Epidemiological behavior of the contamination curve by COVID-19 in Brazil: a time series study

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Abstract

The Brazil is experiencing the greatest episode of sanitary collapse ever known in the country’s history. Therefore, the relevance of this study is highlighted for the scientific advance on the epidemiological behavior of the virus in Brazil, enabling the development of analyses and discussions on the factors that influenced the high rates of contamination by SARS-CoV-2 in the country. Given the above, the study in question aims to analyze the epidemiological behavior of the contamination curve by COVID-19 by epidemiological week (EW), in the years 2020-2021, in Brazil. This is an ecological study of time series, prepared using information collected through secondary means. The country of origin of the study is Brazil, and its main theme is the number of those infected during the pandemic of COVID-19, this being the dependent variable of the study. The data been analyzed from February 23, 2020, when the first case was confirmed in Brazil, to January 1, 2022. In 2021, the country’s graph shows an exorbitant growth, reaching a peak of approximately 250 new cases per 100,000 inhabitants in the 12th EW. This data became the highest rate of the pandemic in Brazil, and did not vary significantly for the next twelve weeks. Thus, it was identified that Brazil was severely impacted by the new coronavirus, considering the high rates of confirmed cases of the virus in the country, the low adhesion of the population to preventive measures, the late start of mass vaccination in the Brazilian population, and the lack of structure in the health system, which was not properly prepared for the high demand generated by COVID-19.

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License: CC-BY-4.0