荷兰COVID-19病例的时空预测及其来源和接触者追踪

IF 2.2 Q3 HEALTH CARE SCIENCES & SERVICES
International Journal of Population Data Science Pub Date : 2025-05-07 eCollection Date: 2025-01-01 DOI:10.23889/ijpds.v10i1.2703
Max C Keuken, Jizzo R Bosdriesz, Anders Boyd, Elisabeth M den Boogert, Ivo K Joore, Nicole H T M Dukers-Muijrers, Gini van Rijckevorsel, Hannelore M Götz, Irene E Goverse, Mariska W F Petrignani, Stijn F H Raven, Susan van den Hof, Kirsten V C Wevers-de Boer, Maarten F Schim van der Loeff, Amy Matser
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引用次数: 0

摘要

传染源和接触者追踪(SCT)是一项用于控制传染病传播的核心公共卫生措施。其目的是确定传染源,并向接触过传染源的人提供建议。由于2019冠状病毒病在荷兰的发病率迅速增加,进行全面SCT的能力很快就变得不足。因此,公共卫生服务可能受益于一项针对(预计)病例间传播率高的地理区域的有限战略。在本研究中,我们利用地理和人口特征开发了一个预测模型,用于预测荷兰境内每个邮政编码的COVID-19病例数。研究人群包括居住在参与的九个荷兰小灵通地区之一的个人,他们在2020年6月1日至2021年2月27日期间对SARS-CoV-2检测呈阳性。使用机器学习随机森林回归模型,我们预测了案例数量最多的前100个邮政编码,本周的准确率为49%,下周的准确率为42%,两周后的准确率为44%。此外,20-39岁和40-64岁年龄组的预测准确率高于其他年龄组。开发的模型为结合社区地理空间和人口特征的有针对性的预防性SCT工作提供了起点。然而,应当指出,在疫情爆发的早期阶段,为这种模型提供信息所需的现有数据点数量可能不足。鉴于已开发模型的准确性和数据要求,这类模型不太可能在未来流行病的早期阶段为政策提供信息方面发挥关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-temporal forecasting of COVID-19 cases in the Netherlands for source and contact tracing.

Source and contact tracing (SCT) is a core public health measure that is used to contain the spread of infectious diseases. It aims to identify a source of infection, and to advise those who have been exposed to this source. Due to the rapid increases in incidence of COVID-19 in the Netherlands, the capacity to conduct a full SCT quickly became insufficient. Therefore, the public health services (PHS) might benefit from a restricted strategy targeted to geographical regions where (predicted) case-to-case transmission is high. In this study, we set out to develop a prediction model for the number of COVID-19 cases per postal code within the Netherlands using geographic and demographic features. The study population consists of individuals residing in one of the participating nine Dutch PHS regions who tested positive for SARS-CoV-2 between 1 June 2020 and 27 February 2021. Using a machine learning random forest regression model, we predicted the top 100 postal codes with the highest number of cases with an accuracy of 49% for the current week, 42% for next week, and 44% for two weeks from present. In addition, the age groups of 20-39 and 40-64 years had a higher prediction accuracy than groups outside these age ranges. The developed model provides a starting point for targeted preventive SCT efforts that incorporate geospatial and demographic characteristics of a neighbourhood. It should nonetheless be noted that during the early stages of the outbreak, the number of available datapoints needed to inform such models are likely insufficient. Given the accuracy and data requirements of the developed model, it is unlikely that this class of models can play a pivotal role in informing policy during the early phases of a future epidemic.

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CiteScore
2.50
自引率
0.00%
发文量
386
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20 weeks
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