Clustering of standardized cumulative incidence rates over a multi-year period as a method for analyzing the spatial distribution of disease cases

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Objective. Rationale for the use of visualization of the results of hierarchical clustering of standardized indicators of cumulative incidence over a long-term period as a method for analyzing the spatial distribution of disease cases.

Materials and methods. Information on the incidence of chronic hepatitis B (CHB) in the population of 85 constituent entities of the Russian Federation for the period from 2014 to 2022 was analyzed according to statistical form No. 2 Information on infectious and parasitic diseases. All calculations were performed using Python libraries.

Results. The sequence of actions for obtaining and interpreting the results of hierarchical clustering of indicators of long-term cumulative incidence in the constituent entities of the Russian Federation is described in order to analyze the long-term incidence of CHB in the population.

Conclusion. The proposed method significantly increases the information content and objectivity of the results of studying the spatial distribution of CHB cases.

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Sobre autores

Dmitry Dubodelov

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Autor responsável pela correspondência
Email: dubodelov@cmd.su
ORCID ID: 0000-0003-3093-5731

Cand. Med. Sci., Senior Researcher, Laboratory of Viral Hepatitis, Department of Molecular Diagnostics and Epidemiology

Rússia, Moscow

Svetlana Ugleva

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: ugleva@cmd.su
ORCID ID: 0000-0002-1322-0155

МD, Scientific Consultant, Organizational and Methodological Department

Rússia, Moscow

Gasan Gasanov

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: gasanov@cmd.su
ORCID ID: 0000-0002-0121-521X

Post-graduate Student

Rússia, Moscow

Marina Korabel’nikova

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: korabelnikova@cmd.su
ORCID ID: 0000-0002-2575-8569

Researcher, Laboratory of Viral Hepatitis

Rússia, Moscow

Natalya Sycheva

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: natsy@bk.ru
ORCID ID: 0000-0001-8557-6540

Junior Researcher, Laboratory of Health Care Associated Infections

Rússia, Moscow

Vasily Zavolozhin

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: zavolozhin@cmd.su
ORCID ID: 0000-0003-4015-1105

Junior Researcher, Laboratory of Viral Hepatitis, Department of Molecular Diagnostics and Epidemiology

Reunião, Moscow

Anna Esman

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: esman@cmd.su
ORCID ID: 0000-0002-5456-7649

Researcher, Laboratory of Molecular Methods for Genetic Polymorphisms Research

Rússia, Moscow

Natalia Vlasenko

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: vlasenko@cmd.su
ORCID ID: 0000-0002-2388-1483

Researcher, Laboratory of viral hepatitis, Department of molecular diagnostics and epidemiology

Rússia, Moscow

Tatiana Semenenko

N.F. Gamaleya National Research Center for Epidemiology and Microbiology of the Ministry of Health of Russia

Email: semenenko@gamaleya.org
ORCID ID: 0000-0002-6686-9011

MD, Professor, Head, Epidemiology Department

Rússia, Moscow

Stanislav Kuzin

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: drkuzin@list.ru
ORCID ID: 0000-0002-0616-9777

Professor Stanislav N. Kuzin, MD, Head, Laboratory of Viral Hepatitis, Department of Molecular Diagnostics and Epidemiology

Rússia, Moscow

Vasily Akimkin

Central Research Institute of Epidemiology, Russian Federal Service for Supervision of Consumer Rights Protection and Human Well-Being

Email: vgakimkin@yandex.ru
ORCID ID: 0000-0003-4228-9044

Academician of the Russian Academy of Sciences, Professor, MD. Director

Rússia, Moscow

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2. Fig. 1. The result of hierarchical clustering of the constituent entities of the Russian Federation based оn long-term intensive rates of СНВ incidence

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3. Fig. 2. Scaled intensive rates of СНВ incidence

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