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3 . 2021

Methodological approaches for the development of a digital clinical recommendation

Abstract

This article provides an overview of the use of computer-interpreted clinical guidelines abroad, describes the benefits of using digital clinical guidelines in the healthcare system, and proposes a solution for translating clinical guidelines developed and used in the Russian Federation, into a machine-readable format.

Keywords:clinical practice guidelines, computer-interpretable guidelines, healthcare

Funding. The study had no sponsor support.

Conflict of interest. The authors declare no conflict of interest.

Contribution. Concept development, idea formation, formulation of key goals and objectives - Engalychev D.N.; collection and analysis of materials, discussion of research results - Khodovskiy A.A., Levin M.B.

For citation: Engalychev D.N., Khodovskiy A.A., Levin M.B. Methodological approaches for the development of a digital clinical recommendation. ORGZDRAV: novosti, mneniya, obuchenie. Vestnik VSHOUZ [HEALTHCARE MANAGEMENT: News, Views, Education. Bulletin of VSHOUZ]. 2021; 7 (3): 70-81. DOI: https://doi.org/10.33029/2411-8621-2021-7-3-70-81 (in Russian)

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CHIEF EDITOR
CHIEF EDITOR
Guzel E. Ulumbekova
MD, MBA from Harvard University (Boston, USA), Head of the Graduate School of Healthcare Organization and Management (VSHOUZ)

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