Abstract
The article projects the components of the intelligent decision support system for epidemiological diagnostics and investigates their interaction with the user. The system includes a bank of models and machine learning methods, a bank of population dynamics models, visualization and reporting tools, and management decision-making unit. The concept of information technology to ensure biosafety of the population is provided. A model of specified information technology use cases is developed and a sequence diagram is constructed. A model of information technology components and ways of their deployment on a server are proposed.
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Continued from Cybernetics and Systems Analysis, Vol. 58, No. 3 (2022).
The research is based on the results obtained within the research project 2020.02/0404 on the topic “Development of Intelligent Technologies for Assessing the Epidemic Situation to Support Decision-Making within the Population Biosafety Management” Funded by the National Research Foundation of Ukraine.
Translated from Kibernetyka ta Systemnyi Analiz, No. 4, July–August, 2022, pp. 12–23.
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Bazilevych, K.O., Chumachenko, D.I., Hulianytskyi, L.F. et al. Intelligent Decision-Support System for Epidemiological Diagnostics. II. Information Technologies Development*, **. Cybern Syst Anal 58, 499–509 (2022). https://doi.org/10.1007/s10559-022-00484-9
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DOI: https://doi.org/10.1007/s10559-022-00484-9