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Developing a data-driven spatial approach to assessment of neighbourhood influences on the spatial distribution of myocardial infarction

机译:开发一种数据驱动的空间方法来评估邻居对心肌梗死空间分布的影响

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Background There is a growing understanding of the role played by ‘neighbourhood’ in influencing health status. Various neighbourhood characteristics—such as socioeconomic environment, availability of amenities, and social cohesion, may be combined—and this could contribute to rising health inequalities. This study aims to combine a data-driven approach with clustering analysis techniques, to investigate neighbourhood characteristics that may explain the geographical distribution of the onset of myocardial infarction (MI) risk. MethodsAll MI events in patients aged 35–74?years occurring in the Strasbourg metropolitan area (SMA), from January 1, 2000 to December 31, 2007 were obtained from the Bas-Rhin coronary heart disease register. All cases were geocoded to the census block for the residential address. Each areal unit, characterized by contextual neighbourhood profile, included socioeconomic environment, availability of amenities (including leisure centres, libraries and parks, and transport) and psychosocial environment as well as specific annual rates standardized (per 100,000 inhabitants). A spatial scan statistic implemented in SaTScan was then used to identify statistically significant spatial clusters of high and low risk of MI. ResultMI incidence was non-randomly spatially distributed, with a cluster of high risk of MI in the northern part of the SMA [relative risk (RR)?=?1.70, p?=?0.001] and a cluster of low risk of MI located in the first and second periphery of SMA (RR 0.04, p value = 0.001). Our findings suggest that the location of low MI risk is characterized by a high socioeconomic level and a low level of access to various amenities; conversely, the location of high MI risk is characterized by a high level of socioeconomic deprivation—despite the fact that inhabitants have good access to the local recreational and leisure infrastructure. ConclusionOur data-driven approach highlights how the different contextual dimensions were inter-combined in the SMA. Our spatial approach allowed us to identify the neighbourhood characteristics of inhabitants living within a cluster of high versus low MI risk. Therefore, spatial data-driven analyses of routinely-collected data georeferenced by various sources may serve to guide policymakers in defining and promoting targeted actions at fine spatial level.
机译:背景技术人们越来越了解“社区”在影响健康状况方面的作用。社会经济环境,便利设施的可用性和社会凝聚力等各种邻里特征可能会结合在一起,而这可能会加剧健康不平等现象。这项研究旨在将数据驱动的方法与聚类分析技术相结合,以研究可以解释心肌梗塞(MI)风险发作的地理分布的邻里特征。方法2000年1月1日至2007年12月31日在史特拉斯堡大都会地区(SMA)发生的所有35-74岁患者的MI事件均来自Bas-Rhin冠心病登记处。所有案例均已地理编码到居民区人口普查区。每个区域单位的特征都取决于周围的社区概况,包括社会经济环境,便利设施(包括休闲中心,图书馆和公园以及交通)和社会心理环境,以及特定的年率标准(每10万居民)。然后使用SaTScan中实现的空间扫描统计量来识别具有高和低MI风险的统计上显着的空间簇。结果MI发生率在空间上是非随机分布的,在SMA的北部有MI的高风险群[相对风险(RR)?=?1.70,p?=?0.001],并且有MI的低风险群。在SMA的第一和第二边缘(RR 0.04,p值= 0.001)。我们的发现表明,低MI风险的位置具有较高的社会经济水平和获得各种便利设施的水平低的特点;相反,尽管居民能够从当地的娱乐和休闲基础设施中获得良好的交通便利,但高MI风险的特征是高度的社会经济剥夺。结论我们的数据驱动方法强调了SMA中如何将不同的上下文维度相互组合。我们的空间方法使我们能够确定生活在高或低MI风险人群中的居民的邻里特征。因此,对由各种来源进行地理参考的常规收集数据进行空间数据驱动的分析可能有助于指导政策制定者在精细的空间水平上定义和促进目标行动。

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