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Improving health information systems in Guatemala using weighted correlation network analysis

机译:使用加权相关网络分析改善危地马拉的卫生信息系统

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Guatemala has the fifth worst child stunting prevalence - low-height-for-age - in the world, at 49%. Child stunting is associated with negative short and long term health effects and the contributing factors are complex, interrelated, and potentially non-linear. Current health information systems (HIS) in Guatemala are disaggregated, overly complex, and have limited scalability. This paper demonstrates the use of weighted correlation network analysis to visualize and explore data in a way that provides useful information for future HIS. The methods generate a holistic causal factor model for stunting that explores how cofactors relate to stunting and each other. The demonstration here is based on a Guatemala regional data set obtained from the USAID Open Data Website. First, the overall correlation network structure is observed and compared to generalized structural models proposed by the WHO and USAID. Next, quantile comparisons are performed using the outcome variable z-score height-for-age, and distinct child age groups. The comparisons demonstrate how these networks can be used as an extension of widely used methods while also providing advantages that are important for exploratory analysis. This work is an important first step in evaluation of a novel analysis method for health information systems currently being developed in Guatemala.
机译:危地马拉的儿童发育不良患病率排名全球第五(年龄偏低),为49%。儿童发育迟缓与短期和长期的健康负面影响相关,其影响因素是复杂的,相互关联的,并且可能是非线性的。危地马拉的当前健康信息系统(HIS)处于分散状态,过于复杂且可扩展性有限。本文演示了如何使用加权相关网络分析来可视化和探索数据,从而为将来的HIS提供有用的信息。这些方法生成了发育迟缓的整体因果模型,该模型探讨了辅助因子如何与发育迟缓和彼此相关。这里的演示基于从美国国际开发署开放数据网站获得的危地马拉区域数据集。首先,观察整体相关网络结构,并将其与WHO和USAID提出的广义结构模型进行比较。接下来,使用结果变量z年龄段高度和不同的儿童年龄组执行分位数比较。这些比较说明了如何将这些网络用作广泛使用的方法的扩展,同时还提供对探索性分析非常重要的优势。这项工作是评估危地马拉目前正在开发的健康信息系统的新型分析方法的重要的第一步。

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