Impact of the COVID-19 Pandemic on the Actions of the Schistosomiasis Control Program in an Endemic Area in Northeastern Brazil
Acta Tropica(2023)SCI 3区SCI 2区
Univ Fed Alagoas | Univ Fed Sergipe | Univ Fed Pernambuco | Secretaria Estado Saude Alagoas | Fed Univ Vale Do Sao Francisco | Univ Estadual Ciencias Saude Alagoas | Univ Fed Minas Gerais
Abstract
Schistosomiasis remains a serious public health concern in Brazil and the Schistosomiasis Control Program (PCE) was elaborated to assist in the control of the disease. Nevertheless, the irruption of the COVID-19 pandemic may have impacted the program. Herein, we assessed the impact of the pandemic on PCE actions in an endemic area in the region with the highest positivity rate for schistosomiasis in Brazil. We conducted an ecological, population-based study using data from the PCE of the state of Alagoas, between 2015 and 2021, to calculate the percentage of change. The temporal trend analysis was performed using the segmented log-linear regression model. To evaluate the spatial distribution of the data, choropleth maps were made showing the values of the% of change. Moran maps was elaborated to indicate the critical areas. Our analysis showed a decrease in the population surveyed in 2020 (-41.00%) and 2021 (-18.42%). Likewise, there was a reduction in the number of Kato-Katz tests performed (2020 =-43.45%; and in 2021 =-19.63%) and, consequently, a drop in the rate of positive tests (-37.98% in 2020 and-26.14% in 2021). Importantly, treatment of positive cases was lower than 80% (77.44% in 2020 and 77.38% in 2021). Additionally, spatial clusters with negative percentage values of up to-100% of the PCE indicators were identified mostly in the municipalities of the coastal areas that are his-torically most affected by schistosomiasis. Taken together, our analyzes corroborate that PCE actions in endemic municipalities of Alagoas were impacted by the COVID-19 pandemic.
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Key words
SARS-CoV-2,Pandemic,Schistosoma mansoni,Public health
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