Laboratory of Populations, The Rockefeller University & Columbia University, New York, NY 10065.
Earth Institute, Columbia University, New York, NY 10027.
Proc Natl Acad Sci U S A. 2022 Sep 20;119(38):e2209234119. doi: 10.1073/pnas.2209234119. Epub 2022 Sep 12.
The spatial and temporal patterns of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) cases and COVID-19 deaths in the United States are poorly understood. We show that variations in the cumulative reported cases and deaths by county, state, and date exemplify Taylor's law of fluctuation scaling. Specifically, on day 1 of each month from April 2020 through June 2021, each state's variance (across its counties) of cases is nearly proportional to its squared mean of cases. COVID-19 deaths behave similarly. The lower 99% of counts of cases and deaths across all counties are approximately lognormally distributed. Unexpectedly, the largest 1% of counts are approximately Pareto distributed, with a tail index that implies a finite mean and an infinite variance. We explain why the counts across the entire distribution conform to Taylor's law with exponent two using models and mathematics. The finding of infinite variance has practical consequences. Local jurisdictions (counties, states, and countries) that are planning for prevention and care of largely unvaccinated populations should anticipate the rare but extremely high counts of cases and deaths that occur in distributions with infinite variance. Jurisdictions should prepare collaborative responses across boundaries, because extremely high local counts of cases and deaths may vary beyond the resources of any local jurisdiction.
美国严重急性呼吸综合征冠状病毒 2(SARS-CoV-2)病例和 COVID-19 死亡的时空模式尚未得到很好的理解。我们表明,按县、州和日期累计报告的病例和死亡人数的变化体现了泰勒波动规模定律。具体来说,在 2020 年 4 月至 2021 年 6 月的每个月的第一天,每个州的病例方差(在其县内)与其病例的平方平均值几乎成正比。COVID-19 死亡情况类似。所有县的病例和死亡的较低 99%的计数大致呈对数正态分布。出乎意料的是,最大的 1%的计数近似帕累托分布,尾部指数意味着有限的均值和无限的方差。我们使用模型和数学解释了为什么整个分布中的计数符合泰勒定律,指数为 2。方差无穷大的发现具有实际意义。计划为未接种疫苗人群提供预防和护理的地方管辖区(县、州和国家)应预计到在方差无穷大的分布中会发生罕见但极高的病例和死亡数。各管辖区应准备在边界内进行协作应对,因为极高的本地病例和死亡数可能超出任何地方管辖区的资源范围。