Measuring performance of countries to face covid-19 threat and the role of low population and high level of helthcare expenditure to mitigate negative effects

Mario COCCIA

Abstract


Abstract. The goal of study is to suggest the Index of resilience that detects which countries have had the best performance to reduce mortality related to COVID-19 pandemic and the Index of preparedness that assesses performance of countries to support COVID-19 vaccinations. The sample under study is European countries having a similar socioeconomic system. Results show that Iceland, Norway and Finland have a higher performance of resilience, reducing mortality in society, likely because a smaller size of population, whereas Belgium and Czech Republic the lowest performance. Instead, The UK has the highest performance to rollout vaccinations, driven by a high level of healthcare expenditure and the discovery and production of one of the COVID-19 vaccines.  However, results suggest that manifold countries have low pandemic preparedness and several biological security weaknesses that have to be improved with and effective  planning of crisis management for pandemic threats.

Keywords. Covid-19, Coronavirus infections, Crisis management, COVID-19 Mortality, Vaccination plans, Pandemic preparedness, Pandemic Responses, Healthcare expenditure, Population.

JEL. M15.

Keywords


Covid-19; Coronavirus infections; Crisis management; COVID-19 Mortality; Vaccination plans; Pandemic preparedness; Pandemic Responses; Healthcare expenditure; Population.

Full Text:


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DOI: http://dx.doi.org/10.1453/jsas.v8i4.2266

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