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Dynamic Panel Estimate–Based Health Surveillance of SARS-CoV-2 Infection Rates to Inform Public Health Policy: Model Development and Validation

机译:基于动态面板估计的SARS-COV-2感染率的健康监测,通知公共卫生政策:模型开发和验证

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Background SARS-CoV-2, the novel coronavirus that causes COVID-19, is a global pandemic with higher mortality and morbidity than any other virus in the last 100 years. Without public health surveillance, policy makers cannot know where and how the disease is accelerating, decelerating, and shifting. Unfortunately, existing models of COVID-19 contagion rely on parameters such as the basic reproduction number and use static statistical methods that do not capture all the relevant dynamics needed for surveillance. Existing surveillance methods use data that are subject to significant measurement error and other contaminants. Objective The aim of this study is to provide a proof of concept of the creation of surveillance metrics that correct for measurement error and data contamination to determine when it is safe to ease pandemic restrictions. We applied state-of-the-art statistical modeling to existing internet data to derive the best available estimates of the state-level dynamics of COVID-19 infection in the United States. Methods Dynamic panel data (DPD) models were estimated with the Arellano-Bond estimator using the generalized method of moments. This statistical technique enables control of various deficiencies in a data set. The validity of the model and statistical technique was tested. Results A Wald chi-square test of the explanatory power of the statistical approach indicated that it is valid (χ ~(2) _(10)=1489.84, P &.001), and a Sargan chi-square test indicated that the model identification is valid (χ ~(2) _(946)=935.52, P =.59). The 7-day persistence rate for the week of June 27 to July 3 was 0.5188 ( P &.001), meaning that every 10,000 new cases in the prior week were associated with 5188 cases 7 days later. For the week of July 4 to 10, the 7-day persistence rate increased by 0.2691 ( P =.003), indicating that every 10,000 new cases in the prior week were associated with 7879 new cases 7 days later. Applied to the reported number of cases, these results indicate an increase of almost 100 additional new cases per day per state for the week of July 4-10. This signifies an increase in the reproduction parameter in the contagion models and corroborates the hypothesis that economic reopening without applying best public health practices is associated with a resurgence of the pandemic. Conclusions DPD models successfully correct for measurement error and data contamination and are useful to derive surveillance metrics. The opening of America involves two certainties: the country will be COVID-19–free only when there is an effective vaccine, and the “social” end of the pandemic will occur before the “medical” end. Therefore, improved surveillance metrics are needed to inform leaders of how to open sections of the United States more safely. DPD models can inform this reopening in combination with the extraction of COVID-19 data from existing websites.
机译:背景SARS-COV-2,导致Covid-19的新型冠状病毒是全球性大流行,其死亡率高于过去100年中的任何其他病毒。如果没有公共卫生监测,政策制定者就无法知道该疾病如何加速,减速和转移。不幸的是,Covid-19传感器的现有模型依赖于基本再现号码等参数,并使用不捕获监视所需的所有相关动态的静态统计方法。现有监视方法使用受重大测量误差和其他污染物的数据。目的这项研究的目的是提供一个概念,了解了对测量误差和数据污染的监视指标的创建概念,以确定何时可以安全地缓解大流行限制。我们将最先进的统计建模应用于现有的互联网数据,以导出美国Covid-19感染的最佳可用估计。方法使用普罗兰键估计器使用普通的时刻方法估计动态面板数据(DPD)模型。这种统计技术能够控制数据集中的各种缺陷。测试了模型和统计技术的有效性。结果统计方法解释性的Wald Chi-Square测试表明它有效(χ〜(2)_(10)= 1489.84,P& .001),并表明了Sargan Chi-Square测试表明模型识别有效(χ〜(2)_(946)= 935.52,p = .59)。 6月27日至7月3日的7天持久率为0.5188(P& .001),这意味着前一周的每10,000例新病例与7天后的5188例相关联。对于7月4日至10日,7天的持续率增加0.2691(p = .003),表明前一周的每10,000例新病例与7879年后7天后有关。申请报告的案件数量,这些结果表明每州每天近100个额外的新案件增加,每州每天为7月4日至10日。这意味着传染模型中的再生产参数的增加,并证实了经济重新开放而不申请最佳公共卫生实践的假设与大流行的复苏相关。结论DPD模型成功纠正了测量误差和数据污染,可用于导出监控度量。美国的开放涉及两种确定性:才能在有效的疫苗时才能获得Covid-19,并且在“医疗”结束之前将发生大流行的“社会”结束。因此,需要改进监督指标,以告知如何更安全地开放美国的领导者。 DPD模型可以与来自现有网站的Covid-19数据的提取相结合通知此重新开放。

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