Big Data-Planetary Health approach for evaluating the Brazilian Dengue Control Program

Fernando Xavier, Gerson Laurindo Barbosa, Cristiano Corrêa de Azevedo Marques, Antonio Mauro Saraiva
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Abstract

ABSTRACT OBJECTIVE This study aims to integrate the concepts of planetary health and big data into the Donabedian model to evaluate the Brazilian dengue control program in the state of São Paulo. METHODS Data science methods were used to integrate and analyze dengue-related data, adding context to the structure and outcome components of the Donabedian model. This data, considering the period from 2010 to 2019, was collected from sources such as Department of Informatics of the Unified Health System (DATASUS), the Brazilian Institute of Geography and Statistics (IBGE), WorldClim, and MapBiomas. These data were integrated into a Data Warehouse. K-means algorithm was used to identify groups with similar contexts. Then, statistical analyses and spatial visualizations of the groups were performed, considering socioeconomic and demographic variables, soil, health structure, and dengue cases. OUTCOMES Using climate variables, the K-means algorithm identified four groups of municipalities with similar characteristics. The comparison of their indicators revealed certain patterns in the municipalities with the worst performance in terms of dengue case outcomes. Although presenting better economic conditions, these municipalities held a lower average number of community healthcare agents and basic health units per inhabitant. Thus, economic conditions did not reflect better health structure among the three studied indicators. Another characteristic of these municipalities is urbanization. The worst performing municipalities presented a higher rate of urban population and human activity related to urbanization. CONCLUSIONS This methodology identified important deficiencies in the implementation of the dengue control program in the state of São Paulo. The integration of several databases and the use of Data Science methods allowed the evaluation of the program on a large scale, considering the context in which activities are conducted. These data can be used by the public administration to plan actions and invest according to the deficiencies of each location.
评估巴西登革热控制计划的大数据-专有健康方法
摘要 目的 本研究旨在将行星健康和大数据概念整合到多纳比德模型中,以评估巴西圣保罗州的登革热控制项目。方法 采用数据科学方法对登革热相关数据进行整合和分析,为多纳比德模型的结构和结果部分增加背景。这些数据收集自统一卫生系统信息部 (DATASUS)、巴西地理统计局 (IBGE)、WorldClim 和 MapBiomas 等来源,时间跨度为 2010 年至 2019 年。这些数据被整合到一个数据仓库中。使用 K-means 算法来识别具有相似背景的群体。然后,考虑到社会经济和人口变量、土壤、健康结构和登革热病例,对这些群体进行统计分析和空间可视化。结果 利用气候变量,K-means 算法确定了具有相似特征的四组城市。对这些城市的指标进行比较后发现,在登革热病例结果方面表现最差的城市存在某些模式。虽然这些城市的经济条件较好,但平均每个居民拥有的社区医疗机构和基本医疗单位数量较少。因此,在所研究的三项指标中,经济条件并不能反映出较好的卫生结构。这些城市的另一个特点是城市化。表现最差的城市拥有更多的城市人口和与城市化相关的人类活动。结论 该方法发现了圣保罗州在实施登革热控制计划方面的重要缺陷。通过整合多个数据库并使用数据科学方法,可以对该计划进行大规模评估,同时考虑到开展活动的背景。公共管理部门可以利用这些数据来规划行动,并根据各地的不足进行投资。
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