Cruz Austin R, Enquist Brian J, Burger Joseph R
Department of Ecology & Evolutionary Biology, The University of Arizona, Tucson, AZ, USA.
Santa Fe Institute, Santa Fe, NM, USA.
J R Soc Interface. 2025 Mar;22(224):20240839. doi: 10.1098/rsif.2024.0839. Epub 2025 Mar 26.
Using county-level data from the United States, we assessed allometric scaling relationships of coronavirus disease (COVID-19) cases, deaths and age structure within and across the first four major waves of the pandemic (wild-type, alpha, delta, omicron). Results generally indicate that the burden of cases disproportionately impacted larger-sized counties, while the burden of deaths disproportionately impacted smaller counties. This may be partially due to multiple interacting social mechanisms, including a higher proportion of older adults who live in smaller counties. Moreover, these likely social mechanisms interacting with vaccinations and virus waves created a dynamic pattern whereby the rate and magnitude of infections and deaths were population- and time-dependent. Our results offer a novel perspective on the scaling dynamics of infectious diseases, highlighting how both the rate and magnitude of COVID-19 cases and deaths scale differently across counties. Population size and age structure are key factors in predicting disease burden. Our findings have practical implications, suggesting that scaling-informed public health policies could more effectively allocate resources and interventions to mitigate the impact of future epidemics across heterogeneous populations.
利用美国县级数据,我们评估了新冠疫情(COVID-19)前四波主要疫情(野生型、阿尔法、德尔塔、奥密克戎)期间及不同波次间病例、死亡和年龄结构的异速生长比例关系。结果总体表明,病例负担对较大规模县的影响不成比例,而死亡负担对较小县的影响不成比例。这可能部分归因于多种相互作用的社会机制,包括生活在较小县的老年人比例较高。此外,这些可能的社会机制与疫苗接种和病毒波相互作用,形成了一种动态模式,即感染和死亡的速率及规模取决于人口和时间。我们的结果为传染病的比例动态提供了一个新视角,突出了COVID-19病例和死亡的速率及规模在各县之间的不同比例关系。人口规模和年龄结构是预测疾病负担的关键因素。我们的研究结果具有实际意义,表明基于比例关系的公共卫生政策可以更有效地分配资源和干预措施,以减轻未来疫情对不同人群的影响。