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A method to define the relevant ego-centred spatial scale for the assessment of neighbourhood effects: the example of cardiovascular risk factors

机译:一种定义相关自我中心空间规模的方法,用于评估邻域效应:心血管危险因素的例子

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The neighbourhood in which one lives affects health through complex pathways not yet fully understood. A way to move forward in assessing these pathways direction is to explore the spatial structure of health phenomena to generate hypotheses and examine whether the neighbourhood characteristics are able to explain this spatial structure. We compare the spatial structure of two cardiovascular disease risk factors in three European urban areas, thus assessing if a non-measured neighbourhood effect or spatial processes is present by either modelling the correlation structure at individual level or by estimating the intra-class correlation within administrative units. Data from three independent studies (RECORD, DHS and BaBi), covering each a European urban area, are used. The characteristics of the spatial correlation structure of cardiovascular risk factors (BMI and systolic blood pressure) adjusted for age, sex, educational attainment and income are estimated by fitting an exponential model to the semi-variogram based on the geo-coordinates of places of residence. For comparison purposes, a random effect model is also fitted to estimate the intra-class correlation within administrative units. We then discuss the benefits of modelling the correlation structure to evaluate the presence of unmeasured spatial effects on health. BMI and blood pressure are consistently found to be spatially structured across the studies, the spatial correlation structures being stronger for BMI. Eight to 22% of the variability in BMI were spatially structured with radii ranging from 100 to 240?m (range). Only a small part of the correlation of residuals was explained by adjusting for the correlation within administrative units (from 0 to 4 percentage points). The individual spatial correlation approach provides much stronger evidence of spatial effects than the multilevel approach even for small administrative units. Spatial correlation structure offers new possibilities to assess the relevant spatial scale for health. Stronger correlation structure seen for BMI may be due to neighbourhood socioeconomic conditions and processes like social norms at work in the immediate neighbourhood.
机译:居民的社区通过尚未完全理解的复杂途径影响健康。在评估这些途径方向上前进的方式是探讨健康现象的空间结构,以产生假设,并检查邻域特征是否能够解释这种空间结构。我们比较三个欧洲城市地区两种心血管疾病风险因素的空间结构,从而评估如果通过在各个层面的相关结构或通过估计行政内部相关性的相关结构存在的非测量邻域效应或空间过程。单位。使用来自三个独立研究(记录,DHS和Babi)的数据,覆盖每个欧洲城市地区。根据年龄,性别,教育程度和收入调整心血管危险因素(BMI和收缩压)的空间相关结构的特征是根据居住地地理坐标对半变形仪拟合到半变化仪的估算。为了比较目的,还安装了随机效果模型来估计行政单位内的类内相关性。然后,我们讨论了对相关结构进行建模以评估对健康产生未测量的空间效应的影响。 BMI和血压始终被发现在整个研究中进行空间结构,空间相关结构对于BMI较强。 BMI中的八到22%的可变性在空间上用100至240μm(范围)的半径来构造。通过调整行政单位内的相关性(从0到4个百分点)来解释残留物的相关性的一小部分。即使对于小型行政单位,个人空间相关方法提供比多级方法更强大的空间效应证据。空间相关结构提供了评估健康相关空间规模的新可能性。对于BMI而言,BMI的相关结构可能是由于邻域社会经济条件和在直接社区工作中的社会规范等过程。

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