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伊朗 COVID-19 传播的空间分析:省级层面地理和结构传播决定因素的见解。

Spatial analysis of COVID-19 spread in Iran: Insights into geographical and structural transmission determinants at a province level.

机构信息

Research Division, Instituto Nacional de Geriatría, Mexico City, Mexico.

Department of Physiology, Facultad de Medicina, Universidad Nacional Autónoma de México, Mexico City, Mexico.

出版信息

PLoS Negl Trop Dis. 2020 Nov 18;14(11):e0008875. doi: 10.1371/journal.pntd.0008875. eCollection 2020 Nov.

Abstract

The Islamic Republic of Iran reported its first COVID-19 cases by 19th February 2020, since then it has become one of the most affected countries, with more than 73,000 cases and 4,585 deaths to this date. Spatial modeling could be used to approach an understanding of structural and sociodemographic factors that have impacted COVID-19 spread at a province-level in Iran. Therefore, in the present paper, we developed a spatial statistical approach to describe how COVID-19 cases are spatially distributed and to identify significant spatial clusters of cases and how socioeconomic and climatic features of Iranian provinces might predict the number of cases. The analyses are applied to cumulative cases of the disease from February 19th to March 18th. They correspond to obtaining maps associated with quartiles for rates of COVID-19 cases smoothed through a Bayesian technique and relative risks, the calculation of global (Moran's I) and local indicators of spatial autocorrelation (LISA), both univariate and bivariate, to derive significant clustering, and the fit of a multivariate spatial lag model considering a set of variables potentially affecting the presence of the disease. We identified a cluster of provinces with significantly higher rates of COVID-19 cases around Tehran (p-value< 0.05), indicating that the COVID-19 spread within Iran was spatially correlated. Urbanized, highly connected provinces with older population structures and higher average temperatures were the most susceptible to present a higher number of COVID-19 cases (p-value < 0.05). Interestingly, literacy is a factor that is associated with a decrease in the number of cases (p-value < 0.05), which might be directly related to health literacy and compliance with public health measures. These features indicate that social distancing, protecting older adults, and vulnerable populations, as well as promoting health literacy, might be useful to reduce SARS-CoV-2 spread in Iran. One limitation of our analysis is that the most updated information we found concerning socioeconomic and climatic features is not for 2020, or even for a same year, so that the obtained associations should be interpreted with caution. Our approach could be applied to model COVID-19 outbreaks in other countries with similar characteristics or in case of an upturn in COVID-19 within Iran.

摘要

伊朗伊斯兰共和国于 2020 年 2 月 19 日报告了首例 COVID-19 病例,自此成为受影响最严重的国家之一,截至目前,累计病例超过 73000 例,死亡 4585 例。空间建模可用于了解结构性和社会人口学因素,这些因素影响了伊朗省级的 COVID-19 传播。因此,在本文中,我们采用空间统计方法来描述 COVID-19 病例的空间分布,并确定病例的显著空间聚集,以及伊朗各省的社会经济和气候特征如何预测病例数量。分析应用于 2 月 19 日至 3 月 18 日期间疾病的累计病例。分析结果得到了与通过贝叶斯技术和相对风险平滑的 COVID-19 病例率相关的四分位数地图,以及全局(Moran's I)和局部空间自相关指标(LISA)的单变量和双变量,以确定显著聚类,并拟合多元空间滞后模型,同时考虑一组可能影响疾病存在的变量。我们确定了一个以德黑兰为中心的 COVID-19 病例高发率的省级集群(p 值<0.05),表明伊朗国内的 COVID-19 传播具有空间相关性。人口结构老龄化、城市化程度高、连接度高、平均气温较高的省份更容易出现更多的 COVID-19 病例(p 值<0.05)。有趣的是,文化程度是与病例数量减少相关的一个因素(p 值<0.05),这可能与健康素养和遵守公共卫生措施直接相关。这些特征表明,在伊朗,社会隔离、保护老年人和弱势群体以及促进健康素养可能有助于减少 SARS-CoV-2 的传播。我们分析的一个局限性是,关于社会经济和气候特征的最新信息发现的并不是 2020 年的,甚至不是同年的,因此获得的关联应该谨慎解释。我们的方法可用于对具有类似特征的其他国家的 COVID-19 暴发进行建模,或者在伊朗 COVID-19 再次出现时进行建模。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9262/7710062/91b8a09eadc2/pntd.0008875.g001.jpg

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