VAK Russia 5.4.7

Areas for Artificial Intelligence Implementation in Kuzbass Healthcare: Sociological Aspects

Published в Bulletin of Kemerovo State University. Series: Political, Sociological and Economic sciences · Volume 8, Issue 1, 2023 · Pages 40–49 · Rubrics: Sociology of Management
DOI 10.21603/2500-3372-2023-8-41-40-49
Received: 27.12.2022 Accepted: 09.03.2023 Published: 04.04.2023
Authors
1 Kemerovo State Medical University
Kemerovo, Russian Federation
2 Kemerovo State Medical University
, Plekhanov Russian University of Economics (Kemerovo branch)
from 01.01.2009 to 01.01.2021 Kemerovo, Russian Federation
The article analyzes the structure of morbidity in the region and identifies the main directions for artificial intelligence implementation in Russia. In order to identify the attitude of clinical physicians towards the artificial intelligence products, the authors performed a sociological survey. To develop the artificial intelligence in the Kemerovo Region it is necessary to use artificial intelligence products and build competence centers for implementing these products in regional healthcare. The main ways of development are strategic programs; creative teams within scientific and educational centers; introduction of automated workplaces for doctors. The authors’ proposals can improve the accuracy of diagnosis, simplify the treatment of patients with various diseases, and rise the healthcare of the Kemerovo region – Kuzbass to a new level.
artificial intelligence morbidity structure digitalization medical decision support system questionnaires questionnaire processing medicine and healthcare
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