URL: https://www.researchgate.net/profile/Lyudmyla-Antypenko/publication/392000949_Database_analysis_of_completed_clinical_trials_investigating_hemostatic_agents_implications_for_military_trauma_care/links/68302700df0e3f544f581000/Database-analysis-of-completed-clinical-trials-investigatinghemostatic-agents-implications-for-military-trauma-care.pdf#page=166 (дата звернення: 08.03.2026)

Brunelli A. C., Brito L. G. O., Moro F. A. S., Jales R. M., Yela D. A., Benetti-Pinto C. L. Ultrasound elastography for the diagnosis of endometriosis and adenomyosis: a systematic review with meta-analysis. Ultrasound in Medicine & Biology. 2023. Vol. 49. № 3. Р. 699–709. DOI: https://doi.org/10.1016/j.ultrasmedbio.2022.11.006

Orishchak I. K., Makarchuk O. M., Henyk N. I., Ostrovska O. M., Havryliuk H. M. Sonoelastography evaluation in the diagnosis of endometrial pathology combined with chronic endometritis in infertile women. Journal of Medicine and Life. 2022. Vol. 15. № 3. Р. 397–404. DOI: https://doi.org/10.25122/jml-2021-0358

Application of deep learning model in the sonographic diagnosis of uterine adenomyosis / D. Raimondo et al. International Journal of Environmental Research and Public Health. 2023. Vol. 20. № 3. Artilce 1724. DOI: https://doi.org/10.3390/ijerph20031724

Zhao Q., Yang T., Xu C., Hu J., Shuai Y., Zou H., Hu W. Automatic diagnosis for adenomyosis in ultrasound images by deep neural networks. European Journal of Obstetrics & Gynecology and Reproductive Biology. 2024. № 301. Р. 128–134. DOI: https://doi.org/10.1016/j.ejogrb.2024.07.046

Orlov S., Jokubkiene L. Prevalence of endometriosis and adenomyosis at transvaginal ultrasound examination in symptomatic women. Acta obstetricia et gynecologica Scandinavica. 2022. Vol. 101. № 5. Р. 524–531. DOI: https://doi.org/10.1111/aogs.14337

Kosei N. V., Vetokh H. V., Chaykivska E. F., Yusko T. I., Daineko I. I. Sonographic parameters in the diagnosis of chronic cervicitis. Клінічна та профілактична медицина. 2024. № 2. С. 28–34. DOI: https://doi.org/10.31612/2616-4868.2.2024.04

Savchenko U.-S. Prevention Of Premature Skin Aging Through the Use of Bioactive Forms of Vitamin C With Hyaluronate. The American Journal of Medical Sciences and Pharmaceutical Research. 2025. Vol. 7. № 8. Р. 51–55. DOI: https://doi.org/10.37547/tajmspr/Volume07Issue08-08

Dekhtiar Y. M., Kostyev F. I., Zacheslavsky O., Kuznietsov D. Urodynamic characteristics of lower urinary tract of patients with idiopathic overactive bladder. Urology Annals. 2019. Vol. 11. № 1. Р. 83–86. DOI: https://doi.org/10.4103/UA.UA_37_18

Невгадовська П. М., Чечуга С. Б. Діагностика хронічного ендометриту у жінок із звичним невиношуванням вагітності. Науковий вісник Ужгородського університету. 2023. № 1(67). С.57–60. DOI: https://doi.org/10.32782/2415-8127.2023.67.10

Огоренко В. В., Гненна О. М., Кокашинський В. О. Соціально-психологічні та клінічні аспекти домашнього насильства (огляд літератури). Український вісник психоневрології. 2021. № 1. С. 48–54. DOI: https://doi.org/10.36927/2079-0325-V29-is1-2021-9

Dyndar O. A., Dymarska O. Z. Medical-social audit of reproductive age women with ovarian endometriomas. Medical Science of Ukraine (MSU). 2024. Vol. 20. № 1. Р. 4–11. DOI: https://doi.org/10.32345/2664-4738.1.2024.01

Orlov S., Sladkevicius P., Jokubkiene L. Evaluating the development of endometriosis and adenomyosis lesions over time: An ultrasound study of symptomatic women. Acta Obstetricia et Gynecologica Scandinavica. 2024. Vol. 103. № 8.Р. 1634–1644. DOI: https://doi.org/10.1111/aogs.14865

Published

2026-05-29

Issue

Section

MEDICINE