Li Wenrui, Bulekova Katia, Gregor Brian, White Laura F, Kolaczyk Eric D
Department of Mathematics and Statistics, Boston University, Boston MA, USA.
Research Computing Services, Information Services and Technology, Boston University, Boston MA, USA.
medRxiv. 2022 Apr 28:2021.04.23.21255958. doi: 10.1101/2021.04.23.21255958.
A valuable metric in understanding local infectious disease dynamics is the local time-varying reproduction number, i.e. the expected number of secondary local cases caused by each infected individual. Accurate estimation of this quantity requires distinguishing cases arising from local transmission from those imported from elsewhere. Realistically, we can expect identification of cases as local or imported to be imperfect. We study the propagation of such errors in estimation of the local time-varying reproduction number. In addition, we propose a Bayesian framework for estimation of the true local time-varying reproduction number when identification errors exist. And we illustrate the practical performance of our estimator through simulation studies and with outbreaks of COVID-19 in Hong Kong and Victoria, Australia.
理解当地传染病动态的一个重要指标是当地随时间变化的繁殖数,即每个感染者引起的本地二代病例的预期数量。准确估计这个数量需要区分本地传播引起的病例和从其他地方输入的病例。实际上,我们可以预期将病例识别为本地或输入性病例并不完美。我们研究了在估计当地随时间变化的繁殖数时此类误差的传播。此外,我们提出了一个贝叶斯框架,用于在存在识别误差时估计真实的当地随时间变化的繁殖数。我们通过模拟研究以及香港和澳大利亚维多利亚州的新冠疫情爆发来说明我们估计器的实际性能。