Padilla Cindy M, Foucault Anais, Grimaud Olivier, Nowak Emmanuel, Timsit Serge
Univ Rennes, EHESP, REPERES (Recherche en pharmaco-épidémiologie et recours aux soins) - EA 7449, 15, Avenue du Professeur Léon Bernard, 35043, Rennes, France.
Centre d'Investigation Clinique-INSERM CIC 1412, CHRU, Brest, France.
BMC Public Health. 2021 Jan 6;21(1):39. doi: 10.1186/s12889-020-10026-7.
Mapping the spatial distribution of disease occurrence is a strategy to identify contextual factors that could be useful for public health policies. The purpose of this ecological study was to examine to which extent the socioeconomic deprivation and the urbanization level can explain gender difference of geographic distribution in stroke incidence in Pays de Brest, France between 2008 and 2013.
Stroke cases aged 60 years or more were extracted from the Brest stroke registry and combined at the census block level. Contextual socioeconomic, demographic, and geographic variables at the census block level come from the 2013 national census. We used spatial and non-spatial regression models to study the geographic correlation between socioeconomic deprivation, degree or urbanization and stroke incidence. We generated maps using spatial geographically weighted models, after longitude and latitude smoothing and adjustment for covariates.
Stroke incidence was comparable in women and men (6.26 ± 3.5 vs 6.91 ± 3.3 per 1000 inhabitants-year, respectively). Results showed different patterns of the distribution of stroke risk and its association with deprivation or urbanisation across gender. For women, stroke incidence was spatially homogeneous over the entire study area, but was associated with deprivation level in urban census blocks: age adjusted risk ratio of high versus low deprivation = 1.24, [95%CI 1.04-1.46]. For men, three geographic clusters were identified. One located in the northern rural and deprived census blocks with a 9-14% increase in the risk of stroke. Two others clusters located in the south-eastern (mostly urban part) and south-western (suburban and rural part) with low deprivation level and associated with higher risk of stroke incidence between (3 and 8%) and (8.5 and 19%) respectively. There were no differences in profile of cardiovascular risk factors, stroke type and stroke severity between clusters, or when comparing clusters cases to the rest of the study population.
Understanding whether and how neighborhood and patient's characteristics influence stroke risk may be useful for both epidemiological research and healthcare service planning.
绘制疾病发生的空间分布是一种识别可能有助于公共卫生政策制定的背景因素的策略。这项生态学研究的目的是探讨社会经济剥夺和城市化水平在多大程度上能够解释2008年至2013年法国布列塔尼地区中风发病率地理分布的性别差异。
从布雷斯特中风登记处提取60岁及以上的中风病例,并在普查街区层面进行合并。普查街区层面的社会经济、人口和地理背景变量来自2013年全国人口普查。我们使用空间和非空间回归模型来研究社会经济剥夺、城市化程度与中风发病率之间的地理相关性。在对经度和纬度进行平滑处理并对协变量进行调整后,我们使用空间地理加权模型生成地图。
女性和男性的中风发病率相当(分别为每1000居民年6.26±3.5例和6.91±3.3例)。结果显示,中风风险分布及其与剥夺或城市化的关联在性别上呈现出不同模式。对于女性,中风发病率在整个研究区域内空间分布均匀,但与城市普查街区的剥夺水平相关:高剥夺与低剥夺的年龄调整风险比=1.24,[95%置信区间1.04-1.46]。对于男性,识别出三个地理集群。一个位于北部农村和贫困普查街区,中风风险增加9-14%。另外两个集群分别位于东南部(主要是城市地区)和西南部(郊区和农村地区),剥夺水平较低,中风发病率风险分别较高(3%至8%)和(8.5%至19%)。各集群之间,或将集群病例与研究人群的其他部分进行比较时,心血管危险因素、中风类型和中风严重程度的特征没有差异。
了解邻里环境和患者特征是否以及如何影响中风风险,可能对流行病学研究和医疗服务规划都有用。