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Modelling children's anthropometric status using Bayesian distributional regression merging socio-economic and remote sensed data from South Asia and sub-Saharan Africa

机译:使用贝叶斯分布回归融合来自南亚和撒哈拉非洲的社会经济和遥感数据的贝叶斯分布回归融合儿童的人体计量状态

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A history of insufficient nutritional intake is reflected by low anthropometric measures and can lead to growth failures, limited mental development, poor health outcomes and a higher risk of dying. Children below five years are among those most vulnerable and, while improvements in the share of children affected by insufficient nutritional intake has been observed, both sub-Saharan Africa and South Asia have a disproportionately high share of growth failures and large disparities at national and sub-national levels. In this study, we use a Bayesian distributional regression approach to develop models for the standard anthropometric measures, stunting and wasting. This approach allows us to model both the mean and the standard deviation of the underlying response distribution. Accordingly, the whole distribution of the anthropometric measures can be evaluated. This is of particular importance, considering the fact that (severe) growth failures of children are defined having a z-score below −2 (−3), emphasising the need to extend the analysis beyond the conditional mean. In addition, we merge individual data taken from the Demographic and Health Surveys with remote sensed data for a large sample of 38 countries located in sub-Saharan Africa and South Asia for the period 1990–2016, in order to combine individual and household specific characteristics with geophysical and environmental characteristics, and to allow for a comparison over time. Our results show besides gender differences across space, and strong non-linear effects of included socio-economic characteristics, in particular for maternal education and the wealth of the household that, surprisingly, in the presence of socio-economic characteristics, remote sensed data does not contribute to variations in growth failures, and including a pure spatial effect excluding remote sensed data leads to even better results. Further, while all regions showed improvements towards the target of the Sustainable Development Goals (SDGs), our analysis identifies hotspots of growth failures at sub-national levels within India, Nigeria, Niger, and Madagascar, emphasising the need to accelerate progress to reach the target set by the SDGs.
机译:营养摄入量不足的历史反映了低人体测量措施,可以导致生长失败,有限的心理发展,健康成果差和死亡的风险较高。五年以下的儿童是那些最脆弱的人,而据观察过营养摄入量不足的儿童的改善,撒哈拉以南非洲和南亚都有不成比例的增长失败份额和国家和亚的大差异 - 季度。在这项研究中,我们使用贝叶斯分布回归方法来开发标准人类测量措施,发育迟缓和浪费的模型。这种方法允许我们模拟底层响应分布的平均值和标准偏差。因此,可以评估人类测量措施的整体分布。这项特别重要的是,考虑到(严重)儿童的生长失败定义在低于-2(-3)的情况下定义,强调需要将分析超出条件平均值。此外,我们合并从人口统计和健康调查中获取的个人数据,为1990 - 2016年撒哈拉以南非洲和南亚的38个国家的大型样本,以便结合个人和家庭特定特征随着地球物理和环境特征,并允许随时间进行比较。我们的结果表明,除了空间的性别差异,以及包括的社会经济特征的强烈非线性效果,特别是对于孕产妇教育和家庭的财富,令人惊讶的是,在社会经济特征存在下,遥感数据对增长失败的变化没有贡献,并且包括不包括远程感测数据的纯空间效果导致更好的结果。此外,虽然所有地区对可持续发展目标的目标(SDGS)进行了改进,但我们的分析识别印度,尼日利亚,尼日尔和马达加斯加的亚国家层面的增长失败热点,并强调需要加速进展到达由SDGS设置的目标。

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