Purssell Edward, Frood Sharron, Sagoo Rohit
Children's Nursing, Anglia Ruskin University, Chelmsford, UK.
Child Health, City St. George's University of London, London, UK.
Glob Health Action. 2025 Dec;18(1):2526315. doi: 10.1080/16549716.2025.2526315. Epub 2025 Jul 22.
Most health service classification systems are based on organisational components such as service provision, financing, and regulation. This study considers health systems using data focusing on child health outcomes, service provision, and selected social characteristics. This more accurately reflects the reality of health service provision for children, young people, and their families.
To classify health systems based on child health data through cluster analysis and exploratory and descriptive data analysis.
Data were extracted from the current version of the UNICEF (2023) State of the World's Children full dataset, concentrating on outcomes related to mortality. Cluster analyses were conducted, and a heatmap was produced to identify patterns and groups among countries and child health indicators. Row and column distances were calculated using the Euclidean distance, and clustering was performed using the complete linkage method. Each variable was centred and scaled using the scale command, allowing variables measured on different scales to be compared without those with large values being weighted more heavily. Countries that performed better or were less healthy than expected were identified through linear regression analysis using the ggplot2 package.
Analysis of countries by cluster reveals six main groups, characterised by child and maternal mortality rates, vaccination levels, access to maternal and child healthcare, access to water and sanitation, and population migration levels.
Identifying patterns in outcomes and identifying countries that perform above or below expectations concerning child health can inform a more nuanced approach to improving a country's child health outcomes.
大多数卫生服务分类系统是基于组织构成要素,如服务提供、筹资和监管。本研究利用聚焦儿童健康结果、服务提供及选定社会特征的数据来考量卫生系统。这能更准确地反映为儿童、青少年及其家庭提供卫生服务的实际情况。
通过聚类分析以及探索性和描述性数据分析,基于儿童健康数据对卫生系统进行分类。
数据取自联合国儿童基金会(2023年)《世界儿童状况》的当前版本完整数据集,重点关注与死亡率相关的结果。进行聚类分析,并制作热图以识别各国及儿童健康指标之间的模式和群组。使用欧几里得距离计算行和列的距离,并采用完全连锁法进行聚类。使用scale命令对每个变量进行中心化和标准化处理,以便能够比较不同尺度上测量的变量,而不会使较大值的变量被赋予更大权重。使用ggplot2包通过线性回归分析识别表现优于或低于预期的国家。
按聚类对各国进行分析,发现六个主要群组,其特征为儿童和孕产妇死亡率、疫苗接种水平、获得母婴保健服务的机会、获得水和卫生设施的情况以及人口迁移水平。
识别结果中的模式以及确定在儿童健康方面表现高于或低于预期的国家,可为改善一个国家儿童健康结果提供更细致入微的方法提供参考。