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预测荷兰各城市的 COVID-19 感染情况:算法开发与解读。

Prediction of COVID-19 Infections for Municipalities in the Netherlands: Algorithm Development and Interpretation.

机构信息

Faculty of Health, Sports and Social Work, Inholland University of Applied Sciences, Amsterdam, Netherlands.

Zonnehuisgroep Amstelland, Amstelveen, Netherlands.

出版信息

JMIR Public Health Surveill. 2022 Oct 20;8(10):e38450. doi: 10.2196/38450.

Abstract

BACKGROUND

COVID-19 was first identified in December 2019 in the city of Wuhan, China. The virus quickly spread and was declared a pandemic on March 11, 2020. After infection, symptoms such as fever, a (dry) cough, nasal congestion, and fatigue can develop. In some cases, the virus causes severe complications such as pneumonia and dyspnea and could result in death. The virus also spread rapidly in the Netherlands, a small and densely populated country with an aging population. Health care in the Netherlands is of a high standard, but there were nevertheless problems with hospital capacity, such as the number of available beds and staff. There were also regions and municipalities that were hit harder than others. In the Netherlands, there are important data sources available for daily COVID-19 numbers and information about municipalities.

OBJECTIVE

We aimed to predict the cumulative number of confirmed COVID-19 infections per 10,000 inhabitants per municipality in the Netherlands, using a data set with the properties of 355 municipalities in the Netherlands and advanced modeling techniques.

METHODS

We collected relevant static data per municipality from data sources that were available in the Dutch public domain and merged these data with the dynamic daily number of infections from January 1, 2020, to May 9, 2021, resulting in a data set with 355 municipalities in the Netherlands and variables grouped into 20 topics. The modeling techniques random forest and multiple fractional polynomials were used to construct a prediction model for predicting the cumulative number of confirmed COVID-19 infections per 10,000 inhabitants per municipality in the Netherlands.

RESULTS

The final prediction model had an R of 0.63. Important properties for predicting the cumulative number of confirmed COVID-19 infections per 10,000 inhabitants in a municipality in the Netherlands were exposure to particulate matter with diameters <10 μm (PM10) in the air, the percentage of Labour party voters, and the number of children in a household.

CONCLUSIONS

Data about municipality properties in relation to the cumulative number of confirmed infections in a municipality in the Netherlands can give insight into the most important properties of a municipality for predicting the cumulative number of confirmed COVID-19 infections per 10,000 inhabitants in a municipality. This insight can provide policy makers with tools to cope with COVID-19 and may also be of value in the event of a future pandemic, so that municipalities are better prepared.

摘要

背景

COVID-19 于 2019 年 12 月在中国武汉市首次被发现。该病毒迅速传播,并于 2020 年 3 月 11 日被宣布为大流行。感染后,可能会出现发热、干咳、鼻塞和疲劳等症状。在某些情况下,该病毒会导致肺炎和呼吸困难等严重并发症,并可能导致死亡。该病毒在荷兰迅速传播,荷兰是一个人口稠密的小国,人口老龄化。荷兰的医疗保健水平很高,但仍然存在医院容量方面的问题,例如可用床位和工作人员的数量。也有一些地区和城市比其他地区受到的打击更大。在荷兰,有重要的数据来源可用于获取每日 COVID-19 数据和有关城市的信息。

目的

我们旨在使用具有荷兰 355 个城市属性的数据集和先进的建模技术,预测荷兰每个城市每 10000 居民的累积确诊 COVID-19 感染人数。

方法

我们从荷兰公共领域可用的数据来源中收集了每个城市的相关静态数据,并将这些数据与 2020 年 1 月 1 日至 2021 年 5 月 9 日的每日感染人数动态数据合并,从而形成了一个包含荷兰 355 个城市和分为 20 个主题的变量的数据集。我们使用随机森林和多个分数多项式建模技术来构建一个预测模型,以预测荷兰每个城市每 10000 居民的累积确诊 COVID-19 感染人数。

结果

最终预测模型的 R 值为 0.63。对预测荷兰每个城市每 10000 居民的累积确诊 COVID-19 感染人数很重要的属性包括空气中的直径<10μm(PM10)颗粒物暴露、工党选民的百分比和家庭中的儿童人数。

结论

与荷兰每个城市的累积确诊感染人数有关的城市属性数据可以深入了解对预测荷兰每个城市每 10000 居民的累积确诊 COVID-19 感染人数最重要的城市属性。这种洞察力可以为决策者提供应对 COVID-19 的工具,并且在未来的大流行中也可能具有价值,以便城市做好更好的准备。

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