Morrissey Karyn
Department of Geography and Planning, University of Liverpool, L69 7ZT, UK.
AIMS Public Health. 2015 Jul 31;2(3):426-440. doi: 10.3934/publichealth.2015.3.426. eCollection 2015.
Ecological influences on health outcomes are associated with the spatial stratification of health. However, the majority of studies that seek to understand these ecological influences utilise aspatial methods. Geographically weighted regression (GWR) is a spatial statistics tool that expands standard regression by allowing for spatial variance in parameters. This study contributes to the urban health literature, by employing GWR to uncover geographic variation in Limiting Long Term Illness (LLTI) and area level effects at the small area level in a relatively small, urban environment. Using GWR it was found that each of the three contextual covariates, area level deprivation scores, the percentage of the population aged 75 years plus and the percentage of residences of white ethnicity for each LSOA exhibited a non-stationary relationship with LLTI across space. Multicollinearity among the predictor variables was found not to be a problem. Within an international policy context, this research indicates that even at the city level, a "one-size fits all" policy strategy is not the most appropriate approach to address health outcomes. City "wide" health polices need to be spatially adaptive, based on the contextual characteristics of each area.
对健康结果的生态影响与健康的空间分层相关。然而,大多数试图理解这些生态影响的研究都采用了非空间方法。地理加权回归(GWR)是一种空间统计工具,它通过允许参数的空间方差来扩展标准回归。本研究通过运用地理加权回归来揭示在相对较小的城市环境中,小区域层面上长期慢性病(LLTI)的地理差异和区域层面效应,从而为城市健康文献做出了贡献。使用地理加权回归发现,三个背景协变量中的每一个,即区域层面的贫困得分、75岁及以上人口的百分比以及每个低层超级输出区(LSOA)白人种族的居住百分比,与长期慢性病在空间上均呈现出非平稳关系。预测变量之间不存在多重共线性问题。在国际政策背景下,本研究表明,即使在城市层面,“一刀切”的政策策略也不是解决健康结果的最合适方法。城市“范围”的健康政策需要根据每个区域的背景特征进行空间适应性调整。