论文标题
预测结果并估计Covid-19爆发中的死亡时间序列的流行病模型参数
Forecasting the outcome and estimating the epidemic model parameters from the fatality time series in COVID-19 outbreaks
论文作者
论文摘要
在没有其他工具的情况下,监视保护措施的影响,包括社会疏远和预测暴发的结果。实时数据很嘈杂,并且经常受到报告的系统错误的阻碍。详细的流行模型可能包含大量的经验参数,这些参数无法以足够的精度确定。在本文中,我们表明,累积死亡人数可以视为主变量,并且流行病的参数(例如基本的繁殖数量,易感人群的大小)和感染率可以确定。在SIR模型中,我们得出了一个显式的单个变量微分方程,以累积死亡人数的演变。我们表明,中国的西班牙,意大利和荷贝省的流行病紧密遵循这一主管。我们讨论了与逻辑增长模型的关系,我们表明当基本复制号小于$ 2.3 $时,这是一个很好的近似值。这种情况对湖北爆发有效,但对于西班牙,意大利和纽约的疫情无效。区别在于中国较短的传染时期,这可能是由于受感染的分离政策。对于具有更多内部变量(例如SEIR模型)的更复杂的模型,由于时间尺度的分离,从SIR模型得出的方程式近似有效。
In the absence of other tools, monitoring the effects of protective measures, including social distancing and forecasting the outcome of outbreaks is of immense interest. Real-time data is noisy and very often hampered by systematic errors in reporting. Detailed epidemic models may contain a large number of empirical parameters, which cannot be determined with sufficient accuracy. In this paper, we show that the cumulative number of deaths can be regarded as a master variable, and the parameters of the epidemic such as the basic reproduction number, the size of the susceptible population, and the infection rate can be determined. In the SIR model, we derive an explicit single variable differential equation for the evolution of the cumulative number of fatalities. We show that the epidemic in Spain, Italy, and Hubei Province, China follows this master equation closely. We discuss the relationship with the logistic growth model, and we show that it is a good approximation when the basic reproduction number is less than $2.3$. This condition is valid for the outbreak in Hubei, but not for the outbreaks in Spain, Italy, and New York. The difference is in the shorter infectious period in China, probably due to the separation policy of the infected. For more complex models, with more internal variables, such as the SEIR model, the equations derived from the SIR model remain valid approximately, due to the separation of timescales.