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SIR 模型预测 COVID-19 疫情的效率低下:以伊斯法罕为例的研究

Inefficiency of SIR models in forecasting COVID-19 epidemic: a case study of Isfahan.

机构信息

Regenerative Medicine Research Center, Isfahan University of Medical Sciences, Isfahan, 81746-73461, Iran.

Department of Electrical and Computer Engineering, Isfahan University of Technology, Isfahan, 84156-83111, Iran.

出版信息

Sci Rep. 2021 Feb 25;11(1):4725. doi: 10.1038/s41598-021-84055-6.

Abstract

The multifaceted destructions caused by COVID-19 have been compared to that of World War II. What makes the situation even more complicated is the ambiguity about the duration and ultimate spread of the pandemic. It is especially critical for the governments, healthcare systems, and economic sectors to have an estimate of the future of this disaster. By using different mathematical approaches, including the classical susceptible-infected-recovered (SIR) model and its derivatives, many investigators have tried to predict the outbreak of COVID-19. In this study, we simulated the epidemic in Isfahan province of Iran for the period from Feb 14th to April 11th and also forecasted the remaining course with three scenarios that differed in terms of the stringency level of social distancing. Despite the prediction of disease course in short-term intervals, the constructed SIR model was unable to forecast the actual spread and pattern of epidemic in the long term. Remarkably, most of the published SIR models developed to predict COVID-19 for other communities, suffered from the same inconformity. The SIR models are based on assumptions that seem not to be true in the case of the COVID-19 epidemic. Hence, more sophisticated modeling strategies and detailed knowledge of the biomedical and epidemiological aspects of the disease are needed to forecast the pandemic.

摘要

由 COVID-19 引起的多方面破坏堪比第二次世界大战。更复杂的是,人们对大流行的持续时间和最终传播范围还存在不确定性。对于政府、医疗体系和经济领域来说,对这场灾难的未来做出预估至关重要。通过使用不同的数学方法,包括经典的易感-感染-恢复(SIR)模型及其衍生模型,许多研究人员试图预测 COVID-19 的爆发。在这项研究中,我们模拟了伊朗伊斯法罕省从 2 月 14 日至 4 月 11 日期间的疫情,并根据社会隔离严格程度不同的三种情景预测了剩余的疫情发展。尽管 SIR 模型能够短期预测疾病的发展过程,但无法长期预测疫情的实际传播和模式。值得注意的是,为其他社区预测 COVID-19 而开发的大多数已发表的 SIR 模型都存在同样的不一致性。SIR 模型基于的假设在 COVID-19 疫情中似乎并不成立。因此,需要更复杂的建模策略和对疾病的生物医学和流行病学方面的详细了解,才能预测这场大流行。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/71d2/7907339/df01f675a61a/41598_2021_84055_Fig1_HTML.jpg

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