Covid-19流行动力学的一般模型:在意大利和德国数据中的应用。

IF 1.5 4区 生物学 Q4 Agricultural and Biological Sciences Theoretical Biology Forum Pub Date : 2020-01-01 DOI:10.19272/202011402003
Andrea Amadei, Massimiliano Aschi
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引用次数: 1

摘要

在本文中,我们报告了一个动力学模型的描述、实施和应用,该模型旨在描述2020年2月至6月期间意大利和德国的Covid-19疫情传播,该模型与疫情传播统计制度的开始和旨在遏制疫情的限制性政府措施的应用相吻合。该模型虽然简单,但使用的参数数量有限,能够捕捉到流行病传播的基本物理特征,突出了限制性措施的重要作用,特别是在遏制最严重后果方面应用这些措施的及时性。这项工作还证实,如果在统计制度演变过程中考虑到流行病是如何传播的,那么使用通常用于化学过程的语言和方法,如质量作用定律和化学动力学,可以适当地描述-从而可能更好地理解。
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A general model for Covid-19 epidemic kinetics: application to italian and german data.

In this paper we report the description, implementation and application of a kinetic model designed for describing the Covid-19 epidemic spread in Italy and Germany in the period between February and June 2020 coinciding with the beginning of the statistical regime of the epidemic spread and the application of restrictive government measures aimed at its containment. The model, which makes use of a limited number of parameters, in spite of its simplicity is able of capturing the essential physical features of the epidemic spread highlighting the essential role of the restrictive measures and in particular the timeliness of their application for the containment of the most dramatic consequences. This work also confirms how the epidemic spread, if considered during its statistical-regime evolution, can be properly described - and hence probably better understood - using languages and methodologies typically adopted for chemical processes, such as the Mass Action Law and Chemical Kinetics.

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Theoretical Biology Forum
Theoretical Biology Forum 生物-生物学
CiteScore
0.70
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0.00%
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0
审稿时长
>12 weeks
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