Resumo:
Arboviruses are infectious diseases that occur in significant numbers in Brazil and pose a major
challenge to Public Health. Although these diseases have been present in Brazil for a long time,
control policies have proven ineffective due to their reductionist approach, which primarily
focuses on biological interventions, typically involving mechanical and chemical control
measures. As a result, these policies fail to address the deeply entrenched socioeconomic
inequalities that characterize most Brazilian cities. In this context, the present study aimed to
analyze the factors and associated vulnerabilities contributing to the occurrence of arboviruses
from a multidimensional perspective, considering territorial and social determinants of health
in the municipalities of the State of Bahia. To achieve this, a systematic review was initially
conducted to assess the knowledge and application of spatial analysis techniques employed in
investigating the spatial behavior of arboviruses. Subsequently, a quantitative and analytical
study with a mixed ecological epidemiological design was carried out, focusing on the
occurrence of arboviruses in municipalities within the State of Bahia. The systematic review
highlighted that spatial modeling is a methodological tool that enables a deeper understanding
of the current and future distribution of arboviruses. All the included studies demonstrated that
arboviruses exhibited a heterogeneous spatial pattern across various geographical scales. This
reflects the underlying tendency of spatial dependence in the occurrence of arboviruses, which
may be associated with socioeconomic aggregation, as well as environmental and climatic
effects. The epidemiological study revealed a heterogeneous distribution of arboviral incidence
over the years in the municipalities of Bahia, with a significant increase and sustained incidence
observed during 2019-2020, followed by a decrease in the indicator during 2017-2018 and
2021. In the Pearson matrix, a statistically significant direct correlation (p ≤ 0.05) was observed
between arboviral incidence and the following variables: degree of urbanization, floods,
inundations, slums, urban housing developments, urban households, piped water supply,
sewerage network, income, women, White, and Indigenous populations. Through the
adjustment of the classical linear model, the Spatial AutoRegressive (SAR) model, and the
Conditional AutoRegressive (CAR) model, for the least and most epidemic years respectively,
it was possible to relate the studied arboviruses to sociodemographic and housing variables.
When comparing the three models, the classical model results were deemed unsatisfactory for
not incorporating spatial dependence. The best-fitting model was the SAR, as it captured spatial
dependence and allowed for the acquisition of more conclusive analytical data. This
demonstrates how the inclusion of the autoregressive parameter significantly aids in explaining
arboviral dynamics. In this model, the explanatory variables were: level of education,
population density, household location (urban area), water supply, the presence of floods, and
slums. It is concluded that arboviruses intertwine various socioeconomic and demographic
conditions, making it crucial to adopt strategies that are integrated with other policies, such as
economic and social policies.