论文标题
当前Covid-19大流行动力学的通用通用描述
A universal generic description of the dynamics of the current COVID-19 pandemic
论文作者
论文摘要
持续的共同19-19大流行正在挑战社会的每个地区。从科学的角度来看,第一个主要任务是预测大流行的动态,使政府能够分配适当的资源和措施来对抗它,并通过比较事后的预测来衡量这些措施的成功。绝大多数大流行模型基于具有大量拟合参数的广泛模型,从而为世界上每个热点都进行了个人描述。这可以使预测和比较繁琐的,即使不是不可能的。我们在这里提出了一种不同的方法,通过随着时间的流逝而远离描述,而是选择封闭区域中受感染者的总数作为自变量。分析一些热点数据,我们得出了动力学的经验公式,仅取决于三个变量。感染的最终数量严格连接到我们称为缓解因子的一个拟合参数,这反过来主要仅取决于封闭的种群。尽管具有简单性,但此描述适用于我们分析的大约50个国家中的每个国家,允许分开大流行的不同浪潮,为政府措施的整体实用性提供了一个优点,并表明了大流行何时结束。我们的模型对未被发现的案件非常有力,并允许所有国家,特别是资源较少的国家,可以合理地预测其国家大流行的结果。
The ongoing COVID-19 pandemic is challenging every part of society. From a scientific point of view the first major task is to predict the dynamics of the pandemic, allowing governments to allocate proper resources and measures to fight it, as well as gauging the success of these measures by comparison with the predictions in hindsight. The vast majority of pandemic models are based on extensive models with large numbers of fit parameters, leading to individual descriptions for every hot spot on the world. This makes predictions and comparisons cumbersome, if not impossible. We here propose a different approach, by moving away from a description over time, and instead choosing the total number of infected people in an enclosed area as the independent variable. Analyzing a few hot spots data, we derive an empirical formula for the dynamics, dependent only on three variables. The final number of infections is strictly connected to one fit parameter we call mitigation factor, which in turn is mostly dependent only on the enclosed population. Despite its simpleness, this description applies to every of the around 50 countries we have analyzed, allows to separate different waves of the pandemic, provides a figure of merit for the overall usefulness of government measures, and shows when a pandemic is ending. Our model is robust against undetected cases, and allows all nations, in particular those with fewer resources, to reasonably predict the outcome of the pandemic in their country.