Detecting space-time clusters of COVID-19 in Brazil: mortality, inequality, socioeconomic vulnerability, and the relative risk of the disease in Brazilian municipalities.

IF 2.8 3区 地球科学 Q1 GEOGRAPHY Journal of Geographical Systems Pub Date : 2021-01-01 Epub Date: 2021-03-08 DOI:10.1007/s10109-020-00344-0
M R Martines, R V Ferreira, R H Toppa, L M Assunção, M R Desjardins, E M Delmelle
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引用次数: 48

Abstract

The first case of COVID-19 in South America occurred in Brazil on February 25, 2020. By July 20, 2020, there were 2,118,646 confirmed cases and 80,120 confirmed deaths. To assist with the development of preventive measures and targeted interventions to combat the pandemic in Brazil, we present a geographic study to detect "active" and "emerging" space-time clusters of COVID-19. We document the relationship between relative risk of COVID-19 and mortality, inequality, socioeconomic vulnerability variables. We used the prospective space-time scan statistic to detect daily COVID-19 clusters and examine the relative risk between February 25-June 7, 2020, and February 25-July 20, 2020, in 5570 Brazilian municipalities. We apply a Generalized Linear Model (GLM) to assess whether mortality rate, GINI index, and social inequality are predictors for the relative risk of each cluster. We detected 7 "active" clusters in the first time period, being one in the north, two in the northeast, two in the southeast, one in the south, and one in the capital of Brazil. In the second period, we found 9 clusters with RR > 1 located in all Brazilian regions. The results obtained through the GLM showed that there is a significant positive correlation between the predictor variables in relation to the relative risk of COVID-19. Given the presence of spatial autocorrelation in the GLM residuals, a spatial lag model was conducted that revealed that spatial effects, and both GINI index and mortality rate were strong predictors in the increase in COVID-19 relative risk in Brazil. Our research can be utilized to improve COVID-19 response and planning in all Brazilian states. The results from this study are particularly salient to public health, as they can guide targeted intervention measures, lowering the magnitude and spread of COVID-19. They can also improve resource allocation such as tests and vaccines (when available) by informing key public health officials about the highest risk areas of COVID-19.

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检测巴西COVID-19的时空聚集性:巴西城市的死亡率、不平等、社会经济脆弱性和疾病的相对风险
南美首例COVID-19病例于2020年2月25日在巴西出现。截至2020年7月20日,确诊病例2118646例,确诊死亡80120例。为了协助制定预防措施和有针对性的干预措施,以应对巴西的大流行,我们提出了一项地理研究,以检测COVID-19的“活跃”和“新兴”时空集群。我们记录了COVID-19相对风险与死亡率、不平等、社会经济脆弱性变量之间的关系。我们使用前瞻性时空扫描统计方法检测了2020年2月25日至6月7日和2020年2月25日至7月20日期间巴西5570个城市的每日COVID-19群集,并检查了相对风险。我们应用广义线性模型(GLM)来评估死亡率、GINI指数和社会不平等是否是每个集群相对风险的预测因子。我们在第一个时间段内检测到7个“活跃”集群,一个在北部,两个在东北部,两个在东南部,一个在南部,一个在巴西首都。在第二阶段,我们发现9个RR > 1的集群分布在巴西所有地区。通过GLM获得的结果显示,预测变量与COVID-19的相对风险之间存在显著的正相关。考虑到GLM残差存在空间自相关性,我们建立了一个空间滞后模型,该模型显示空间效应、基尼指数和死亡率都是巴西COVID-19相对风险增加的有力预测因子。我们的研究可用于改善巴西各州的COVID-19应对和规划。这项研究的结果对公共卫生特别重要,因为它们可以指导有针对性的干预措施,降低COVID-19的规模和传播。他们还可以通过向主要公共卫生官员通报COVID-19风险最高的地区,改善资源分配,如检测和疫苗(如果有的话)。
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来源期刊
CiteScore
5.40
自引率
6.90%
发文量
33
期刊介绍: The Journal of Geographical Systems (JGS) is an interdisciplinary peer-reviewed academic journal that aims to encourage and promote high-quality scholarship on new theoretical or empirical results, models and methods in the social sciences. It solicits original papers with a spatial dimension that can be of interest to social scientists. Coverage includes regional science, economic geography, spatial economics, regional and urban economics, GIScience and GeoComputation, big data and machine learning. Spatial analysis, spatial econometrics and statistics are strongly represented. One of the distinctive features of the journal is its concern for the interface between modeling, statistical techniques and spatial issues in a wide spectrum of related fields. An important goal of the journal is to encourage a spatial perspective in the social sciences that emphasizes geographical space as a relevant dimension to our understanding of socio-economic phenomena. Contributions should be of high-quality, be technically well-crafted, make a substantial contribution to the subject and contain a spatial dimension. The journal also aims to publish, review and survey articles that make recent theoretical and methodological developments more readily accessible to the audience of the journal. All papers of this journal have undergone rigorous double-blind peer-review, based on initial editor screening and with at least two peer reviewers. Officially cited as J Geogr Syst
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