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参与式建模方法调查 COVID-19 在东地中海区域国家的传播情况,以支持公共卫生决策。

A participatory modelling approach for investigating the spread of COVID-19 in countries of the Eastern Mediterranean Region to support public health decision-making.

机构信息

World Health Organization Regional Office for the Eastern Mediterranean, Cairo, Egypt

World Health Organization Regional Office for the Eastern Mediterranean, Cairo, Egypt.

出版信息

BMJ Glob Health. 2021 Mar;6(3). doi: 10.1136/bmjgh-2021-005207.

DOI:10.1136/bmjgh-2021-005207
PMID:33762253
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7992384/
Abstract

Early on in the COVID-19 pandemic, the WHO Eastern Mediterranean Regional Office recognised the importance of epidemiological modelling to forecast the progression of the COVID-19 pandemic to support decisions guiding the implementation of response measures. We established a modelling support team to facilitate the application of epidemiological modelling analyses in the Eastern Mediterranean Region (EMR) countries. Here, we present an innovative, stepwise approach to participatory modelling of the COVID-19 pandemic that engaged decision-makers and public health professionals from countries throughout all stages of the modelling process. Our approach consisted of first identifying the relevant policy questions, collecting country-specific data and interpreting model findings from a decision-maker's perspective, as well as communicating model uncertainty. We used a simple modelling methodology that was adaptable to the shortage of epidemiological data, and the limited modelling capacity, in our region. We discuss the benefits of using models to produce rapid decision-making guidance for COVID-19 control in the WHO EMR, as well as challenges that we have experienced regarding conveying uncertainty associated with model results, synthesising and comparing results across multiple modelling approaches, and modelling fragile and conflict-affected states.

摘要

在 COVID-19 大流行早期,世卫组织东地中海区域办事处认识到流行病学建模对于预测 COVID-19 大流行进展以支持指导实施应对措施的决策的重要性。我们设立了一个建模支持小组,以促进在东地中海区域(EMR)国家应用流行病学建模分析。在这里,我们提出了一种创新的、逐步的方法,对 COVID-19 大流行进行参与式建模,使决策者和公共卫生专业人员能够参与建模过程的所有阶段。我们的方法包括首先确定相关政策问题,从决策者的角度收集特定国家的数据并解释模型结果,以及沟通模型不确定性。我们使用了一种简单的建模方法,该方法适应了我们区域缺乏流行病学数据和有限的建模能力的情况。我们讨论了在世卫组织东地中海区域使用模型为 COVID-19 控制提供快速决策指导的好处,以及在传达与模型结果相关的不确定性、综合和比较多种建模方法的结果以及对脆弱和受冲突影响的国家进行建模方面所遇到的挑战。

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本文引用的文献

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