Department of Statistics and Actuarial Science, 25809The University of Hong Kong, Hong Kong.
Department of Applied Mathematics, 26680The Hong Kong Polytechnic University, Hong Kong.
Stat Methods Med Res. 2022 Feb;31(2):348-360. doi: 10.1177/09622802211061927. Epub 2021 Dec 8.
Infectious diseases, such as the ongoing COVID-19 pandemic, pose a significant threat to public health globally. Fatality rate serves as a key indicator for the effectiveness of potential treatments or interventions. With limited time and understanding of novel emerging epidemics, comparisons of the fatality rates in real-time among different groups, say, divided by treatment, age, or area, have an important role to play in informing public health strategies. We propose a statistical test for the null hypothesis of equal real-time fatality rates across multiple groups during an ongoing epidemic. An elegant property of the proposed test statistic is that it converges to a Brownian motion under the null hypothesis, which allows one to develop a sequential testing approach for rejecting the null hypothesis at the earliest possible time when statistical evidence accumulates. This property is particularly important as scientists and clinicians are competing with time to identify possible treatments or effective interventions to combat the emerging epidemic. The method is widely applicable as it only requires the cumulative number of confirmed cases, deaths, and recoveries. A large-scale simulation study shows that the finite-sample performance of the proposed test is highly satisfactory. The proposed test is applied to compare the difference in disease severity among Wuhan, Hubei province (exclude Wuhan) and mainland China (exclude Hubei) from February to March 2020. The result suggests that the disease severity is potentially associated with the health care resource availability during the early phase of the COVID-19 pandemic in mainland China.
传染病,如当前的 COVID-19 大流行,对全球公共卫生构成重大威胁。病死率是衡量潜在治疗或干预措施效果的关键指标。在有限的时间内,对新出现的传染病的了解有限,实时比较不同群体(例如按治疗、年龄或地区划分)的病死率,对于制定公共卫生策略具有重要作用。我们提出了一种在传染病持续期间用于检验多个组实时病死率相等的零假设的统计检验方法。所提出的检验统计量的一个优雅特性是,在零假设下,它收敛于布朗运动,这使得人们可以在统计证据积累时尽早拒绝零假设。随着科学家和临床医生争分夺秒地寻找可能的治疗方法或有效的干预措施来对抗新出现的传染病,这种特性尤其重要。该方法应用广泛,因为它只需要确诊病例、死亡和康复的累计数量。一项大规模模拟研究表明,所提出的检验的有限样本性能非常令人满意。该检验应用于比较 2020 年 2 月至 3 月期间武汉、湖北省(不包括武汉)和中国大陆(不包括湖北)之间疾病严重程度的差异。结果表明,在中国大陆 COVID-19 大流行的早期阶段,疾病严重程度可能与医疗保健资源的可获得性有关。