Coughlin Steven S, Yiǧiter Ayten, Xu Hongyan, Berman Adam E, Chen Jie
Division of Epidemiology, Department of Population Health Sciences, Medical College of Georgia, Augusta University, Augusta, GA, USA.
Department of Statistics, Faculty of Science, Hacettepe University, Beytepe, Ankara, Turkey.
Public Health Pract (Oxf). 2021 Nov;2:100064. doi: 10.1016/j.puhip.2020.100064. Epub 2020 Dec 10.
The COVID-19 pandemic caused by the novel SARS-CoV-2 coronavirus has drastically altered the global realities. Harnessing national scale data from the COVID-19 pandemic may better inform policy makers in decision making surrounding the reopening of society. We examined country-level, daily-confirmed, COVID-19 case data from the World Health Organization (WHO) to better understand the comparative dynamics associated with the ongoing global pandemic at a national scale.
Observational study.
We included data from 20 countries in Europe, the Americas, Africa, Eastern Mediterranean and West Pacific regions, and obtained the aggregated daily new case data for the European Union including 27 countries. We utilized an innovative analytic approach by applying statistical change point models, which have been previously employed to model volatility in stock markets, changes in genomic data, and data dynamics in other scientific disciplines, to segment the transformed case data. This allowed us to identify possible change or turning points as indicated by the dynamics of daily COVID-19 incidences. We also employed B-spline regression models to express the estimated (predicted) trend of daily new incidences for each country's COVID-19 disease burden with the identified key change points in the model.
We identified subtle, yet different change points (translated to actual calendar days) by either the mean and variance change point model with small p-values or by a Bayesian online change point algorithm with large posterior probability in the trend of COVID-19 incidences for different countries. We correlated these statistically identified change points with evidence from the literature surrounding these countries' policies regarding opening and closing of their societies in an effort to slow the spread of COVID-19. The days when change points were detected were ahead of the actual policy implementation days, and in most of the countries included in this study the decision lagged the change point days too long to prevent potential widespread extension of the pandemic.
Our models describe the behavior of COVID-19 prevalence at a national scale and identify changes in national disease burden as relating to chronological changes in restrictive societal activity. Globally, social distancing measures may have been most effective in smaller countries with single governmental and public health organizational structures. Further research examining the impact of heterogeneous governmental responses to pandemic management appears warranted.
新型严重急性呼吸综合征冠状病毒2(SARS-CoV-2)引发的2019冠状病毒病(COVID-19)大流行极大地改变了全球现状。利用COVID-19大流行的全国规模数据,可能会为政策制定者围绕社会重新开放的决策提供更好的信息。我们研究了世界卫生组织(WHO)提供的国家层面每日确诊的COVID-19病例数据,以更好地了解在国家层面与当前全球大流行相关的比较动态。
观察性研究。
我们纳入了来自欧洲、美洲、非洲、东地中海和西太平洋地区20个国家的数据,并获取了包括27个国家的欧盟的每日新增病例汇总数据。我们采用了一种创新的分析方法,应用统计变化点模型(该模型先前已用于对股票市场的波动性、基因组数据的变化以及其他科学学科中的数据动态进行建模)来对转换后的病例数据进行分段。这使我们能够根据COVID-19每日发病率的动态识别可能的变化或转折点。我们还采用B样条回归模型,在模型中用确定的关键变化点来表达每个国家COVID-19疾病负担的每日新增发病率的估计(预测)趋势。
我们通过具有小p值的均值和方差变化点模型,或通过具有大后验概率的贝叶斯在线变化点算法,在不同国家的COVID-19发病率趋势中识别出了细微但不同的变化点(转换为实际日历日期)。我们将这些经统计确定的变化点与围绕这些国家关于开放和关闭社会以减缓COVID-19传播的政策的文献证据相关联。检测到变化点的日期早于实际政策实施日期,并且在本研究纳入的大多数国家中,决策滞后于变化点日期太久,无法防止大流行的潜在广泛蔓延。
我们的模型描述了国家层面COVID-19流行情况的行为,并将国家疾病负担的变化与限制性社会活动的时间变化相关联。在全球范围内,社交距离措施在具有单一政府和公共卫生组织结构的较小国家可能最为有效。进一步研究不同政府对大流行管理的应对措施所产生的影响似乎很有必要。