School of Public Health (EHESP), 35043 Rennes CEDEX, France.
Department of Social Epidemiology, Institut Pierre Louis d'Epidémiologie et de Santé Publique (UMRS 1136), Sorbonne Universités, UPMC University Paris 06, INSERM, 75012 Paris, France.
Int J Environ Res Public Health. 2021 Feb 13;18(4):1824. doi: 10.3390/ijerph18041824.
Several studies have investigated the implication of air pollution and some social determinants on COVID-19-related outcomes, but none of them assessed the implication of spatial repartition of the socio-environmental determinants on geographic variations of COVID-19 related outcomes. Understanding spatial heterogeneity in relation to the socio-environmental determinant and COVID-19-related outcomes is central to target interventions toward a vulnerable population.
To determine the spatial variability of COVID-19 related outcomes among the elderly in France at the department level. We also aimed to assess whether a geographic pattern of Covid-19 may be partially explained by spatial distribution of both long-term exposure to air pollution and deprived living conditions.
This study considered four health events related to COVID-19 infection over the period of 18 March and 02 December 2020: (i) hospitalization, (ii) cases in intensive health care in the hospital, (iii) death in the hospital, and (iv) hospitalized patients recovered and returned back home. We used the percentage of household living in an overcrowding housing to characterize the living conditions and long-term exposure to NO to analyse the implication of air pollution. Using a spatial scan statistic approach, a Poisson cluster analysis method based on a likelihood ratio test and Monte Carlo replications was applied to identify high-risk clusters of a COVID-19-related outcome.
our results revealed that all the outcomes related to COVID-19 infection investigated were not randomly distributed in France with a statistically significant cluster of high risk located in Eastern France of the hospitalization, cases in the intensive health care at the hospital, death in the hospital, and recovered and returned back home compared to the rest of France (relative risk, RR = 1.28, -value = 0.001, RR = 3.05, = 0.001, RR = 2.94, = 0.001, RR = 2.51, = 0.001, respectively). After adjustments for socio-environmental determinants, the crude cluster shifts according to different scenarios suggested that both the overcrowding housing level and long-term exposure to largely NO explain the spatial distribution of COVID-19-related outcomes.
Our findings suggest that the geographic pattern of COVID-19-related outcomes is largely explained by socio-spatial distribution of long-term exposure to NO. However, to better understand spatial variations of COVID-19-related outcomes, it would be necessary to investigate and adjust it for other determinants. Thus, the current sanitary crisis reminds us of how unequal we all are in facing this disease.
已有多项研究调查了空气污染和一些社会决定因素对 COVID-19 相关结果的影响,但尚无研究评估社会环境决定因素的空间分布对 COVID-19 相关结果的地理差异的影响。了解与社会环境决定因素和 COVID-19 相关结果有关的空间异质性对于将干预措施针对弱势人群至关重要。
在法国省级层面上确定与 COVID-19 相关的老年人结果的空间变异性。我们还旨在评估 COVID-19 的地理模式是否可以部分由空气污染的长期暴露和贫困生活条件的空间分布来解释。
本研究考虑了 COVID-19 感染期间在 2020 年 3 月 18 日至 12 月 2 日期间发生的四项与 COVID-19 相关的健康事件:(i)住院治疗,(ii)医院内重症监护病例,(iii)医院死亡和(iv)住院康复回家的患者。我们使用家庭居住在过度拥挤住房中的比例来描述生活条件,并使用长期接触 NO 来分析空气污染的影响。使用空间扫描统计方法,一种基于似然比检验和蒙特卡罗复制的泊松聚类分析方法,用于识别 COVID-19 相关结果的高风险聚类。
我们的研究结果表明,所有与 COVID-19 感染相关的结果在法国的分布均不均匀,与法国其他地区相比,住院治疗、医院内重症监护、医院死亡和康复回家的高风险集群在法国东部地区存在统计学上显著的集群(相对风险,RR = 1.28,P 值= 0.001,RR = 3.05,P 值= 0.001,RR = 2.94,P 值= 0.001,RR = 2.51,P 值= 0.001,分别)。在调整了社会环境决定因素后,根据不同情况,未经过滤的集群转移表明,过度拥挤住房水平和长期接触大量的 NO 都可以解释 COVID-19 相关结果的空间分布。
我们的研究结果表明,COVID-19 相关结果的地理模式在很大程度上可以用长期接触 NO 的社会空间分布来解释。然而,为了更好地了解 COVID-19 相关结果的空间变化,有必要对其进行调查和调整,以考虑其他决定因素。因此,当前的卫生危机提醒我们,我们在面对这种疾病时是多么的不平等。