H. Susanto, V. Tjahjono, A. Hasan, M. F. Kasim, N. Nuraini, E. Putri, R. Kusdiantara, H. Kurniawan
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引用次数: 11
摘要
这是一篇关于估计流行病爆发期间一名感染者可能感染的人数的教学论文,称为繁殖数。了解数字对于制定政策对策至关重要。这种数字通常有两种类型,即基本和有效(或瞬时)。基本繁殖数是指在所有个体都易感的人群中,一个病例直接产生的平均预期病例数,而有效繁殖数是在人群当前状态下产生的病例数。在本文中,我们利用确定性易感感染去除(SIR)模型,通过三种不同的数值近似来估计它们。我们将这些方法应用于意大利的新冠肺炎大流行,以深入了解该疾病在该国的传播。我们看到,全国封锁在减缓疾病指数增长方面的效果出现在实施日期后约两周。我们还讨论了该领域研究人员对简单(和天真)方法的可用改进。本文作者是SimcovID(Simulasi dan Pemodelan新冠肺炎Indonesia)合作的成员。
How Many Can You Infect? Simple (and Naive) Methods of Estimating the Reproduction Number
This is a pedagogical paper on estimating the number of people that can be infected by one infectious person during an epidemic outbreak, known as the reproduction number. Knowing the number is crucial for developing policy responses. There are generally two types of such a number, i.e., basic and effective (or instantaneous). While basic reproduction number is the average expected number of cases directly generated by one case in a population where all individuals are susceptible, effective reproduction number is the number of cases generated in the current state of a population. In this paper, we exploit the deterministic susceptibleinfected-removed (SIR) model to estimate them through three different numerical approximations. We apply the methods to the pandemic COVID-19 in Italy to provide insights into the spread of the disease in the country. We see that the effect of the national lockdown in slowing down the disease exponential growth appearedabout two weeks after the implementation date. We also discuss available improvements to the simple (and naive) methods that have been made by researchers in the field. Authors of this paper are members of the SimcovID (Simulasi dan Pemodelan COVID-19 Indonesia) collaboration.