Laboratory for Computational Engineering, Empa, Dübendorf, Switzerland.
Chair of Computational Mathematics and Simulation Science, EPFL, Switzerland.
J R Soc Interface. 2024 Jul;21(216):20240124. doi: 10.1098/rsif.2024.0124. Epub 2024 Jul 31.
During the recent COVID-19 pandemic, the instantaneous reproduction number, (), has surged as a widely used measure to target public health interventions aiming at curbing the infection rate. In analogy with the basic reproduction number that arises from the linear stability analysis, () is typically interpreted as a threshold parameter that separates exponential growth (() > 1) from exponential decay (() < 1). In real epidemics, however, the finite number of susceptibles, the stratification of the population (e.g. by age or vaccination state), and heterogeneous mixing lead to more complex epidemic courses. In the context of the multidimensional renewal equation, we generalize the scalar () to a reproduction matrix, [Formula: see text], which details the epidemic state of the stratified population, and offers a concise epidemic forecasting scheme. First, the reproduction matrix is computed from the available incidence data (subject to some assumptions), then it is projected into the future by a transfer functional to predict the epidemic course. We demonstrate that this simple scheme allows realistic and accurate epidemic trajectories both in synthetic test cases and with reported incidence data from the COVID-19 pandemic. Accounting for the full heterogeneity and nonlinearity of the infection process, the reproduction matrix improves the prediction of the infection peak. In contrast, the scalar reproduction number overestimates the possibility of sustaining the initial infection rate and leads to an overshoot in the incidence peak. Besides its simplicity, the devised forecasting scheme offers rich flexibility to be generalized to time-dependent mitigation measures, contact rate, infectivity and vaccine protection.
在最近的 COVID-19 大流行期间,瞬时繁殖数 ( ) 作为一种广泛使用的措施飙升,旨在针对旨在遏制感染率的公共卫生干预措施。与源于线性稳定性分析的基本繁殖数类似, ( ) 通常被解释为一个阈值参数,将指数增长 ( > 1) 与指数衰减 ( < 1) 分开。然而,在实际的流行病中,有限数量的易感染者、人口分层(例如按年龄或疫苗接种状态)以及异质混合导致更复杂的流行病过程。在多维更新方程的背景下,我们将标量 ( ) 推广到繁殖矩阵 [公式:见文本],该矩阵详细说明了分层人群的流行病状态,并提供了简洁的流行病预测方案。首先,从可用的发病数据(受某些假设的约束)计算繁殖矩阵,然后通过传递函数将其投影到未来,以预测流行病过程。我们证明,这种简单的方案可以在合成测试案例和 COVID-19 大流行报告的发病率数据中实现真实准确的流行病轨迹。考虑到感染过程的完全异质性和非线性,繁殖矩阵提高了感染高峰的预测能力。相比之下,标量繁殖数高估了维持初始感染率的可能性,并导致发病率高峰的过度增长。除了简单性之外,设计的预测方案还提供了丰富的灵活性,可以推广到时间依赖的缓解措施、接触率、传染性和疫苗保护。