Epidemiological Informing of the Population in Cities: Models and Their Application

IF 1 Q3 ECONOMICS Foresight and STI Governance Pub Date : 2022-06-20 DOI:10.17323/2500-2597.2022.2.80.89
V. Osipov, M. Osipova, S. Kuleshov, A. Zaytseva, A. Aksenov
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Abstract

With an increase of population density and contacts between people, the emergence of new biological viruses, the threat of various epidemics is growing. Countering these threats involves the implementation of large-scale preventive, therapeutic and other measures, both before the start and during the epidemic. Epidemiological informing of the population plays an important role in such counteraction. The currently used models of epidemiological informing the population of cities largely do not meet the needs of practice. This negatively affects the effectiveness of the response to epidemics. The purpose of the study is to develop new models and justify their applicability for understanding the processes in public health, the impact of epidemics on the economy and business. For the quantitative substantiation of programs (scenarios), such epidemiological informing, a method based on new models of epidemic development in related cities is proposed. The method is characterized by a new objective function that links economic efficiency with the state of health of the population in an epidemic. The models differ from the known solutions both in the space of the selected states of the processes under study and in the connections between them.Using the developed method, seven possible programs of epidemiological informing the population of related cities were analyzed and the best of them was found for specific conditions. New regularities have been established between the parameters of the programs being implemented and the results of the impact on the health and performance capability of the population. It is shown how an epidemic can develop in cities that are differently connected to each other by vehicles. The proposed method allows quickly find the best epidemiological informing programs for the population. The models underlying this method make it possible to predict public health and the impact of epidemics on the economy and business, depending on the planned measures to counteract epidemics. They are also applicable to determine the sources and time of infections’ onset. The obtained simulation results are in good agreement with the known facts. The method can be applied in advanced information systems to support the adoption of far-sighted decisions to counteract epidemics.
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城市人口的流行病学信息:模型及其应用
随着人口密度和人与人之间接触的增加,新的生物病毒的出现,各种流行病的威胁越来越大。应对这些威胁需要在疫情开始前和疫情期间实施大规模的预防、治疗和其他措施。人口的流行病学信息在这种对抗中发挥着重要作用。目前使用的向城市人口提供信息的流行病学模型在很大程度上不符合实践的需要。这对应对流行病的有效性产生了负面影响。该研究的目的是开发新的模型,并证明其适用性,以了解公共卫生过程、流行病对经济和商业的影响。为了定量证实方案(场景),如流行病学信息,提出了一种基于相关城市疫情发展新模型的方法。该方法的特点是一个新的目标函数,将经济效率与流行病中人群的健康状况联系起来。该模型与已知解决方案的不同之处在于所研究过程的选定状态的空间以及它们之间的联系。使用所开发的方法,分析了七个可能的流行病告知相关城市人口的方案,并找到了适合特定条件的最佳方案。在正在实施的方案的参数与对人群健康和表现能力的影响结果之间建立了新的规律。它展示了流行病如何在车辆连接不同的城市中发展。所提出的方法可以快速为人群找到最佳的流行病学信息计划。根据抗击流行病的计划措施,这种方法的模型可以预测公共卫生以及流行病对经济和商业的影响。它们也适用于确定感染的来源和发病时间。所获得的模拟结果与已知事实非常吻合。该方法可应用于先进的信息系统,以支持采取有远见的决策来对抗流行病。
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来源期刊
CiteScore
3.30
自引率
0.00%
发文量
8
审稿时长
25 weeks
期刊介绍: Foresight and STI Governance is an international interdisciplinary peer-reviewed open-access journal. It publishes original research articles, offering new theoretical insights and practical knowledge related to the following areas: strategic planning, science, technology, and innovation (STI) policy, foresight and other future studies. The journal considers articles on the following themes: - Foresight methods and best practices; - Long-term social and economic priorities for strategic planning and policy making; - Innovation strategies at the national, regional, sectoral, and corporate levels; - The development of National Innovation Systems; - The analysis of the innovation lifecycle from idea to the market; - Technological trends, breakthroughs, and grand challenges; - Technological changes and their implications for economy, policy-making, and society; - Corporate innovation management; - Human capital in STI.
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