Spatiotemporal evolution of COVID-19 in Portugal's Mainland with self-organizing maps.

IF 3 2区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH International Journal of Health Geographics Pub Date : 2023-01-29 DOI:10.1186/s12942-022-00322-3
Igor Duarte, Manuel C Ribeiro, Maria João Pereira, Pedro Pinto Leite, André Peralta-Santos, Leonardo Azevedo
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Abstract

Background: Self-Organizing Maps (SOM) are an unsupervised learning clustering and dimensionality reduction algorithm capable of mapping an initial complex high-dimensional data set into a low-dimensional domain, such as a two-dimensional grid of neurons. In the reduced space, the original complex patterns and their interactions can be better visualized, interpreted and understood.

Methods: We use SOM to simultaneously couple the spatial and temporal domains of the COVID-19 evolution in the 278 municipalities of mainland Portugal during the first year of the pandemic. Temporal 14-days cumulative incidence time series along with socio-economic and demographic indicators per municipality were analyzed with SOM to identify regions of the country with similar behavior and infer the possible common origins of the incidence evolution.

Results: The results show how neighbor municipalities tend to share a similar behavior of the disease, revealing the strong spatiotemporal relationship of the COVID-19 spreading beyond the administrative borders of each municipality. Additionally, we demonstrate how local socio-economic and demographic characteristics evolved as determinants of COVID-19 transmission, during the 1st wave school density per municipality was more relevant, where during 2nd wave jobs in the secondary sector and the deprivation score were more relevant.

Conclusions: The results show that SOM can be an effective tool to analysing the spatiotemporal behavior of COVID-19 and synthetize the history of the disease in mainland Portugal during the period in analysis. While SOM have been applied to diverse scientific fields, the application of SOM to study the spatiotemporal evolution of COVID-19 is still limited. This work illustrates how SOM can be used to describe the spatiotemporal behavior of epidemic events. While the example shown herein uses 14-days cumulative incidence curves, the same analysis can be performed using other relevant data such as mortality data, vaccination rates or even infection rates of other disease of infectious nature.

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利用自组织地图分析葡萄牙大陆 COVID-19 的时空演变。
背景介绍自组织图(SOM)是一种无监督学习聚类和降维算法,能够将初始复杂的高维数据集映射到低维领域,如二维神经元网格。在缩小的空间中,原始的复杂模式及其相互作用可以更好地可视化、解释和理解:方法:我们使用 SOM 同时耦合葡萄牙大陆 278 个城市在 COVID-19 大流行第一年的时空演变。我们用 SOM 分析了每个城市 14 天的累积发病率时间序列以及社会经济和人口指标,以确定全国具有相似行为的地区,并推断发病率演变的可能共同根源:结果表明,相邻市镇的发病情况往往相似,这揭示了 COVID-19 在每个市镇行政边界之外蔓延的强烈时空关系。此外,我们还证明了当地的社会经济和人口特征是如何演变为 COVID-19 传播的决定因素的,在第一波传播中,每个市镇的学校密度与 COVID-19 传播更为相关,而在第二波传播中,第二产业的工作岗位和贫困程度与 COVID-19 传播更为相关:结果表明,SOM 是分析 COVID-19 时空行为的有效工具,可综合分析葡萄牙大陆在分析期间的疾病历史。虽然 SOM 已被应用于多个科学领域,但应用 SOM 研究 COVID-19 的时空演变仍然有限。这项工作说明了如何利用 SOM 来描述流行病事件的时空行为。虽然本文中的示例使用的是 14 天累积发病率曲线,但同样的分析也可以使用其他相关数据,如死亡率数据、疫苗接种率,甚至其他传染性疾病的感染率。
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来源期刊
International Journal of Health Geographics
International Journal of Health Geographics PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH -
CiteScore
10.20
自引率
2.00%
发文量
17
审稿时长
12 weeks
期刊介绍: A leader among the field, International Journal of Health Geographics is an interdisciplinary, open access journal publishing internationally significant studies of geospatial information systems and science applications in health and healthcare. With an exceptional author satisfaction rate and a quick time to first decision, the journal caters to readers across an array of healthcare disciplines globally. International Journal of Health Geographics welcomes novel studies in the health and healthcare context spanning from spatial data infrastructure and Web geospatial interoperability research, to research into real-time Geographic Information Systems (GIS)-enabled surveillance services, remote sensing applications, spatial epidemiology, spatio-temporal statistics, internet GIS and cyberspace mapping, participatory GIS and citizen sensing, geospatial big data, healthy smart cities and regions, and geospatial Internet of Things and blockchain.
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