Boldog Péter, Tekeli Tamás, Vizi Zsolt, Dénes Attila, Bartha Ferenc A, Röst Gergely
Bolyai Institute, University of Szeged, H-6720 Szeged, Hungary.
J Clin Med. 2020 Feb 19;9(2):571. doi: 10.3390/jcm9020571.
We developed a computational tool to assess the risks of novel coronavirus outbreaks outside of China. We estimate the dependence of the risk of a major outbreak in a country from imported cases on key parameters such as: (i) the evolution of the cumulative number of cases in mainland China outside the closed areas; (ii) the connectivity of the destination country with China, including baseline travel frequencies, the effect of travel restrictions, and the efficacy of entry screening at destination; and (iii) the efficacy of control measures in the destination country (expressed by the local reproduction number R loc ). We found that in countries with low connectivity to China but with relatively high R loc , the most beneficial control measure to reduce the risk of outbreaks is a further reduction in their importation number either by entry screening or travel restrictions. Countries with high connectivity but low R loc benefit the most from policies that further reduce R loc . Countries in the middle should consider a combination of such policies. Risk assessments were illustrated for selected groups of countries from America, Asia, and Europe. We investigated how their risks depend on those parameters, and how the risk is increasing in time as the number of cases in China is growing.
我们开发了一种计算工具,用于评估中国境外新型冠状病毒爆发的风险。我们估计一个国家因输入病例而发生重大疫情的风险对以下关键参数的依赖性:(i) 封闭区域以外中国大陆累计病例数的演变;(ii) 目的地国家与中国的连通性,包括基线旅行频率、旅行限制的影响以及目的地入境筛查的效果;以及(iii) 目的地国家控制措施的效果(由当地繁殖数R_loc表示)。我们发现,在与中国连通性较低但R_loc相对较高的国家,降低疫情风险最有效的控制措施是通过入境筛查或旅行限制进一步减少输入病例数。连通性高但R_loc低的国家从进一步降低R_loc的政策中受益最大。处于中间水平的国家应考虑综合采用这些政策。对来自美洲、亚洲和欧洲的部分国家群体进行了风险评估。我们研究了它们的风险如何依赖于这些参数,以及随着中国病例数的增加,风险如何随时间增加。