An engineering model of the COVID-19 trajectory to predict the success of isolation initiatives.

UCL open environment Pub Date : 2021-06-30 eCollection Date: 2021-01-01 DOI:10.14324/111.444/ucloe.000020
Steven King, Alberto Striolo
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Abstract

Much media and societal attention is today focused on how to best control the spread of coronavirus (COVID-19). Every day brings us new data, and policy makers are implementing different strategies in different countries to manage the impact of COVID-19. To respond to the first 'wave' of infection, several countries, including the UK, opted for isolation/lockdown initiatives, with different degrees of rigour. Data showed that these initiatives have yielded the expected results in terms of containing the rapid trajectory of the virus. When this article was first prepared (April 2020), the affected societies were wondering when the isolation/lockdown initiatives should be lifted. While detailed epidemiological, economic as well as social studies would be required to answer this question completely, here we employ a simple engineering model. Albeit simple, the model is capable of reproducing the main features of the data reported in the literature concerning the COVID-19 trajectory in different countries, including the increase in cases in countries following the initially successful isolation/lockdown initiatives. Keeping in mind the simplicity of the model, we attempt to draw some conclusions, which seem to suggest that a decrease in the number of infected individuals after the initiation of isolation/lockdown initiatives does not necessarily guarantee that the virus trajectory is under control. Within the limit of this model, it would seem that rigid isolation/lockdown initiatives for the medium term would lead to achieving the desired control over the spread of the virus. This observation seems consistent with the 2020 summer months, during which the COVID-19 trajectory seemed to be almost under control across most European countries. Consistent with the results from our simple model, winter 2020 data show that the virus trajectory was again on the rise. Because the optimal solution will achieve control over the spread of the virus while minimising negative societal impacts due to isolation/lockdown, which include but are not limited to economic and mental health aspects, the engineering model presented here is not sufficient to provide the desired answer. However, the model seems to suggest that to keep the COVID-19 trajectory under control, a series of short-to-medium term isolation measures should be put in place until one or more of the following scenarios is achieved: a cure has been developed and has become accessible to the population at large; a vaccine has been developed, tested and distributed to large portions of the population; a sufficiently large portion of the population has developed resistance to the COVID-19 virus; or the virus itself has become less aggressive. It is somewhat remarkable that an engineering model, despite all its approximations, provides suggestions consistent with advanced epidemiological models developed by several experts in the field. The model proposed here is however not expected to be able to capture the emergence of variants of the virus, which seem to be responsible for significant outbreaks, notably in India, in the spring of 2021, it cannot describe the effectiveness of vaccine strategies, as it does not differentiate among different age groups within the population, nor does it allow us to consider the duration of the immunity achieved after infection or vaccination.

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COVID-19 轨迹工程模型,用于预测隔离举措的成功与否。
如今,许多媒体和社会关注的焦点是如何最好地控制冠状病毒(COVID-19)的传播。每天都有新的数据,不同国家的政策制定者正在实施不同的策略来控制 COVID-19 的影响。为了应对第一 "波 "感染,包括英国在内的一些国家选择了不同程度的隔离/封锁措施。数据显示,这些举措在遏制病毒快速传播方面取得了预期效果。在本文撰写之初(2020 年 4 月),受影响的社会正在考虑何时取消隔离/封锁措施。要彻底回答这个问题,需要进行详细的流行病学、经济和社会研究,在此我们采用一个简单的工程模型。该模型虽然简单,但却能再现文献中报道的不同国家 COVID-19 发展轨迹数据的主要特征,包括隔离/封锁措施取得初步成功后各国病例的增加。考虑到模型的简易性,我们试图得出一些结论,这些结论似乎表明,隔离/封锁措施启动后受感染人数的减少并不一定能保证病毒轨迹得到控制。在这一模型的限制范围内,在中期内采取严格的隔离/封锁措施似乎可以达到预期的控制病毒传播的目的。这一观察结果似乎与 2020 年夏季的情况一致,在这几个月中,COVID-19 在大多数欧洲国家的传播轨迹似乎几乎得到了控制。与我们的简单模型得出的结果一致,2020 年冬季的数据显示病毒的传播轨迹再次上升。由于最佳解决方案既要控制病毒传播,又要尽量减少隔离/封锁对社会造成的负面影响(包括但不限于经济和心理健康方面),因此本文介绍的工程模型不足以提供理想的答案。不过,该模型似乎建议,为了控制 COVID-19 的发展轨迹,应采取一系列中短期隔离措施,直到出现以下一种或多种情况:已开发出治愈方法,并可供广大人群使用;已开发出疫苗,并对其进行了测试和向大部分人群分发;有足够多的人群对 COVID-19 病毒产生了抵抗力;或病毒本身的攻击性有所降低。一个工程模型尽管是近似的,但它提供的建议却与该领域多位专家开发的先进流行病学模型相一致,这在某种程度上是很了不起的。然而,这里提出的模型预计无法捕捉到病毒变种的出现,而这些变种似乎是造成重大疫情爆发的原因,特别是在 2021 年春季的印度。该模型无法描述疫苗策略的有效性,因为它没有区分人群中的不同年龄组,也不允许我们考虑感染或接种疫苗后所获得的免疫力的持续时间。
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