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Spatial analysis of Tuberculosis in Rio de Janeiro in the period from 2005 to 2008 and associated socioeconomic factors using micro data and global spatial regression models

机译:使用微观数据和全球空间回归模型对里约热内卢2005年至2008年结核病的空间分析及相关的社会经济因素

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The present study analyses the spatial pattern of tuberculosis (TB) from 2005 to 2008 by identifying relevant socioeconomic variables for the occurrence of the disease through spatial statistical models. This ecological study was performed in Rio de Janeiro using new cases. The census sector was used as the unit of analysis. Incidence rates were calculated, and the Local Empirical Bayesian method was used. The spatial autocorrelation was verified with Morana??s Index and local indicators of spatial association (LISA). Using Spearmana??s test, variables with significant correlation at 5% were used in the models. In the classic multivariate regression model, the variables that fitted better to the model were proportion of head of family with an income between 1 and 2 minimum wages, proportion of illiterate people, proportion of households with people living alone and mean income of the head of family. These variables were inserted in the Spatial Lag and Spatial Error models, and the results were compared. The former exhibited the best parameters: R2 = 0.3215, Log-Likelihood = -9228, Akaike Information Criterion (AIC) = 18,468 and Schwarz Bayesian Criterion (SBC) = 18,512. The statistical methods were effective in the identification of spatial patterns and in the definition of determinants of the disease providing a view of the heterogeneity in space, allowing actions aimed more at specific populations.
机译:本研究通过空间统计模型确定疾病发生的相关社会经济变量,分析了2005年至2008年结核病(TB)的空间格局。这项生态研究是在里约热内卢使用新案例进行的。人口普查部门被用作分析单位。计算发病率,并使用局部经验贝叶斯方法。用Morana氏指数和空间关联局部指标(LISA)验证了空间自相关。通过Spearmana检验,在模型中使用了相关性为5%的变量。在经典多元回归模型中,最适合该模型的变量是:收入在最低工资1-2之间的一家之主的比例,文盲的比例,独居家庭的比例以及首领的平均收入家庭。将这些变量插入到“空间滞后”和“空间误差”模型中,并对结果进行比较。前者表现出最好的参数:R2 = 0.3215,对数似然= -9228,Akaike信息准则(AIC)= 18,468,施瓦兹贝叶斯准则(SBC)= 18,512。统计方法在确定空间格局和确定疾病的决定因素方面是有效的,从而提供了空间异质性的观点,从而使行动更多地针对特定人群。

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