Department of Statistics and Actuarial Science, The University of Hong Kong, Pokfulam Road, Hong Kong.
Centre for Quantitative Medicine, Duke-NUS Medical School, Singapore.
Biom J. 2023 Jan;65(1):e2100293. doi: 10.1002/bimj.202100293. Epub 2022 Jun 26.
In epidemiology, the fatality rate is an important indicator of disease severity and has been used to evaluate the effects of new treatments. During an emerging epidemic with limited resources, monitoring the changes in fatality rate can also provide signals on the evaluation of government policies and healthcare quality, which helps to guide public health decision. A statistical test is developed in this paper to detect changes in fatality rate over time during the course of an emerging infectious disease. A major advantage of the proposed test is that it only requires the regularly reported numbers of deaths and recoveries, which meets the actual need as detailed surveillance data are hard to collect during the course of an emerging epidemic especially the deadly infectious diseases with large magnitude. In addition, with the sequential testing procedure, the effective measures can be detected at the earliest possible time to provide guidance to policymakers for swift action. Simulation studies showed that the proposed test performs well and is sensitive in picking up changes in the fatality rate. The test is applied to the 2014-2016 Ebola outbreak in Sierra Leone for illustration.
在流行病学中,病死率是疾病严重程度的一个重要指标,已被用于评估新疗法的效果。在资源有限的新发传染病疫情中,监测病死率的变化也可以为评估政府政策和医疗质量提供信号,有助于指导公共卫生决策。本文提出了一种用于检测新发传染病过程中病死率随时间变化的统计检验方法。该检验方法的一个主要优点是,它只需要定期报告的死亡和康复人数,这符合实际需求,因为在新发传染病疫情期间,特别是在病死率高的致命传染病疫情期间,很难收集详细的监测数据。此外,由于采用了序贯检验程序,可以在最早的时间检测到有效的措施,为决策者提供迅速行动的指导。模拟研究表明,该检验方法性能良好,对病死率的变化具有较高的敏感性。该检验方法应用于 2014-2016 年塞拉利昂的埃博拉疫情进行了说明。