论文标题
使用医疗保健工人感染数据探索未经报告的案件对COVID-19的时空分布的影响
Exploring the impact of under-reported cases on the COVID-19 spatiotemporal distribution using healthcare worker infection data
论文作者
论文摘要
及时了解Covid-19的时空模式和发展趋势对于及时预防和控制至关重要。但是,与公共卫生相关的领域,案件的报告不足是广泛的。如果未考虑不足的现象,也可以提取有偏见的推论并制定不适当的预防和控制政策。因此,在本文中,提出了一个新的框架,以探讨报告不足的影响对COVID-19-19S时空分布的影响,并使用Wuhan和Hubei(不包括Wuhan)的医护人员的感染数据进行了经验分析。结果表明(1)对数正态分布最适合随时间描述流行病的演变; (2)报告病例的估计峰值感染时间滞后于医疗工人病例的峰值感染时间,并且报告病例的估计感染时间间隔小于医疗保健工人病例的峰值。 (3)报告不足病例对大流行的早期阶段的影响大于其后期的影响,并且对早期发作区域的影响大于晚期发作区域的影响。 (4)尽管报告病例的数量低于实际案例数量,但累积报告的病例与医疗保健工人案件之间存在很高的空间相关性。这项研究的拟议框架是高度可扩展的,相关研究人员可以使用其他县的数据源进行类似的研究。
A timely understanding of the spatiotemporal pattern and development trend of COVID-19 is critical for timely prevention and control. However, the under-reporting of cases is widespread in fields associated with public health. It is also possible to draw biased inferences and formulate inappropriate prevention and control policies if the phenomenon of under-reporting is not taken into account. Therefore, in this paper, a novel framework was proposed to explore the impact of under-reporting on COVID-19 spatiotemporal distributions, and empirical analysis was carried out using infection data of healthcare workers in Wuhan and Hubei (excluding Wuhan). The results show that (1) the lognormal distribution was the most suitable to describe the evolution of epidemic with time; (2) the estimated peak infection time of the reported cases lagged the peak infection time of the healthcare worker cases, and the estimated infection time interval of the reported cases was smaller than that of the healthcare worker cases. (3) The impact of under-reporting cases on the early stages of the pandemic was greater than that on its later stages, and the impact on the early onset area was greater than that on the late onset area. (4) Although the number of reported cases was lower than the actual number of cases, a high spatial correlation existed between the cumulatively reported cases and healthcare worker cases. The proposed framework of this study is highly extensible, and relevant researchers can use data sources from other counties to carry out similar research.