CONCEPT FOR A CLINICAL DECISION SUPPORT SYSTEM IN GASTROINTESTINAL ENDOSCOPY
- 作者: Khryashchev V.V.1
-
隶属关系:
- P.G. Demidov Yaroslavl State University
- 期: 编号 2 (2025)
- 页面: 137-144
- 栏目: MEDICAL DEVICES, SYSTEMS AND PRODUCTS
- URL: https://bakhtiniada.ru/2307-5538/article/view/296804
- DOI: https://doi.org/10.21685/2307-5538-2025-2-16
- ID: 296804
如何引用文章
全文:
详细
Background. The article considers the problem of constructing a system for supporting medical decisionmaking for endoscopic examinations of the gastrointestinal tract based on neural network methods and video data analysis algorithms. To solve this problem, the structure of an artificial intelligence system is proposed that takes into account the specifics of video endoscopic examinations. Materials and methods. Deep machine learning methods are used to construct the system. Neural network architectures of the YOLO family, as well as transform architectures, are used as the core for key algorithms for processing the video stream. Results and conclusions. The concept of constructing a system for supporting medical decision-making is proposed. A trial operation of the system was carried out in two medical institutions. Studies have shown that the system can be used both directly during an endoscopic examination and for quality control of a screening study after it has been conducted and for recording the results in a medical information system.
作者简介
Vladimir Khryashchev
P.G. Demidov Yaroslavl State University
编辑信件的主要联系方式.
Email: v.khryashchev@uniyar.ac.ru
Candidate of technical sciences, associate professor, associate professor of the sub-department of digital technologies and machine learning
(14 Sovetskaya street, Yaroslavl, Russia)参考
- Demidova L.A., Titov S.B. Gibridnye algoritmy analiza i obrabotki dannykh v zadachakh intellektual'noy podderzhki prinyatiya resheniy = Hybrid algorithms for data analysis and processing in intellectual decision support tasks. Moscow: Goryachaya liniya – Telekom, 2017. (In Russ.)
- Rameev O.A. Osnovy teorii prinyatiya resheniy v organizatsionnykh sistemakh upravleniya = Fundamentals of decision theory in organizational management systems. Moscow: Goryachaya liniya – Telekom, 2023. (In Russ.)
- Khodashahri N.G., Sarabi M.M.H. Decision support system (DSS). Singaporean Journal of Business Economics and Management Studies. 2013;1(6):95–102.
- Dinevski D., Sarenac T., Bele U. Clinical Decision Support Systems. Telemedicine Techniques and Applications. 2011;(1):185–210.
- Kirsanova A.V. The current state and prospects of development of expert medical systems. Novyy universitet. Ser.: Tekhnicheskie nauki = New University. Ser.: Technical Sciences. 2015;(11):45–46. (In Russ.)
- Frolova M.S., Frolov S.V., Tolstukhin I.A. Decision support systems for equipping medical institutions with medical equipment. Universitet im. V.I. Vernadskogo. Spetsial'nyy vypusk = Vernadsky University. Special issue. 2014;(52):106–111. (In Russ.)
- Ludupova E.Yu. Medical errors. Literary review. Vestnik Roszdravnadzora = Bulletin of Roszdravnadzor. 2016;(2):6–15. (In Russ.)
- Vardanyan G.D., Avetisyan G.A., Dzhanoyan G.Dzh. Medical errors: the current state of the problem. Meditsinskaya nauka Armenii NAN RA = Medical Science of Armenia NAS RA. 2019;(4):105–119. (In Russ.)
- Avsharov E.M., Abgaryan M.G., Safaryants S.A. Medical image processing as a necessary tool for the medical diagnostic process. Vestnik rentgenologii i radiologii = Bulletin of Radiology and Radiology. 2010;(3):54–61. (In Russ.)
- Palevskaya S.A., Korotkevich A.G. Endoskopiya zheludochno-kishechnogo trakta = Endoscopy of the gastrointestinal tract. Moscow: GEOTAR-Media, 2020:752. (In Russ.)
- Kuvaev R.O., Nikonov E.L., Kashin S.V. et al. Quality control of endoscopic examinations, prospects for automated analysis of endoscopic images. Kremlevskaya meditsina. Klinicheskiy vestnik = Kremlin medicine. Clinical Bulletin. 2013;2:51–56. (In Russ.)
- Kashin S.V., Nikonov E.L., Nekhaykova N.V., Lileev D.V. Standards of high-quality colonoscopy (manual for doctors). Dokazatel'naya gastroenterologiya = Evidence-based gastroenterology. 2019;(8):3–32. (In Russ.)
- Nikolenko S.I. Mashinnoe obuchenie: osnovy = Machine learning: fundamentals. Saint Petersburg: Piter, 2025:608. (In Russ.)
- Gudfellou Ya., Bendzhio I., Kurvill' A. Glubokoe obuchenie = Deep learning. Moscow: DMK-Press, 2017:652. (In Russ.)
- Khryashchev V.V., Zav'yalov D.V., Anderzhanova A.S. Classification of endoscopic images of the mouth of the appendix based on deep machine learning methods. Tsifrovaya obrabotka signalov = Digital signal processing. 2023;(1):35–38. (In Russ.)
- Khryashchev V.V. The use of deep machine learning methods in the task of detecting the dome of the cecum on the video data of a colonoscopic examination. Modeli, sistemy, seti v ekonomike, tekhnike, prirode i obshchestve = Models, systems, and networks in economics, technology, nature, and society. 2023;(4): 133–141. (In Russ.)
- Khryashchev V.V. Segmentation of images of polyps during colonoscopic examination using neural networks. Biomeditsinskaya radioelektronika = Biomedical radio electronics. 2023;26(4):66–72. (In Russ.)
补充文件
