A primary quantity of interest in the study of infectious diseases is the average number of new infections that an infected person produces. This so-called reproduction number has significant implications for the disease progression. There has been increasing literature suggesting that superspreading, the significant variability in number of new infections caused by individuals, plays an important role in the spread of SARS-CoV-2. In this paper, we consider the effect that such superspreading has on the estimation of the reproduction number and subsequent estimates of future cases. Accordingly, we employ a simple extension to models currently used in the literature to estimate the reproduction number and present a case-study of the progression of COVID-19 in Austria. Our models demonstrate that the estimation uncertainty of the reproduction number increases with superspreading and that this improves the performance of prediction intervals. Of independent interest is the derivation of a transparent formula that connects the extent of superspreading to the width of credible intervals for the reproduction number. This serves as a valuable heuristic for understanding the uncertainty surrounding diseases with superspreading.
翻译:对传染病研究兴趣的主要部分是受感染者新感染的平均数量。这种所谓的生殖数对疾病发展有重大影响。越来越多的文献表明,超传播,即个人新感染人数的显著变化,在SARS-COV-2的传播中起着重要作用。在本文中,我们考虑到这种超传播对估计复制数和未来病例随后估计的影响。因此,我们简单扩展文献中目前使用的模型,以估计复制数,并对奥地利COVID-19的演变情况进行个案研究。我们的模型表明,超传播使生殖数的不确定性增加,这改善了预测间隔的性能。独立感兴趣的是将超扩展的程度与复制数的可靠间隔宽度联系起来的透明公式的衍生出来。这对了解与超传播有关的疾病的不确定性是一种宝贵的理论。