Tao Yong
College of Economics and Management, Southwest University, Chongqing, China and Department of Management, Technology and Economics, ETH Zurich, Switzerland.
Phys Rev E. 2020 Sep;102(3-1):032136. doi: 10.1103/PhysRevE.102.032136.
The key parameter that characterizes the transmissibility of a disease is the reproduction number R. If it exceeds 1, the number of incident cases will inevitably grow over time, and a large epidemic is possible. To prevent the expansion of an epidemic, R must be reduced to a level below 1. To estimate the reproduction number, the probability distribution function of the generation interval of an infectious disease is required to be available; however, this distribution is often unknown. In this paper, given the incomplete information for the generation interval, we propose a maximum entropy method to estimate the reproduction number. Based on this method, given the mean value and variance of the generation interval, we first determine its probability distribution function and in turn estimate the real-time values of the reproduction number of COVID-19 in China and the United States. By applying these estimated reproduction numbers into the susceptible-infectious-removed epidemic model, we simulate the evolutionary tracks of the epidemics in China and the United States, both of which are in accordance with that of the real incident cases.
表征一种疾病传播能力的关键参数是再生数R。如果R超过1,随着时间的推移,新发病例数将不可避免地增加,大规模疫情就有可能发生。为防止疫情蔓延,必须将R降低到1以下。为了估计再生数,需要知道传染病代间隔的概率分布函数;然而,这种分布往往是未知的。在本文中,鉴于代间隔的信息不完整,我们提出一种最大熵方法来估计再生数。基于该方法,在已知代间隔的均值和方差的情况下,我们首先确定其概率分布函数,进而估计中国和美国新冠肺炎再生数的实时值。通过将这些估计的再生数应用于易感-感染-康复传染病模型,我们模拟了中国和美国疫情的演变轨迹,两者均与实际新发病例的轨迹相符。