Institute for Chemistry and Biology of the Marine Environment, University of Oldenburg, 26111 Oldenburg, Germany.
Chaos. 2020 Sep;30(9):093123. doi: 10.1063/5.0013031.
COVID-19 is an emerging respiratory infectious disease caused by the coronavirus SARS-CoV-2. It was first reported on in early December 2019 in Wuhan, China and within three months spread as a pandemic around the whole globe. Here, we study macro-epidemiological patterns along the time course of the COVID-19 pandemic. We compute the distribution of confirmed COVID-19 cases and deaths for countries worldwide and for counties in the US and show that both distributions follow a truncated power-law over five orders of magnitude. We are able to explain the origin of this scaling behavior as a dual-scale process: the large-scale spread of the virus between countries and the small-scale accumulation of case numbers within each country. Assuming exponential growth on both scales, the critical exponent of the power-law is determined by the ratio of large-scale to small-scale growth rates. We confirm this theory in numerical simulations in a simple meta-population model, describing the epidemic spread in a network of interconnected countries. Our theory gives a mechanistic explanation why most COVID-19 cases occurred within a few epicenters, at least in the initial phase of the outbreak. By combining real world data, modeling, and numerical simulations, we make the case that the distribution of epidemic prevalence might follow universal rules.
新型冠状病毒肺炎(COVID-19)是一种由冠状病毒 SARS-CoV-2 引起的新发呼吸道传染病。它于 2019 年 12 月初在中国武汉首次报告,在三个月内便在全球范围内蔓延成为大流行。在此,我们研究了 COVID-19 大流行期间的宏观流行病学模式。我们计算了全球各国以及美国各县的确诊 COVID-19 病例和死亡人数的分布,并发现这两种分布均遵循截断幂律分布,跨越五个数量级。我们能够将这种标度行为的起源解释为双重标度过程:病毒在国家之间的大规模传播以及每个国家内部病例数量的小规模积累。假设在这两个尺度上均呈指数增长,幂律的临界指数由大尺度和小尺度增长率的比值决定。我们在一个简单的元种群模型中的数值模拟中验证了这一理论,该模型描述了相互连接的国家网络中的传染病传播。我们的理论从机制上解释了为什么大多数 COVID-19 病例发生在少数几个中心,至少在疫情爆发的初始阶段是这样。通过结合实际数据、建模和数值模拟,我们证明了流行率的分布可能遵循普遍规律。