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全市 COVID-19 住院病例的空间分析:仅研究格子数据的风险。

Spatial analysis of COVID-19 hospitalised cases in an entire city: The risk of studying only lattice data.

机构信息

Department of Medical Sciences, Faculty of Medicine of Albacete, University of Castilla-La Mancha, Albacete, Spain.

Department of Medical Sciences, Faculty of Medicine of Albacete, University of Castilla-La Mancha, Albacete, Spain; Centro Regional de Investigaciones Biomédicas (CRIB), University of Castilla-La Mancha, Albacete, Spain.

出版信息

Sci Total Environ. 2022 Feb 1;806(Pt 1):150521. doi: 10.1016/j.scitotenv.2021.150521. Epub 2021 Sep 24.

Abstract

We live in a global pandemic caused by the COVID-19 disease where severe social distancing measures are necessary. Some of these measures have been taken into account by the administrative boundaries within cities (neighborhoods, postal districts, etc.). However, considering only administrative boundaries in decision making can prove imprecise, and could have consequences when it comes to taking effective measures. To solve the described problems, we present an epidemiological study that proposes using spatial point patterns to delimit spatial units of analysis based on the highest local incidence of hospitalisations instead of administrative limits during the first COVID-19 wave. For this purpose, the 579 addresses of the cases hospitalised between March 3 and April 6, 2020, in Albacete (Spain), and the addresses of the random sample of 383 controls from the Inhabitants Register of the city of Albacete, were georeferenced. The risk ratio in those hospitalised for COVID-19 was compatible with the constant risk ratio in Albacete (p = 0.49), but areas with a significantly higher risk were found and coincided with those with greater economic inequality (Gini Index). Moreover, two districts had areas with a significantly high incidence that were masked by others with a significantly low incidence. In conclusion, taking measures conditioned exclusively by administrative limits in a pandemic can cause problems caused by managing entire districts with lax measures despite having interior areas with high significant incidences. In a pandemic context, georeferencing disease cases in real time and spatially comparing them to updated random population controls to automatically and accurately detect areas with significant incidences are suggested. This would facilitate decision making, which must be fast and accurate in these situations.

摘要

我们生活在由 COVID-19 疾病引起的全球大流行中,需要采取严格的社交距离措施。这些措施中的一些已经考虑到了城市内部的行政边界(社区、邮政区等)。然而,仅考虑行政边界来做出决策可能不够准确,在采取有效措施时可能会产生后果。为了解决上述问题,我们进行了一项流行病学研究,提出使用空间点模式来划定分析的空间单位,方法是根据医院住院人数的最高局部发病率,而不是在 COVID-19 第一波期间使用行政边界。为此,我们对 2020 年 3 月 3 日至 4 月 6 日期间在阿尔瓦塞特(西班牙)住院的 579 例病例的住址,以及该市居民登记册中随机抽取的 383 名对照者的住址进行了地理参考。COVID-19 住院患者的风险比与阿尔瓦塞特的恒定风险比相符(p=0.49),但发现了风险显著较高的区域,并且这些区域与经济不平等程度较高的区域相吻合(基尼指数)。此外,有两个区的某些区域发病率显著较高,但被其他发病率显著较低的区域所掩盖。总之,在大流行期间,仅根据行政边界采取措施可能会导致问题,因为尽管有发病率较高的内部区域,但整个区都采取了宽松的措施。在大流行背景下,建议实时对疾病病例进行地理定位,并与更新的随机人口对照进行空间比较,以自动且准确地检测发病率显著较高的区域。这将有助于决策,在这些情况下,决策必须快速而准确。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3fe8/8461325/16454fcb317d/ga1_lrg.jpg

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