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控制 COVID-19 的社交隔离和检测的最优策略。

Optimal strategies for social distancing and testing to control COVID-19.

机构信息

Department of Mathematics, Soongsil University, 369 Sangdoro, Dongjak-Gu, Seoul 06978, Republic of Korea.

Department of Mathematics, Soongsil University, 369 Sangdoro, Dongjak-Gu, Seoul 06978, Republic of Korea.

出版信息

J Theor Biol. 2021 Mar 7;512:110568. doi: 10.1016/j.jtbi.2020.110568. Epub 2020 Dec 30.

Abstract

The coronavirus disease (COVID-19) has infected more than 79 million individuals, with 1.7 million deaths worldwide. Several countries have implemented social distancing and testing policies with contact tracing as a measure to flatten the curve of the ongoing pandemic. Optimizing these control measures is urgent given the substantial societal and economic impacts associated with infection and interventions. To determine the optimal social distancing and testing strategies, we developed a mathematical model of COVID-19 transmission and applied optimal control theory, identifying the best approach to reduce the epidemiological burden of COVID-19 at a minimal cost. The results demonstrate that testing as a standalone optimal strategy does not have a significant effect on the final size of an epidemic, but it would delay the peak of the pandemic. If social distancing is the sole control strategy, it would be optimal to gradually increase the level of social distancing as the incidence curve of COVID-19 grows, and relax the measures after the curve has reached its peak. Compared with a single strategy, combined social distancing and testing strategies are demonstrated to be more efficient at reducing the disease burden, and they can delay the peak of the disease. To optimize these strategies, testing should be maintained at a maximum level in the early phases and after the peak of the epidemic, whereas social distancing should be intensified when the prevalence of the disease is greater than 15%. Accordingly, public health agencies should implement early testing and switch to social distancing when the incidence level begins to increase. After the peak of the pandemic, it would be optimal to gradually relax social distancing and switch back to testing.

摘要

冠状病毒病(COVID-19)已感染超过 7900 万人,全球有 170 万人死亡。为了减缓大流行的发展,许多国家都采取了社会隔离和检测措施,并进行接触者追踪。鉴于感染和干预措施会带来巨大的社会和经济影响,优化这些控制措施迫在眉睫。为了确定最佳的社会隔离和检测策略,我们建立了 COVID-19 传播的数学模型,并应用最优控制理论,确定了以最小成本降低 COVID-19 流行病学负担的最佳方法。结果表明,作为单一最优策略的检测对疫情最终规模没有显著影响,但可以延迟大流行的高峰期。如果社会隔离是唯一的控制策略,那么随着 COVID-19 发病率曲线的增长,逐渐提高社会隔离水平并在曲线达到峰值后放松措施是最佳的。与单一策略相比,社会隔离和检测相结合的策略在降低疾病负担方面更有效,并且可以延迟疾病的高峰期。为了优化这些策略,在疾病爆发的早期和高峰期,应保持最大程度的检测,而当疾病流行率超过 15%时,应加强社会隔离。因此,公共卫生机构应在发病率开始上升时尽早进行检测,并转为实施社会隔离。在大流行高峰期过后,逐渐放松社会隔离并转为检测是最佳选择。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ac86/7772089/b992e4019749/gr1_lrg.jpg

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