COVID-19: The unreasonable effectiveness of simple models

Q1 Mathematics
Timoteo Carletti , Duccio Fanelli , Francesco Piazza
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引用次数: 48

Abstract

When the novel coronavirus disease SARS-CoV2 (COVID-19) was officially declared a pandemic by the WHO in March 2020, the scientific community had already braced up in the effort of making sense of the fast-growing wealth of data gathered by national authorities all over the world. However, despite the diversity of novel theoretical approaches and the comprehensiveness of many widely established models, the official figures that recount the course of the outbreak still sketch a largely elusive and intimidating picture. Here we show unambiguously that the dynamics of the COVID-19 outbreak belongs to the simple universality class of the SIR model and extensions thereof. Our analysis naturally leads us to establish that there exists a fundamental limitation to any theoretical approach, namely the unpredictable non-stationarity of the testing frames behind the reported figures. However, we show how such bias can be quantified self-consistently and employed to mine useful and accurate information from the data. In particular, we describe how the time evolution of the reporting rates controls the occurrence of the apparent epidemic peak, which typically follows the true one in countries that were not vigorous enough in their testing at the onset of the outbreak. The importance of testing early and resolutely appears as a natural corollary of our analysis, as countries that tested massively at the start clearly had their true peak earlier and less deaths overall.

COVID-19:简单模型的不合理有效性
当世界卫生组织于2020年3月正式宣布新型冠状病毒疾病SARS-CoV2 (COVID-19)为大流行时,科学界已经做好了准备,努力理解世界各国当局收集的快速增长的数据财富。然而,尽管有各种各样的新理论方法和许多广泛建立的模型的全面性,描述疫情过程的官方数据在很大程度上仍然描绘出一幅难以捉摸和令人生畏的画面。在这里,我们明确地表明,新冠肺炎疫情的动态属于SIR模型及其扩展的简单普适性类。我们的分析自然地使我们确定,任何理论方法都存在一个基本的限制,即在报告数据背后的测试框架的不可预测的非平稳性。然而,我们展示了这种偏差是如何自我一致地量化的,并用于从数据中挖掘有用和准确的信息。特别是,我们描述了报告率的时间演变如何控制表观流行高峰的发生,在爆发开始时检测力度不够的国家,表观流行高峰通常是在真实高峰之后出现的。早期和坚决检测的重要性似乎是我们分析的自然推论,因为在开始时进行大规模检测的国家显然更早出现了真正的高峰,总体上死亡人数更少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chaos, Solitons and Fractals: X
Chaos, Solitons and Fractals: X Mathematics-Mathematics (all)
CiteScore
5.00
自引率
0.00%
发文量
15
审稿时长
20 weeks
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