A digital solution for optimizing antimicrobial prophylaxis in surgery
https://doi.org/10.37489/2588-0519-2025-2-27-33
EDN: JYFMYV
Abstract
Relevance. Аntimicrobial prophylaxis in surgery (APS) is an important component of strategic healthcare programs aimed at reducing antibiotic resistance. The use of modern APS techniques also reduces the cost of prevention and treatment of surgical infection. However, the actual clinical practice of APS at the present time often differs from the scientifically based one, there is a suboptimal, excessive prescription of antibacterial agents. The introduction of APS using a Medical Decision Support System (DSS) can increase doctors' commitment to following modern medical technology.
Objective. To develop and implement a APS protocol for a multidisciplinary emergency hospital. To develop and implement a mobile application, a chatbot for choosing a decision on the mode of perioperative antibiotic prophylaxis.
Methods. Clinical and economic assessment of the "cost of illness" in the emergency department of surgical departments. Literary — an overview of regulatory documents as the basis of the APS protocol. Python programming method, digital application development. Development taking into account State industry standard R 71671-2024 "Medical decision support systems using artificial intelligence". Administrative — issuing orders and orders for the medical institution on the procedure for implementing the protocol, monitoring compliance with the protocol.
Results. A local APS protocol has been developed. Based on the APS protocol, standard solutions for choosing the APS method have been compiled. Applications (Telegram chatbots) have been developed to facilitate this choice for the doctor who decides on the APS regime. It has been established that the commitment to the implementation of the PAP protocol continues to grow. This may be due to the absence of an increase in cases of infection of the surgical wound, despite a multiple decrease in the use of antimicrobial agents. The visibility and convenience of using APS mode selection algorithms using digital technology are also revealed.
Conclusions. The implementation of the local protocol is effectively carried out using digital technologies, a system for supporting medical decision-making using artificial intelligence. The implementation of this APS protocol has made it possible to achieve significant cost reductions while maintaining the effectiveness of antimicrobial prophylaxis.
About the Authors
K. A. KoshechkinRussian Federation
Konstantin A. Koshechkin, Dr. Sci (Pharm.), Professor
Institute of Digital Medicine; Department of Information and Internet Technologies
Moscow
O. A. Leontyeva
Russian Federation
Olga A. Leontyeva, Assistant
Department of Internal Diseases
Tula
S. S. Leontyev
Russian Federation
Sergey S. Leontyev, Associate Professor, clinical pharmacologist
Department of Internal Medicine
Tula
A. M. Uridin
Russian Federation
Alexander M. Uridin, student
Institute of Digital Medicine; Department of Information and Internet Technologies
Moscow
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Review
For citations:
Koshechkin K.A., Leontyeva O.A., Leontyev S.S., Uridin A.M. A digital solution for optimizing antimicrobial prophylaxis in surgery. Kachestvennaya Klinicheskaya Praktika = Good Clinical Practice. 2025;(2):27-33. (In Russ.) https://doi.org/10.37489/2588-0519-2025-2-27-33. EDN: JYFMYV