THE EFFECTIVENESS OF MEDICAL AND SOCIAL SECURITY OF THE POPULATION OF UKRAINE UNDER THE INFLUENCE OF THE PANDEMIC
Abstract
There has yet to be a consensus among scientists regarding the set of determinants that influenced the course of the pandemic and resilience to it. The main goal of the study is to determine the optimal parameters for building a system of medical and social welfare for the population in an effective and resilient COVID-19 format. The systematization of literary sources and approaches to solving the problem shows that the task of identifying the readiness of the medical and social security of a country for possible epidemiological threats is relevant among scientists. Still, the obtained results differ from one region to another. The relevance of this scientific topic of problem-solving lies in the fact that each country has its specifics and mentality. That is, it is only possible to develop universal recommendations for some countries simultaneously. That is why the study of determining the optimal parameters for building a system of medical and social security for the population in an effective and resilient COVID-19 format was conducted for Ukraine, for each region separately. The research is carried out in the following logical sequence: collection and processing of statistical information on medical and social security of the regions of Ukraine; elimination of the effect of multicollinearity of indicators; distribution of determinants into destructors and stabilizers; in particular, the number of those who have recovered is a stabilizer, the rest are destroyers; data normalization; linguistic evaluation of variables; introduction of logical rules for applying fuzzy logic toolkit. The object of the study is the regional medical and social sphere of Ukraine. The article presents the results of an empirical search for a set of optimal determinants for countering the pandemic, which showed that the overall level of effectiveness of countering the pandemic in Ukraine with the available indicators is 73.5%. The study empirically confirms and theoretically proves that important indicators for effective countermeasures against possible epidemiological challenges are, first of all, the availability of hospitals - there is a large number of doctors, hospital beds, inpatients; as well as a responsible attitude of the population to their health through preventive examinations, visits to doctors and refusal of self-medication.
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