The distribution of the incubation period of the novel coronavirus disease that emerged in 2019 (COVID-19) has crucial clinical implications for understanding this disease and devising effective disease-control measures. Qin et al. (2020) designed a cross-sectional and forward follow-up study to collect the duration times between a specific observation time and the onset of COVID-19 symptoms for a number of individuals. They further proposed a mixture forward-incubation-time epidemic model, which is a mixture of an incubation-period distribution and a forward time distribution, to model the collected duration times and to estimate the incubation-period distribution of COVID-19. In this paper, we provide sufficient conditions for the identifiability of the unknown parameters in the mixture forward-incubation-time epidemic model when the incubation period follows a two-parameter distribution. Under the same setup, we propose a likelihood ratio test (LRT) for testing the null hypothesis that the mixture forward-incubation-time epidemic model is a homogeneous exponential distribution. The testing problem is non-regular because a nuisance parameter is present only under the alternative. We establish the limiting distribution of the LRT and identify an explicit representation for it. The limiting distribution of the LRT under a sequence of local alternatives is also obtained. Our simulation results indicate that the LRT has desirable type I errors and powers, and we analyze a COVID-19 outbreak dataset from China to illustrate the usefulness of the LRT.
翻译:2019年(COVID-19)出现的新型冠状病毒(COVID-19)的潜伏期分布对了解这一疾病和制定有效的疾病控制措施具有至关重要的临床影响。 Qin等人(202020年)设计了跨部门和前瞻性的后续研究,以收集特定观察时间与开始COVID-19症状之间的时间间隔。他们还提议了一个混合前潜伏期流行模式,这是混合潜伏期分布和预发时间分布的结合,可以模拟收集的时间间隔时间和估计COVID-19的潜伏期分布。在本文件中,我们为混合前潜伏期流行模式中未知参数的可识别性提供了充分条件,因为潜伏期分布间隔期经过两个参数的分布。在同一个设置下,我们建议对混合前潜伏期分布和预发期分布时间模式是一种单一指数分布模式的无效假设(LRT)进行一个可能性测试。 测试显示,我们模拟的数值分布过程不是经常性的,因为我们目前使用一种明确的缩排值参数。