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On the use of growth models to understand epidemic outbreaks with application to COVID-19 data

机译:关于使用增长模型来了解申请Covid-19数据的疫情爆发

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摘要

The initial phase dynamics of an epidemic without containment measures is commonly well modelled using exponential growth models. However, in the presence of containment measures, the exponential model becomes less appropriate. Under the implementation of an isolation measure for detected infectives, we propose to model epidemic dynamics by fitting a flexible growth model curve to reported positive cases, and to infer the overall epidemic dynamics by introducing information on the detection/testing effort and recovery and death rates. The resulting modelling approach is close to the Susceptible-Infectious-Quarantined-Recovered model framework. We focused on predicting the peaks (time and size) in positive cases, active cases and new infections. We applied the approach to data from the COVID-19 outbreak in Italy. Fits on limited data before the observed peaks illustrate the ability of the flexible growth model to approach the estimates from the whole data.
机译:无限制措施没有遏制措施的初始相位动态是使用指数增长模型的常识。 然而,在存在遏制措施的情况下,指数模型变得不太合适。 在检测到的感染性的分离措施的实施下,我们通过拟合灵活的生长模型曲线来提出流行性动态来报告积极的情况,并通过引入关于检测/测试努力和恢复和死亡率的信息来推断整体流行动力 。 由此产生的建模方法接近敏感传染性隔离恢复的模型框架。 我们专注于预测阳性病例,活性病例和新感染中的峰(时间和大小)。 我们将这些方法应用于意大利Covid-19爆发的数据。 在观察到的峰值下说明灵活生长模型从整个数据接近估计的能力之前,在有限的数据上适合。

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