Measurement Conundrums: Explaining Child Health Population Outcomes in MOCHA Countries

H. Gage, Ekelechi MacPepple
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引用次数: 1

Abstract

Abstract The 30 MOCHA (Models of Child Health Appraised) countries are diverse socially, culturally and economically, and differences exist in their healthcare systems and in the scope and role of primary care. An economic analysis was undertaken that sought to explain differences in child health outcomes between countries. The conceptual framework was that of a production function for health, whereby health outputs (or outcomes) are assumed affected by several ‘inputs’. In the case of health, inputs include personal (genes, health behaviours) and socio-economic (income, living standards) factors and the structure, organisation and workforce of the healthcare system. Random effects regression modelling was used, based on countries as the unit of analysis, with data from 2004 to 2016 from international sources and published categorisations of healthcare system. The chapter describes the data deficiencies and measurement conundrums faced, and how these were addressed. In the absence of consistent indicators of child health outcomes across countries, five mortality measures were used: neonatal, infant, under five years, diabetes (0–19 years) and epilepsy (0–19 years). Factors found associated with reductions in mortality were as follows: gross domestic product per capita growth (neonatal, infant, under five years), higher density of paediatricians (neonatal, infant, under five years), less out-of-pocket expenditure (neonatal, diabetes 0–19), state-based service provision (epilepsy 0–19) and lower proportions of children in the population, a proxy for family size (all outcomes). Findings should be interpreted with caution due to the ecological nature of the analysis and the limitations presented by the data and measures employed.
测量难题:解释MOCHA国家的儿童健康人口结果
30个MOCHA(儿童健康评估模型)国家在社会、文化和经济方面存在差异,其卫生保健系统以及初级保健的范围和作用存在差异。进行了一项经济分析,试图解释各国之间儿童健康结果的差异。概念框架是卫生生产函数,据此假定卫生产出(或结果)受到若干“投入”的影响。在卫生方面,投入包括个人(基因、卫生行为)和社会经济(收入、生活水平)因素以及卫生保健系统的结构、组织和劳动力。使用随机效应回归模型,以国家为分析单位,使用来自国际来源的2004年至2016年的数据和已公布的医疗保健系统分类。本章描述了所面临的数据缺陷和测量难题,以及如何解决这些问题。在各国缺乏一致的儿童健康结果指标的情况下,采用了五种死亡率衡量指标:新生儿、婴儿、五岁以下儿童、糖尿病(0-19岁)和癫痫(0-19岁)。与死亡率降低相关的因素如下:人均国内生产总值增长(新生儿、婴儿、五岁以下)、儿科医生密度增加(新生儿、婴儿、五岁以下)、自费支出减少(新生儿、糖尿病0-19岁)、以国家为基础的服务提供(癫痫0-19岁)以及儿童在人口中所占比例降低(家庭规模的代表)(所有结果)。由于分析的生态性质以及所采用的数据和措施的局限性,应谨慎解释调查结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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