论文标题

基于流行病学指标的非药物干预措施的事件触发的政策评估

Assessment of event-triggered policies of nonpharmaceutical interventions based on epidemiological indicators

论文作者

Castillo-Laborde, Carla, de Wolff, Taco, Gajardo, Pedro, Lecaros, Rodrigo, Olivar, Gerard, C, Hector Ramirez

论文摘要

非药品干预措施(NPI),例如禁止公共事件或建立锁定措施,在世界范围内已广泛应用,以控制当前的COVID-19-19大流行。通常,当给定种群中的流行病学指标超过一定阈值时,强加这种干预措施。然后,当所使用的指标水平降低时,取消了非药物干预措施。最佳使用指标是什么?在本文中,我们提出了一个数学框架来试图回答这个问题。更具体地说,所提出的框架允许根据流行病学指标评估和比较不同事件触发的控件。我们的方法包括考虑一些结果的结果,这些结果是决策者旨在尽可能低的非药物干预措施的后果。重症监护病房(ICU)的高峰需求和锁定天数的总数就是此类结果的例子。如果使用流行病学指标来触发干预措施,则自然会在结果之间进行权衡,可以将其视为由要使用的触发阈值参数化的曲线。然后,针对一组指标的这些曲线计算允许选择最佳指标的曲线,其曲线主导了其他指标的曲线。尽管可以针对较大类型的模型调整该框架,但使用确定性隔室模型在Covid-19的上下文中使用指标进行了说明。

Nonpharmaceutical interventions (NPI) such as banning public events or instituting lockdowns have been widely applied around the world to control the current COVID-19 pandemic. Typically, this type of intervention is imposed when an epidemiological indicator in a given population exceeds a certain threshold. Then, the nonpharmaceutical intervention is lifted when the levels of the indicator used have decreased sufficiently. What is the best indicator to use? In this paper, we propose a mathematical framework to try to answer this question. More specifically, the proposed framework permits to assess and compare different event-triggered controls based on epidemiological indicators. Our methodology consists of considering some outcomes that are consequences of the nonpharmaceutical interventions that a decision maker aims to make as low as possible. The peak demand for intensive care units (ICU) and the total number of days in lockdown are examples of such outcomes. If an epidemiological indicator is used to trigger the interventions, there is naturally a trade-off between the outcomes that can be seen as a curve parameterized by the trigger threshold to be used. The computation of these curves for a group of indicators then allows the selection of the best indicator the curve of which dominates the curves of the other indicators. This methodology is illustrated using indicators in the context of COVID-19 using deterministic compartmental models in discrete-time, although the framework can be adapted for a larger class of models.

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