Farmer School of Business, Miami University, Oxford, OH, United States of America.
College for Public Health and Social Justice, Saint Louis University, Saint Louis, MO, United States of America.
PLoS One. 2021 Nov 3;16(11):e0242896. doi: 10.1371/journal.pone.0242896. eCollection 2021.
The COVID-19 pandemic in the U.S. has exhibited a distinct multiwave pattern beginning in March 2020. Paradoxically, most counties do not exhibit this same multiwave pattern. We aim to answer three research questions: (1) How many distinct clusters of counties exhibit similar COVID-19 patterns in the time-series of daily confirmed cases? (2) What is the geographic distribution of the counties within each cluster? and (3) Are county-level demographic, socioeconomic and political variables associated with the COVID-19 case patterns?
We analyzed data from counties in the U.S. from March 1, 2020 to January 2, 2021. Time series clustering identified clusters in the daily confirmed cases of COVID-19. An explanatory model was used to identify demographic, socioeconomic and political variables associated with the outbreak patterns.
Three patterns were identified from the cluster solution including counties in which cases are still increasing, those that peaked in the late fall, and those with low case counts to date. Several county-level demographic, socioeconomic, and political variables showed significant associations with the identified clusters.
The pattern of the outbreak is related both to the geographic location within the U.S. and several variables including population density and government response.
The reported pattern of cases in the U.S. is observed through aggregation of the daily confirmed COVID-19 cases, suggesting that local trends may be more informative. The pattern of the outbreak varies by county, and is associated with important demographic, socioeconomic, political and geographic factors.
美国的 COVID-19 疫情从 2020 年 3 月开始呈现出明显的多波模式。矛盾的是,大多数县并没有表现出同样的多波模式。我们旨在回答三个研究问题:(1)在每日确诊病例的时间序列中,有多少个具有相似 COVID-19 模式的独特县集群?(2)每个集群内的县的地理分布如何?(3)县一级的人口统计学、社会经济和政治变量与 COVID-19 病例模式是否相关?
我们分析了 2020 年 3 月 1 日至 2021 年 1 月 2 日美国各县的数据。时间序列聚类确定了 COVID-19 每日确诊病例中的集群。使用解释性模型确定与疫情模式相关的人口统计学、社会经济和政治变量。
从聚类解决方案中确定了三种模式,包括病例仍在增加的县、秋季末达到高峰的县以及目前病例数量较低的县。一些县一级的人口统计学、社会经济和政治变量与确定的集群显著相关。
疫情爆发的模式与美国境内的地理位置以及包括人口密度和政府反应在内的几个变量有关。
美国报告的病例模式是通过对每日确诊的 COVID-19 病例进行汇总观察到的,这表明当地趋势可能更具信息性。疫情爆发的模式因县而异,与重要的人口统计学、社会经济、政治和地理因素有关。