1. PROPOSTA DE ÍNDICE PARA AVALIAÇÃO DE SITUAÇÃO DE VULNERABILIDADE SOCIAL À COVID-19.
- Author
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Ramalho Barros, Juliana, Barbara Gioia, Thamy, and Silva Vasques, Hérika
- Subjects
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COVID-19 , *MACHINE learning , *RANDOM forest algorithms , *SOCIAL history - Abstract
The health-disease process encompasses factors beyond genetic and biological susceptibility, but also includes variables linked to social and economic conditions that can lead to health vulnerability. The expanding situation of COVID-19 in Brazil has demonstrated how social inequalities affect this health-disease process; thus, evaluating such disparities can help the country confront the disease. The objective of this article was to establish an index to assess the situation of social vulnerability to COVID-19. From the 12 selected variables, the modeling identified those the predicted the occurrence of COVID-19 in the State of Goiás and the Federal District. For this, two machine learning algorithms were tested: Random Forest and XGBoost. The results indicated the most predictive variables were income status, the total hospitalizations for ailments classified as very vulnerable, and the percentage of the population working informally. Therefore, approximately 23% of the municipalities were classified with high to very high vulnerability. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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