Monitoring the progress of health-related sustainable development goals (SDGs) in Brazilian states using the Global Burden of Disease indicators

Population Health Metrics - Tập 18 - Trang 1-14 - 2020
Daiane Borges Machado1,2, Júlia Moreira Pescarini1, Dandara Ramos1,3, Renato Teixeira4, Rafael Lozano5, Vinicius Oliveira de Moura Pereira6, Cimar Azeredo6, Rômulo Paes-Sousa7, Deborah Carvalho Malta8, Mauricio L. Barreto1,3
1Center of Data and Knowledge Integration for Health (Cidacs), Oswaldo Cruz Foundation, Salvador, Brazil
2Centre for Global Mental Health, London School of Hygiene & Tropical Medicine (LSHTM), London, UK
3Institute of Collective Health (ISC), Federal University of Bahia (UFBA), Salvador, Brazil
4Public Health Graduate Program, School of Medicine, Federal University of Minas Gerais, Belo Horizonte, Brazil
5School of Medicine, Institute for Health Metrics and Evaluation, University of Washington, Seattle, USA
6Brazilian Institute of Geography and Statistics (IBGE), Rio de Janeiro, Brazil
7René Rachou Institute, Fiocruz Minas, Belo Horizonte, Brazil
8Escola de Enfermagem, Departamento Materno Infantil e Saúde Pública, Universidade Federal de Minas Gerais, Belo Horizonte, Brazil

Tóm tắt

Measuring the Global Burden of Disease (GBD) has been the key to verifying the evolution of health indicators worldwide. We analyse subnational GBD data for Brazil in order to monitor the performance of the Brazilian states in the last 28 years on their progress towards meeting the health-related SDGs. As part of the GBD study, we assessed the 41 health-related indicators from the SDGs in Brazil at the subnational level for all the 26 Brazilian states and the Federal District from 1990 to 2017. The GBD group has rescaled all worldwide indicators from 0 to 100, assuming that for each one of them, the worst value among all countries and overtime is 0, and the best is 100. They also estimate the overall health-related SDG index as a function of all previously estimated health indicators and the SDI index (Socio-Demographic Index) as a function of per capita income, average schooling in the population aged 15 years or over, and total fertility rate under the age of 25 (TFU25). From 1990 to 2017, most subnational health-related SDGs, the SDG and SDI indexes improved considerable in most Brazilian states. The observed differences in SDG indicators within Brazilian states, including HIV incidence and health worker density, increased over time. In 2017, health-related indicators that achieved good results globally included the prevalence of child wasting, NTD, household air pollution, conflict mortality, skilled birth attendance, use of modern contraceptive methods, vaccine coverage, and health worker density, but poor results were observed for child overweight and homicide rates. The high rates of overweight, alcohol consumption, and smoking prevalence found in the historically richest regions (i.e., the South and Southeast), contrast with the high rates of tuberculosis, maternal, neonatal, and under-5 mortality and WASH-related mortality found in the poorer regions (i.e., the North and Northeast). The majority of Brazil’s health-related SDG indicators have substantially improved over the past 28 years. However, inequalities in health among the Brazilian states and regions remain noticeable negatively affecting the Brazilian population, which can contribute to Brazil not achieving the SDG 2030 targets.

Tài liệu tham khảo

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