论文标题

最佳的周期性关闭,以最大程度地减少新兴疾病暴发的风险

Optimal periodic closure for minimizing risk in emerging disease outbreaks

论文作者

Hindes, Jason, Bianco, Simone, Schwartz, Ira B.

论文摘要

没有疫苗和治疗,社会必须依靠非药物干预策略来控制新兴疾病(例如Covid-19)的传播。尽管完全锁定在流行病学上是有效的,因为它消除了传染性接触,但它具有巨大的成本。最近的一些研究表明,最小化流行风险的合理折衷策略是定期封闭,其中人群在广泛的社会限制和放松之间振荡。但是,尚未提出任何基本理论来预测和解释最佳的封闭期,这是流行病学和社会参数的函数。在这项工作中,我们为SEIR样模型疾病开发了这样的分析理论,显示了特征性闭合周期如何最小化总爆发,并随着疾病的生殖数量和孵化周期而增加,只要两者都在可预测的范围内。使用我们的方法,我们证明了甜点效应,其中最佳周期性闭合对于具有相似的孵育和恢复期的疾病最大程度地有效。我们的结果与数值模拟相比,包括在Covid-19模型中,感染力和恢复显示显着可变性。

Without vaccines and treatments, societies must rely on non-pharmaceutical intervention strategies to control the spread of emerging diseases such as COVID-19. Though complete lockdown is epidemiologically effective, because it eliminates infectious contacts, it comes with significant costs. Several recent studies have suggested that a plausible compromise strategy for minimizing epidemic risk is periodic closure, in which populations oscillate between wide-spread social restrictions and relaxation. However, no underlying theory has been proposed to predict and explain optimal closure periods as a function of epidemiological and social parameters. In this work we develop such an analytical theory for SEIR-like model diseases, showing how characteristic closure periods emerge that minimize the total outbreak, and increase predictably with the reproductive number and incubation periods of a disease, as long as both are within predictable limits. Using our approach we demonstrate a sweet-spot effect in which optimal periodic closure is maximally effective for diseases with similar incubation and recovery periods. Our results compare well to numerical simulations, including in COVID-19 models where infectivity and recovery show significant variability.

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