Ali Sheikh Taslim, Chen Dongxuan, Lau Yiu-Chung, Lim Wey Wen, Yeung Amy, Adam Dillon C, Lau Eric H Y, Wong Jessica Y, Xiao Jingyi, Ho Faith, Gao Huizhi, Wang Lin, Xu Xiao-Ke, Du Zhanwei, Wu Peng, Leung Gabriel M, Cowling Benjamin J
WHO Collaborating Centre for Infectious Disease Epidemiology and Control, School of Public Health, Li Ka Shing Faculty of Medicine, The University of Hong Kong, Hong Kong Special Administrative Region, 999077, China.
Laboratory of Data Discovery for Health Limited, Hong Kong Science and Technology Park, New Territories, Hong Kong Special Administrative Region, 999077, China.
Am J Epidemiol. 2025 Apr 8;194(4):1079-1089. doi: 10.1093/aje/kwae220.
The serial interval (SI) distribution of an epidemic is used to approximate the generation time distribution, an essential parameter for inferring the transmissibility (${R}_t$) of an infectious disease. However, SI distributions may change as an epidemic progresses. We examined detailed contact tracing data on laboratory-confirmed cases of COVID-19 in Hong Kong, China, during the 5 COVID-19 waves from January 2020 to July 2022. We reconstructed the transmission pairs and estimated time-varying effective SI distributions and factors associated with longer or shorter intervals. Finally, we assessed the biases in estimating transmissibility using constant SI distributions. We found clear temporal changes in mean SI estimates within each epidemic wave studied and across waves, with mean SIs ranging from 5.5 days (95% credible interval, 4.4-6.6) to 2.7 days (95% credible interval, 2.2-3.2). The mean SIs shortened or lengthened over time, which was found to be closely associated with the temporal variation in COVID-19 case profiles and public health and social measures and could lead to biases in predicting ${R}_t$. Accounting for the impact of these factors, the time-varying quantification of SI distributions could lead to improved estimation of ${R}_t$, and could provide additional insights into the impact of public health measures on transmission.
疫情的代间距(SI)分布用于近似代际时间分布,这是推断传染病传播性(${R}_t$)的一个关键参数。然而,SI分布可能会随着疫情的发展而变化。我们研究了2020年1月至2022年7月中国香港地区5波新冠疫情期间实验室确诊病例的详细接触者追踪数据。我们重建了传播对,并估计了随时间变化的有效SI分布以及与较长或较短间隔相关的因素。最后,我们评估了使用恒定SI分布估计传播性时的偏差。我们发现在所研究的每一波疫情期间以及不同波次之间,平均SI估计值都有明显的时间变化,平均SI范围从5.5天(95%可信区间,4.4 - 6.6)到2.7天(95%可信区间,2.2 - 3.2)。平均SI随时间缩短或延长,这与新冠病例概况以及公共卫生和社会措施的时间变化密切相关,并且可能导致在预测${R}_t$时产生偏差。考虑到这些因素的影响,对SI分布进行随时间变化的量化可能会改进对${R}_t$的估计,并能为公共卫生措施对传播的影响提供更多见解。