Centre de recherche en démographie, Université Catholique de Louvain, Louvain-la-Neuve, Belgium.
Institut National d'Etudes Démographiques (INED), Paris, France.
Int J Health Geogr. 2018 Nov 15;17(1):39. doi: 10.1186/s12942-018-0159-3.
India has the largest number of under-five deaths globally, and large variations in under-five mortality persist between states and districts. Relationships between under-five mortality and numerous socioeconomic, development and environmental health factors have been explored at the national and state levels, but the possible spatial heterogeneity in these relationships has seldom been investigated at the district level. This study seeks to unravel local variation in key determinants of under-five mortality based on the 1991 and 2011 censuses.
Using geocoded district-level data from the last two census rounds (1991 and 2011) and ordinary least squares and geographically weighted regressions, we identify district-specific relationships between under-five mortality rate and a series of determinants for two periods separated by 20 years (1986-1987 and 2006-2007). To identify spatial groupings of coefficients, we perform a cluster analysis based on t-values of the geographically weighted regression.
The geographically weighted regression analysis shows that relationships between the under-five mortality rate and factors for socioeconomic, development, and environmental health factors vary spatially in terms of direction, strength, and extent when considering: female literacy and labor force participation; share of scheduled castes and scheduled tribes; access to electricity; safe water and sanitation; road infrastructure; and medical facilities. This spatial heterogeneity is accompanied by significant changes over time in the roles that these factors play in under-five mortality. Important local determinants of under-five mortality in 2011 were female literacy, female labor force participation, access to sanitation facilities and electricity; while the key local determinants in 1991 were road infrastructure, safe water, and medical facilities. We identify six different clusters based on geographically weighted regression coefficients that broadly encompass the same districts in both periods; but these clusters do not follow the regional boundaries suggested by the previous studies. In particular, the high mortality states of India that are often typically classified as high focus states were classified into three different clusters based on the relationship of the factors associated with under-five mortality.
This study demonstrates the utility of combining geographically weighted regression and cluster analyses as a methodological approach to study local-level variation in public health indicators, and it could be applied in any country using aggregate-level information from census or survey data. Identifying local predictors of under-five mortality is important for designing interventions in specific districts. Additional reduction in under-five mortality will only be possible with intervention programs designed at the local level, which take into consideration local level determinants of under-five mortality.
印度是全球五岁以下儿童死亡人数最多的国家,各州和各地区之间五岁以下儿童死亡率存在较大差异。在国家和州一级已经探讨了五岁以下儿童死亡率与众多社会经济、发展和环境卫生因素之间的关系,但在地区一级很少调查这些关系的可能空间异质性。本研究旨在根据 1991 年和 2011 年的两次人口普查,揭示五岁以下儿童死亡率关键决定因素的局部变化。
使用过去两次人口普查(1991 年和 2011 年)的地理编码地区级数据以及普通最小二乘法和地理加权回归,我们确定了在相隔 20 年的两个时期(1986-1987 年和 2006-2007 年)内,五岁以下儿童死亡率与一系列决定因素之间的地区特定关系。为了识别系数的空间分组,我们基于地理加权回归的 t 值进行聚类分析。
地理加权回归分析表明,考虑到女性识字率和劳动力参与率、在册种姓和在册部落的比例、电力供应、安全用水和卫生设施、道路基础设施以及医疗设施等社会经济、发展和环境卫生因素,五岁以下儿童死亡率与这些因素之间的关系在方向、强度和程度上存在空间差异。这种空间异质性伴随着这些因素在五岁以下儿童死亡率中作用的显著变化。2011 年五岁以下儿童死亡率的重要地方决定因素是女性识字率、女性劳动力参与率、环境卫生设施和电力供应;而 1991 年的主要地方决定因素是道路基础设施、安全用水和医疗设施。我们根据地理加权回归系数确定了六个不同的聚类,这些聚类大致涵盖了两个时期的相同地区;但这些聚类并不遵循前几次研究中提出的区域边界。特别是,印度的高死亡率州通常被归类为高关注州,根据与五岁以下儿童死亡率相关的因素的关系,被分为三个不同的聚类。
本研究证明了结合地理加权回归和聚类分析作为研究公共卫生指标地方差异的方法学方法的效用,并且可以在使用人口普查或调查数据的汇总水平信息的任何国家应用。确定五岁以下儿童死亡率的地方预测因素对于在特定地区设计干预措施很重要。只有在地方一级制定考虑到五岁以下儿童死亡率的地方决定因素的干预计划,才能进一步降低五岁以下儿童死亡率。