Alvarez Luis, Morel Jean-David, Morel Jean-Michel
Departamento de Informática y Sistemas, Universidad de Las Palmas de Gran Canaria, 35017 Las Palmas de Gran Canaria, Spain.
Laboratory of Integrative Systems Physiology, Ecole Polytechnique Fédérale de Lausanne, EPFL/IBI/LISP-Station 15, CH-1015 Lausanne, Switzerland.
Biology (Basel). 2022 Mar 31;11(4):540. doi: 10.3390/biology11040540.
The sanitary crisis of the past two years has focused the public's attention on quantitative indicators of the spread of the COVID-19 pandemic. The daily reproduction number Rt, defined by the average number of new infections caused by a single infected individual at time , is one of the best metrics for estimating the epidemic trend. In this paper, we provide a complete observation model for sampled epidemiological incidence signals obtained through periodic administrative measurements. The model is governed by the classic renewal equation using an empirical reproduction kernel, and subject to two perturbations: a time-varying gain with a weekly period and a white observation noise. We estimate this noise model and its parameters by extending a variational inversion of the model recovering its main driving variable Rt. Using Rt, a restored incidence curve, corrected of the weekly and festive day bias, can be deduced through the renewal equation. We verify experimentally on many countries that, once the weekly and festive days bias have been corrected, the difference between the incidence curve and its expected value is well approximated by an exponential distributed white noise multiplied by a power of the magnitude of the restored incidence curve.
过去两年的卫生危机使公众的注意力集中在新冠疫情传播的量化指标上。每日再生数Rt,由某一时刻单个感染者引起的新感染平均数量定义,是估计疫情趋势的最佳指标之一。在本文中,我们为通过定期行政测量获得的抽样流行病学发病信号提供了一个完整的观测模型。该模型由使用经验再生核的经典更新方程控制,并受到两种扰动:具有每周周期的时变增益和白观测噪声。我们通过扩展模型的变分反演来估计这个噪声模型及其参数,从而恢复其主要驱动变量Rt。利用Rt,通过更新方程可以推导出一条校正了每周和节假日偏差的恢复发病曲线。我们在许多国家进行了实验验证,一旦校正了每周和节假日偏差,发病曲线与其期望值之间的差异可以很好地近似为指数分布的白噪声乘以恢复发病曲线幅度的幂。