Suppr超能文献

探索柏林-诺伊科伦的 COVID-19 空间相对风险。

Exploring the Spatial Relative Risk of COVID-19 in Berlin-Neukölln.

机构信息

Geography Department, Applied Geoinformation Science Lab, Humboldt-University Berlin, 10099 Berlin, Germany.

UK Health Security Agency, 61, Colindale Avenue, London NW9 5EQ, UK.

出版信息

Int J Environ Res Public Health. 2023 May 16;20(10):5830. doi: 10.3390/ijerph20105830.

Abstract

Identifying areas with high and low infection rates can provide important etiological clues. Usually, areas with high and low infection rates are identified by aggregating epidemiological data into geographical units, such as administrative areas. This assumes that the distribution of population numbers, infection rates, and resulting risks is constant across space. This assumption is, however, often false and is commonly known as the modifiable area unit problem. This article develops a spatial relative risk surface by using kernel density estimation to identify statistically significant areas of high risk by comparing the spatial distribution of address-level COVID-19 cases and the underlying population at risk in Berlin-Neukölln. Our findings show that there are varying areas of statistically significant high and low risk that straddle administrative boundaries. The findings of this exploratory analysis further highlight topics such as, e.g., Why were mostly affluent areas affected during the first wave? What lessons can be learned from areas with low infection rates? How important are built structures as drivers of COVID-19? How large is the effect of the socio-economic situation on COVID-19 infections? We conclude that it is of great importance to provide access to and analyse fine-resolution data to be able to understand the spread of the disease and address tailored health measures in urban settings.

摘要

确定高感染率和低感染率地区可以提供重要的病因线索。通常,通过将流行病学数据汇总到地理单元(如行政区)中,可以确定高感染率和低感染率地区。这假设人口数量、感染率和由此产生的风险在空间上是不变的。然而,这种假设通常是错误的,通常被称为可修改的区域单位问题。本文通过使用核密度估计来开发空间相对风险表面,通过比较柏林-诺伊科恩的地址级 COVID-19 病例的空间分布和潜在的风险人群,来确定具有统计学意义的高风险区域。我们的研究结果表明,存在跨越行政边界的具有统计学意义的高低风险区域。这项探索性分析的结果进一步强调了一些主题,例如,为什么在第一波疫情中主要是富裕地区受到影响?可以从低感染率地区吸取哪些经验教训?建筑结构作为 COVID-19 驱动因素的重要性如何?社会经济状况对 COVID-19 感染的影响有多大?我们的结论是,提供获取和分析精细分辨率数据的机会非常重要,以便能够理解疾病的传播,并在城市环境中采取有针对性的健康措施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b06f/10218333/b6bda77f1547/ijerph-20-05830-g001a.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验